The present invention relates generally to methods for designing a route for a transport element, such as a tube, and, more particularly, to methods for designing a route for a transport element based upon at least one adaptively-sampled distance field (adaptive distance field or ADF) constraint object that limits the possible routes for the transport element.
Transport elements, such as tubes, cables, hoses, wires, wire bundles, and the like, are widely used in a great variety of applications. For example, a jet airliner contains approximately 3,000 custom-designed metal tubes in a number of different systems including the hydraulic system, pneumatic system, fuel system, drainage system, fire suppression system, and the like. In many of these applications, the tubes must be carefully designed in order to be manufacturable and installable. For example, the design of each tube carried by a jet airliner typically takes about 40 hours on average.
Most conventional systems, such as U.S. Pat. No. 5,227,983 to Cox, relate to the design of piping (in particular networks of piping). Such systems are concerned with automating, or helping to automate, the design of a typically approximate plan for pipes, such as in a building, ship, or factory. Piping, however, is different from the more general class of transport elements (exemplified by bent-metal tubing) that the present invention deals with, for two primary reasons. First, piping characteristically involves assembling pre-manufactured shapes (exemplified by straight sections, 90-degree elbows, 45-degree elbows, etc.) and is laid out in a generally rectilinear fashion, i.e., subsequent sections of pipes usually differ in orientation by 90 degrees or 45 degrees. In contrast, the generic class of transport elements including tubing, hoses, wires, etc. are available in, typically, straight, but sometimes also coiled, stock into which are introduced straight sections of arbitrary (or nearly arbitrary, subject to certain constraints detailed below) lengths and angles of arbitrary (or nearly arbitrary, subject to certain constraints detailed below) degrees.
Another important point of contrast is that piping layout does not generally have to be exact, but can often be approximated within an error on the order of fractions of an inch, inches, or sometimes even feet. There are two senses in which a mere approximation is tolerated: (a) failure to be precise and (b) failure to be optimal. With regard to the first sense in which a mere approximation is tolerated, failure to be precise can also be called coarseness of specification. This means that the output of the design system is not expected, or relied upon, to be correct to within a certain crude tolerance. This does not matter greatly in piping designs because a given piping design is often assembled only once, or at most a few times. This is because buildings, factories, and ships of given design are seldom manufactured in large numbers. Therefore, small errors in the design can be affordably worked-out by the persons of skill installing the pipes, such as by cutting and shaping them to the necessary dimensions in situ. In contrast, products such as airplanes and automobiles are manufactured in the thousands or even millions. Therefore, for reasons of efficiency, it is essential to have a single, exact design that can be manufactured in great numbers off-line, then moved to the point of assembly and integrated into the final product with no further modification.
With regard to the second sense in which a mere approximation is tolerated, failure to be optimal has two main aspects. First, many design domains, especially aircraft, are highly sensitive to weight and other performance measures. For example, it would typically be unacceptable for a large tube on an airliner be one inch longer than necessary, subject to the design constraints. This is because an inch of tubing, especially when filled with fluid, can weigh on the order of ounces. Thus, the thousands of tubes in an airplane, if designed with a sub-optimal system, might weight many tens, or even hundreds, of pounds more than they would had they been designed with an optimal system. Because of the harsh economics of commercial air transport, every ounce is a vital target for elimination, even on a half-million-pound vehicle. Second, each tube in an airplane is typically labored over by a human designer or team of designers for many hours. The designer manipulates the shape of the tube with a computer-aided design (CAD) system that provides an extremely detailed and realistic view of the tubes. Experienced designers possess a highly refined visual intuition about what shape they want to obtain. Simply put, they can tell when things are “off,” and they demand total and fine control in rectifying such situations. Accordingly, a conventional system suited to the design of pipes in a building is generally far too crude for designing tubes in such objects as an airplane, a jet engine, or a rocket motor. In sum, conventional systems attempt to design an approximate route or gross route, rather than refining a gross route into an precise, optimal route in the face of various constraints. The gross route is the final output of such systems. The gross route (i.e., approximate route) is in fact only the input to the present invention; the output is something optimal and perfectly manufacturable.
A tube is one type of transport element that poses a number of challenges in its design due to limitations upon the way in which the tube may be bent as described below. By way of background, tubes are generally composed of straight sections joined by circular arcs. As a result of constraints placed upon tube design by the manufacturing process, the straight sections and circular arcs each have a minimum length such that it is impossible to have an arbitrarily small bend, and one bend cannot begin an arbitrarily small distance from another bend. As shown in
While nodes form a compact and intuitive representation of a tube, the use of nodes in the design of tubes may sometimes create problems. For example, a tube design may require a predetermined standoff S at the B-end, such as for tool access, as shown in
When designing the route of a transport element, such as a tube, a designer initially develops a gross route, which is an approximate description of a route, or, equivalently, a description of a set of possible routes. The gross route is typically based upon the start and end points as well as various obstacles, way-points, etc. that are located therebetween. In designing the gross route, a designer generally designs it to comply with a number of extrinsic or situation-dependent constraints that include, for example, the minimum separation from structures or other tubes, requirements that the tube be parallel to certain structures, requirements that the tube penetrate certain structures within a particular zone, etc. While termed a “route,” the gross route that is designed really defines a whole family of topologically equivalent routes that satisfy the various constraints. Based upon the gross route, a designer can select a specific route for the transport element. Unfortunately, designers cannot generally select the specific route to be optimal for a transport element and currently have no automated techniques for doing so.
Given a gross route, the specific route of a transport element is generally designed by manual drafting in a CAD system such as CATIA. This manual drafting is typically a slow and difficult process. In the case of a metal tube, it may appear that a tube centerline extending from the A-end to the B-end may be easily constructed by merely specifying some intermediate way-points at which the tube will be attached to structures at particular orientations and then having the CAD system fill in straight lines and tangential circular arcs between the A-end, the B-end and the intermediate way-points. The difficulty lies, however, in ensuring—in the face of the difficulties attached to node-based design just described—that the resulting route is manufacturable, satisfies engineering constraints and is optimal.
In the case of metal tubes, for example, the manufacturing process dictates a variety of intrinsic constraints, such as minimum bend angle, maximum bend angle, minimum straight section length between bends, constraint bend radius, etc. These constraints typically arise from the nature of tube bending machines. Generally, a tube bending machine starts with a straight piece of tubing stock and repeatedly performs various operations including shooting out a certain length of tube stock to generate a straight section, bending or wrapping the tube around a circular die to generate a circular arc, and rotating the tube about its longitudinal axis to establish a new plane for the next bend. Typically, it is expensive to change the circular die. As such, each bend in a tube preferably has the same radius. In addition, the machine must be able to grip the stock during the formation of a bend such that the bending head has a certain amount of clearance, i.e., a new bend cannot be started arbitrarily close to the previous bend. The requirement that the tube stock be gripped during bending operations therefore results in the requirement of a minimum straight section length. These constraints are termed “intrinsic” because they are defined without regard to how the tube is situated once it is installed in a machine, plant, or vehicle.
In designing the route for a tube on a CAD system, the designer essentially lays out one straight segment after another or, equivalently, defines one node after another, with the circular arcs connecting these straight sections being interpolated automatically. A variety of CAD systems are available including CATIA, Solid Edge, and Pro/ENGINEER. Typically, these systems offer the designer assistance in placing the next segment by providing an easily manipulated graphical representation of a local Cartesian coordinate system, sometimes called a “compass.” In CATIA and similar systems, the designer can place the compass anywhere in the scene, usually by using existing geometry as a base of reference. For example, if the designer wants the next section of a tube to be parallel to a particular facet of a solid, the designer can place the compass on the facet, and indicate which of its three planes is to be “paralleled.” The next tubing section is automatically constrained to lie parallel to that plane. Similar functionality is common in many graphical computer applications. The compass is essentially a way of using an inherently 2-D input device (a mouse) as an effective 3-D input device.
The compass can also be used to establish planes that cannot be penetrated during the drawing process. For example, when routing a tube near a piece of machinery from which there must be a certain amount clearance, the designer can use the compass to establish a plane defining an impenetrable barrier at the appropriate distance from the machinery. This barrier behaves like a glass wall through which the cursor cannot move.
Nevertheless, the compass, even with all the operations it provides, only supports what is still an essentially manual, sequential drafting process. As shown in
Transport element designs are not always final. Very often it is desirable to modify an existing design. This is another area in which conventional tubing design systems are lacking. Conventional tubing design systems only support a local notion of modification, and one that never includes the automatic insertion, deletion, or re-ordering with respect to background geometry of nodes. For example, consider the tube depicted in
It is noted that the portion of the transport element that drives or originates the modification need not be a single node. For example, the designer may wish to move an entire straight segment, such as the segment between N3 and N4. If this segment were moved upward such as in response to the moving of a clamp through which this segment of the tube must pass, the route of the tube would be varied as shown in
As mentioned above, conventional CAD systems permit tubes to be modified automatically only in a local sense, and only if the modification does not involve the insertion, deletion, or re-ordering with respect to external constraints of nodes. The mathematical object consisting in the number of nodes and where they fall with respect to external constraints (such as hardpoints, obstacles, etc.) is called the node distribution. Put in mathematical terms, conventional CAD systems do not permit one route to be continuously deformed into another unless they have the same node distribution. Put in common CAD terms, tubes with different node distributions cannot be “rubber banded” into one another. In this regard,
The requirement that a human always design the node distribution for a route is a primary deficit of conventional tubing design systems.
By way of another example, a tube may be required to be attached to a structural element 14 as shown in
In contrast to the downward movement of the structural element, upward movement of the structural element can cause the route of the tube to approach an illegal configuration in which the minimum bend angle would be violated at bends 22 as shown in
Another important area of transport element CAD is multiple transport elements. Conventional CAD systems do not effectively address the potential for designing the route of a transport element based at least in part upon one or more existing or contemporaneously designed transport elements.
Further, while pre-defined path constraints, such as parameterized stay-out zones such as boxes, cylinders, and spheres, may be used to represent spatial regions or objects which a transport element should circumvent, penetrate, or pass through for routing, pre-defined path constraints may not accurately represent an object and/or may be computationally intensive to implement when attempting to approximate fine details and complicated shapes, particularly if parameterized shapes would be used for regularly-sampled distance fields. Accordingly, improved methods for designing the route of a transport element using an improved path constraint, and, in particular, an improved path constraint that accurately represents the shape of an object and is computationally feasible when designing a route for a transport element, are desired.
An improved method for designing the route of a transport element, such as a tube, is provided. The method preferably designs the route automatically and, by utilizing constraints, including at least one ADF constraint object, during the design of the route, as opposed to during a post-design check, ensures that the resulting route complies with the various constraints. In addition, an embodiment of a method of the present invention establishes a cost function to evaluate a plurality of feasible routes of the transport element that each comply with the constraints such that a preferred or optimal route may be designed.
While ADFs are typically used for applications of computer graphics, ADFs may be used, as implemented in embodiments of the present invention, for relational applications which take advantage of reconstructing distance values from the ADF, such as routing subsequent transport elements in relation to ADFs for existing transport elements. ADFs may be used instead of and/or in addition to pre-defined path constraints, such as parameterized shapes. Similarly, although regularly-sampled distance fields may be used to represent shapes of objects in a manner similar to using multiple pre-defined path constraints, embodiments of the present invention use ADFs, in part to take advantage of the simplified distance computations associated with ADFs while ADFs accurately represent the shape of an object.
Underlying the present invention is a general technique for selecting a specific route to be optimal by assigning a cost function or cost functions to the various possibilities embodied in the gross route, and exactly minimizing that cost function(s) subject to pertinent constraints such as an ADF constraint object. Not only can the underlying technique design a node distribution automatically, but the underlying technique may do so in an optimal way, and in a way that is “driven by” the constraints. That is, a system employing the underlying technique automatically comes up with designs that have no constraint violations by construction, rather than merely helping the designer to draw designs and then merely bringing constraint violations to the designer's attention. This change, from merely checking constraints on an already completed or partially completed design, to using the constraints to drive the design so it meets the constraints before the design is even presented to the user, is a particularly noteworthy improvement for tubing design. Thus, while the underlying technique provides a method for automatically determining an optimal node distribution for a transport element and optimal route given that node distribution, the present invention improves on the underlying technique by using ADF constraint objects.
The term “constraint” refers to a rule that some function of the independent variables cannot exceed a certain threshold or must equal a given value. The terms “cost function” and “costs” refer to a function of the independent variables that is to be minimized by some algorithm. Constraint objects and cost functions are described more fully below, including the concept of multiple cost functions.
According to one embodiment, a method for designing the route of a transport element initially establishes at least one constraint that limits possible routes for the transport element. At least one constraint which is established is an inequality constraint, and is, more particularly, an ADF constraint object. The ADF constraint object may be based upon an object in the background structure, also referred to as a background structure object. An object may be selected to be represented by an ADF constraint object. An ADF constraint object may be, for example, a stay-out zone, stay-in zone, or pass-through zone path constraint. ADF constraint objects may be established by pre-processing adaptively-sampled data representing the object, such as where the pre-processing results in a hierarchy of cells representing distance data from the object.
According to another embodiment of the present invention, a method for designing the route of a second transport element in relation to the route for a first transport element initially establishes at least one constraint that limits possible routes for the second transport element, such that at least one constraint is based upon the route for the first transport element. At least one constraint which is established is an inequality constraint, and is, more particularly, an ADF constraint object. The design of the route for the second transport element may be performed after the route for the first transport element is designed or contemporaneously with the design of the route for the first transport element.
According to yet another embodiment of the present invention, establishing at least one constraint that limits possible routes for the transport element may involve establishing at least one constraint object or cost function and automatically defining the route so as to satisfy the constraints and/or minimize the cost function. Some constraints and costs may be discrete, meaning they apply to quantities that are integers. For example, an important factor in designing the route for a transport element may be the number of bends occurring between any two targets. (The concept of a target is described in more detail below, and may generally be considered to be a “way point” for a route.) Accordingly, an exemplary embodiment of the present invention for designing a route for a transport element may include a discrete cost function related to the number of bends, and it may be desirable to minimize this cost because, under certain circumstances, the cost might serve as a convenient indicator of flow resistance.
Additional embodiments of the present invention further improve the method by permitting relationships to be established between two or more of the constraints or cost functions. For example, the angle at which a transport element penetrates a given piece of background structure at a given location might be constrained to have a certain relationship (e.g., equality) to the angle at which the same transport elements penetrates a different piece of structure at a different location. Regarding this conceptual example, it is critical to notice that this can be done without specifying the penetration angle per se at any location, and it is only the relationship between dependent variables which matters. Note that multiple constraint objects that are “linked” in such a way by a constraint relationship are not fundamentally different from just a larger, more complicated kind of constraint. Nevertheless, in practice it is convenient and intuitive to give constraint relationships a separate status.
Further embodiments of the present invention provide computer program products and apparatus which implement the methods described above. Yet another embodiment of the present invention provides a method for designing a route for a tube through an air vehicle, similar to the method described above for routing a transport element.
While embodiments of the present invention may be advantageous for designing the route of tubes these and other embodiments of the present invention may also be utilized to design the route of other transport elements including cables, hoses, wires, wire bundles and the like.
Having thus described the invention in general terms, reference will now be made to the accompanying drawings, which are not necessarily drawn to scale, and wherein:
The present invention now will be described more fully hereinafter with reference to the accompanying drawings, in which preferred embodiments of the invention are shown. This invention may, however, be embodied in many different forms and should not be construed as limited to the embodiments set forth herein; rather, these embodiments are provided so that this disclosure will be thorough and complete, and will fully convey the scope of the invention to those skilled in the art. Like numbers refer to like elements throughout.
The term constraint object is used to refer to the software entity that embodies a mathematical constraint or set of mathematical constraints grouped together in some way. This term is arbitrary; in fact, any number of similar terms, such as “constraint,” “constraint set,” “constraint group,” “constraint bundle,” “constraint macro,” or “constraint unit,” could be used. “Constraint object” is chosen for use herein because an embodiment may be implemented in terms of an object-oriented programming language, in such a manner that our “constraint objects” map directly to software objects. Thus, the term “constraint object” evokes a convenient association. Described further, the term “constraint” refers to a rule that some function of the independent variables (e.g., the node locations) cannot exceed a certain threshold or must equal a given value. Note that an equality case may be expressed as two inequalities. For example, the constraint x=2 can be expressed as x≧2 and x≦2. Therefore, it is convenient and standard usage to speak only of inequality constraints, since they subsume equality constraints.
It is important to observe that conventional parametric CAD systems are based on equality constraints alone. Equality relationships are set up between various quantities (e.g., length L is equal to one-third length L′, etc., location of hole H is equal to the midpoint of a given segment S, etc.). When one parameter changes, there is essentially no freedom in choosing the other parameters—their values are uniquely determined by the parametric relationships involved. This formulation is usually called constraint programming, and the algorithms that implement it are usually called constraint solvers. Such technology is useful when it is known that there will be only one solution, or, in the event that there may be multiple solutions, any solution will do. Embodiments of the present invention, in contrast, are formulated in terms of constrained optimization, and the algorithms that implement embodiments of the present invention are called constrained optimizers. This is fundamentally different from conventional parametric CAD systems, in that there can be, and usually is, a preponderance of inequality constraints. For example, point P on a tube is less than or equal to one inch away from a given surface, or segment S of a tube passes through a hole of diameter three inches centered at a point x, which can be translated to the statement that segment S of a tube lies a distance less than or equal to 1.5 inches away from the center x of the hole. In such a formulation—which is critical to providing exactly the kind of flexibility and speed provided by embodiments of the present invention—it is very explicit that the formation will in general exact a large plurality of possible solutions. It is necessary to pick one of these possible solutions, and picking the best one is what a constrained optimizer does. It is in part this preponderance of inequality constraints, including at least one ADF constraint object, that distinguishes embodiments of the present invention from conventional parametric CAD system and particular domain applications of parametric CAD systems.
An embodiment of a method of the present invention is adapted to design a route for a transport element. By way of example, a method of the underlying technologies for an embodiment of the present invention will be hereinafter described in conjunction with the routing of a tube, such as the routing of a tube within an aircraft. However, the method and other embodiments of the underlying technologies and of the present invention are also applicable to routing a tube in applications other than an aircraft, as well as to the routing of transport elements other than tubes, such as cables, hoses, wires, wire bundles and the like. Additionally, the application of the method to the routing of a tube will be described hereinafter to generate a route generally consisting of one or more straight segments joined by circular arcs. Such a curve may be called an arc spline, with the restriction that alternate arcs have a finite or infinite radius (the degenerate case of infinite radius producing a straight line). This class of curve is advantageous as an example since it demonstrates the capability of the underlying technologies for an embodiment of the present invention to effectively choose the representation scheme, i.e., the number of nodes and their ordering with respect to the targets (described in more detail below, targets are essentially those constraint objects that represent “way-points” for the route). This representation scheme is also called the node distribution. However, the method of the underlying technologies for an embodiment of the present invention is capable of designing the route of a transport element so as to be defined by other classes of curves, if so desired. It should also be understood that the term “transport element” is intended to refer generically to both a single continuous and integral transport element and a series of transport elements interconnected one to another. Various aspects of the underlying technologies are described in Constraint-Based Design of Optimal Transport Elements by Michael Drumheller, Transactions of the ASME, J. Computing and Info. Science in Engineering (JCISE), Vol. 2, pp. 302-311 (December 2002), the contents of which are hereby incorporated by reference in its entirety.
According to a method of the underlying technologies for the present invention, a gross route for the transport element is initially established. Typically, the gross route is defined by the designer, at least in part, and may be based upon various considerations as described hereinafter. The gross route does not necessarily define an exact, specific path along which the transport element will extend. Instead, the gross route consists of constraint objects that the eventual route of the transport element preferably satisfies. As such, the constraint objects limit the possible routes for the transport element. However, the constraint objects generally do not determine a unique route for the transport element and, in fact, may not fix precisely or uniquely the position of any portion of the transport element.
The gross route may be defined by a variety of constraint objects. For example, at least some of the constraint objects may be related directly to, i.e., defined in terms of or as approximations of, the background structure. As graphically depicted in
Another constraint object is an adjustable hardpoint. The adjustable hardpoint defines a region of space through which the transport element must pass and within which a hardpoint, typically defined by a clamp, must lie. In this regard,
As another example, a through loop, such as a rectangular through loop, may be defined as depicted graphically in
Another constraint object is a stay-away point which defines a sphere having a center and a radius through which the transport element may not pass. A less symmetric zone, such as a stay-out zone and more particularly a parabolic sheet stay-away zone, may also be defined as shown in
Another example of a constraint object is a stay-in plane constraint as shown in
At least some of the above-described constraint objects also have an associated offset or a standoff. An offset is the minimum length of a straight section of the transport element that must appear on one side of some constraint objects, such as a hardpoint that may represent the mounting of a transport element to a clamp. In this regard, a straight section of transport element must extend outward from each side of the hardpoint. Analogously, for the A-end or the B-end, a standoff is defined as the straight section of the transport element that must extend outward from the A-end or the B-end prior to a bend in the transport element. As will be apparent, the offsets and standoffs permit, for example, tool access and fitting clearance.
As the foregoing examples demonstrate, at least some constraint objects may be implemented in terms of more elementary constraints, the character of which may be predominantly that of inequality constraints. An inequality constraint limits the possible routes without fixing the position of any portion of the transport element. Inequality constraints do not generally specify that the transport element must, for example, coincide with a specific point in space, such as the ctr point of an A-end, B-end, or hardpoint. In contrast, an inequality constraint merely defines bounds within which, or outside of which, the value of some function of the transport element's dependent variables must lie. By comparison, conventional CAD systems only use equality constraints to find solutions to equations or systems of equations, rather than using inequality constraints to find optimal solutions to inequalities or systems of inequalities. Examples of inequality-constraint-dominated constraint objects include the rectangular through loop or similar pass-through zone, a stay-out zone, a stay in zone, and any other type of constraint object that does not precisely fix any aspect (e.g., location, orientation, etc.) of any portion of the transport element, but instead defines a region or range within which, or outside of which, the transport element should lie. As exemplified by the through loop constraint, inequality constraints may define a limit such that the eventual route of the transport element will be constructed so as to be within the limit. As exemplified by the stay-out zone constraint, inequality constraints may define a limit such that the eventual route of the transport element will be constructed so as to be outside of the limit.
By way of an example,
The constraint objects, such as those depicted in
Constraint objects typically give rise to, i.e., are implemented in terms of, a number of other low-level or primitive constraints. In this regard, constraint objects may be viewed as “bundles” or “macros” comprising many low-level constraints packaged together in potentially complex ways. To illustrate this “macro” idea, reference is made to
The concept of multiple cost functions is important in the present invention and is explained further in relation to a two-dimensional problem of minimizing the length of a transport element TEAB composed of three straight segments between two fixed points A and B in the plane, subject to a minimum-bend-angle constraint. That is, a cost function is used to minimize the length of transport element TEAB. This situation is illustrated with three different cases in
As describe above, only one cost function (length) has been imposed. This cost function may be written as
In traditional mathematical notation, the complete problem could be stated as
min Clen(x1, y1, x2, y2) s.t. θ1≧θ0 and θ2≧θ0x1, y1, x2, y2 Eq. 2
In plain English, the above problem describes a process of effectively searching over values of x1, y1, x2, y2 such that θ1 and θ2 do not fall below the critical value θ0, and choosing the values of x1, y1, x2, y2 that cause Clen to be smallest.
To see how multiple cost functions can arise, suppose that in addition to a constraint on the bend angles θ1 and θ2, a cost is also associated with the bend angles. Whenever such a cost is associated with a constraint in this manner, the cost gives an indication of how far a given quantity is from its preferred value. As an example, suppose that there were some value θpref (greater than θ0) for which the angles would be preferred to have, if possible. (For concreteness, assume that θpref equals the value of θ1 and θ2 shown in Case 1 of
For example, a cost function corresponding to the bend angle θ1 at N1 might be
Cθ1(x1, y1, x2, y2)=(θ1−θ0)2 if θ1<θ0, else zero Eq. 3
and an analogous cost function
Cθ2(x1, y1, x2, y2)=(θ2−θ0)2 if θ2<θ0, otherwise zero Eq. 4
would correspond to the bend angle θ2 at N2. Essentially these functions say “as long as a bend angle is above the preferred value, the bend angle does not incur any cost, but as the bend angle passes the preferred value and encroaches toward the NTE value, a positive, increasing cost—the squared term—is incurred.” The cost of each angle is a function of both nodes N1 and N2—this hints at how, in general, a given constraint is sensitive to the whole transport element, not just the parts that might seem relevant by virtue of their localness.
Now there are three cost functions, Clen, Cθ1, and Cθ2. By assumption, a user may wish to minimize all three cost functions simultaneously. The question that arises is “What does it mean, exactly, to minimize all three cost functions simultaneously, i.e., how much should one cost function be minimized in relation to the other cost functions?” There is a general trade-off phenomenon to be faced: in order, for example, to make one bend angle “good” it might be necessary to make another bend angle “bad,” or it might be necessary to make the transport element longer. The various cost functions are in conflict, or competition, with one another.
There are several approaches to formulating and solving such a multi-objective (or multi-criterion) optimization problem. The most rigorous and complex methods involve consideration of the Pareto surface (also called the Pareto frontier or the trade-off surface). Such methods are discussed in many references, such as Normal Boundary Intersection: A New Method for Generating the Pareto Surface in Nonlinear Multicriteria Optimization Problems, by John Dennis and Indraneel Das, Society of Industrial and Applied Mathematics (SIAM), Journal of Optimization, Vol. 8, No. 3, pp. 631-657 (1998). These methods are not described herein, but are potentially applicable to embodiments of the present invention.
The simplest and most common approach to multi-objective optimization is to simply combine the functions together into a single weighted cost function, e.g.,
C=αlen Clen+αθ1Cθ1+αθ2Cθ2 Eq. 5
where, for brevity, the arguments (x1, y1, x2, y2) have been omitted. The values αi={αlen, αθ1, αθ2} are called the weights. Typically the convexity conditions
αi≧0 and Σαi=1 Eq. 6
are imposed on the weights for mathematical convenience or other technical reasons. The variable C may be called the overall cost function, and the functions such as Clen, Cθ1, and Cθ2 may be called member cost functions. The basic idea is that the behavior of the overall cost function C mimics more closely the heavier-weighted member cost functions. For example, if all but one of the weights were zero, then the overall cost function would be identically equal to the nonzero-weighted member function. Thus, a user can adjust the relative importance of the various members simply by adjusting the relative magnitudes of the weights αi of a member cost function. If the user decides that length should receive more emphasis than preferred bend angle violations, the user can increase the magnitude of αlen relative to αθ1 and aθ2
The end result is that the multiple cost functions are combined into a single cost function, which is easy for humans to understand (i.e., the single cost function representing multiple member cost functions can be “tuned” via the weights to reflect, to greater or lesser degree, the contributions of an arbitrary subset of the member cost functions).
An additional constraint object may be a planarity constraint. A planarity constraint refers to forcing at least a portion of the route for a transport element to be planar, without forcing a particular orientation of the plane. (One advantage of a planarity constraint is that the design of planar transport element route segments may be re-used on either side of a bilaterally symmetrical vehicle.) One manner of implementing a planarity constraint is to impose an equality constraint between the normalized vectors that form the axes of bends. For each bend in the portion of the route subject to the planarity constraint, this is the cross product of the direction vectors of the two straight segments that emanate from the bend. These normal vectors may be denoted as ni at bend i. A planarity constraint may then be embodied by an equality constraint between the components of normalized vectors ni, ni+1, ni+2, . . . ni+j for bends i through j in the portion of the route subject to the planarity constraint.
An additional path constraint may be an adaptively-sampled distance field (ADF), also referred to as an adaptive distance field. Typically, many constraints, such as stay-in and stay-out constraints, use parametric surfaces to define the boundary of their controlled volume. A constraint's penalty function relies on an analytical solution to compute the minimum distance to a boundary, such as between a tube and the constraint boundary. Bounding surfaces are typically limited, relying upon a limited set of predefined shapes, paraboloids, and filleted boxes because their penalty functions are computationally efficient.
An ADF is an octree-based object used to approximate arbitrary distance fields. An octree (or octtree) is a three-dimensional, hierarchical data structure, embedded in 3-dimensional real vector space R3. Octrees are most often used to partition a three dimensional space by recursively subdividing a cube of 3D space into eight octants. An octree is made of a hierarchy of axis-aligned cubes. The hierarchical data structure of an octree is tree-like, in that each internal node (also referred to as a cell, parent, and cube) of an octree is a cube that has up to eight children cubes (also referred to as octants, children cells, children nodes, leafs, leaf nodes, leaf cubes, and leaf cells). The children cubes are the product of subdividing their parent cube by intersecting the parent cube at the center of the parent cube with three axis-aligned orthogonal planes. An octree is expanded by subdividing one of the leaf nodes. Conversely, an octree is collapsed by deleting (removing the detail related to) a set of eight sibling cubes for a parent node. The depth of a node is the number of nodes on the path from the root to this node. The depth of the root is zero. An octree is uniformly subdivided if all of its leaves have the same depth. Cells at the same depth have the same size. Each cell of an octree has eight vertices located at its corners (q0, . . . , q7,). These eight vertices are shared with the adjacent children cells of a parent node. As used herein, the set of vertices of an octree is identified as Q.
An ADF is a special form of a distance field. A conventional distance field is a scalar function h:Rn→R denoting the minimum distance from a point p in n-dimensional real vector space Rn to an object, usually a solid object or a representation of a solid object. Typically h(p) is defined to be positive if p is outside of the object, negative if p is inside the object, and zero if p is on the boundary of the object. As used herein, distance fields are defined in R3. Distance fields are commonly used for detecting and preventing collisions or to compute offset surfaces or volumes. A drawback of conventional distance fields is that they are generally expensive to evaluate when they emanate from complex solids (or oriented surfaces) whose distance functions are not available in an analytical form. Alternatively, embodiments of the present invention use adaptive distance fields, rather than a distance field for a complex solid or surface.
An ADF is an octree-based distance field and is a representation of the shape of an object, such as the shape of a background structure. An ADF may be thought of as a sophisticated distance lookup table. ADFs represent the shape of an object using a hierarchy of cells related to the distance of the cell to the object, i.e., using an octree. As cells approach the object, they are smaller, providing higher resolution of the distance to the object, thereby representing the actual shape of the object. To approximate arbitrary distance fields with an octree data structure to form an ADF, the octree data structure is extended to store the value of the reference field for each vertex location of each cell. ADFs are described, for example, in Adaptively Sampled Distance Fields: A General Representation of shape for Computer Graphics by Frisken et al., TR2000-15, Mitsubishi Electric Research Laboratories (Apr. 25, 2000).
ADFs approximate the reference geometry for the shape of an object by sampling and interpolating the distance field for the object. The sampling process adaptively subdivides the octree to keep the local interpolation error bounded by a user-defined tolerance. As such, the evaluation process traverses the octree quickly down to the node containing the input point, and the evaluation process trilinearly interpolates the distance field at that location based on the sampled field values at the eight vertices of the node. The sampling stage occurs only once and need not be repeated as long as the reference geometry does not change. The ADF is recomputed each time its reference geometry changes. ADFs can approximate complex distance fields by sampling them offline and replacing them in computations that require fast distance evaluations. ADFs are also a convenient neutral format to represent distance fields sampled from various object representations, such as polygonal meshes, parametric surfaces, and constructive geometry. ADFs do not define curves or surfaces and are continuous, although not necessarily smooth. ADFs have no discontinuities and, thus, are C0. ADFs can accurately and efficiently approximate fields with zero or small local curvatures, but areas of high curvature may force the sampling algorithm to finely subdivide the octree to meet the approximation tolerance. And while representing areas of high curvature with an ADF may result in a very deep octree (i.e., and octree with numerous levels of detail to accurately represent the high curvature within the approximation tolerance), high memory usage, and degraded performance, it is found that for embodiments of the present invention for designing a route for a transport element, ADF sampling is not prohibitively fine.
The creation of an ADF is generally known with respect to computerized graphics and is described further below with respect to establishing an ADF for designing the route for a transport element. ADFs may be used, for example, as stay-out zones, stay-in zones, or to define a pass-through zone. For example, background structures, such as a pump, support element, or another tube may be protected by ADFs representing stay-out zones. Similarly, for example, a passageway or similar open duct for one or more transport elements may be protected by an ADF while defining a pass-through zone for the route for a transport element. A user may specify required (hard) offset distances that an ADF constraint object must enforce and/or optional (soft) cost function offset distances that an ADF constraint object preferably satisfies.
Stay-out zones, in particular, are an important constraint for designing routes for transport elements. Typically, stay-out zones are defined by superimposing a constraint directly over a physical part, such as a background structure or similar object, although stay-out zones may be defined anywhere, even without relation to an object. Stay-out zones may be implemented using pre-defined shapes, such as boxes, spheres, cylinders, etc., and these pre-defined shapes may be parameterized where the shapes are stretches, shrunk, rotated, etc., but pre-defined shapes always retain their essential character. However, often it is desirable to define a stay-out zone which approximates or represents the shape of an object with a shape different from a pre-defined stay-out zone shape. Accordingly, ADFs may advantageously be used for stay-out zones, although ADFs may also be used to represent shapes for purposes other than stay-out zones, as described further herein, such as a pass-though zone or a stay-in zone. One advantage of using ADFs to represent shapes of objects, such as for a stay-out zone, is the ability of ADFs to accurately represent the shapes of objects in comparison to a limited set of pre-defined shapes. A set of pre-defined shapes often can provide only an approximation of the shape for an object. ADFs, by comparison, may reflect almost the exact shape of an object while remaining computationally feasible for implementing to use for designing a route for a transport element. Another advantage of using ADFs to represent shapes of objects is the computational efficiency of ADFs in comparison to regularly-sampled distance fields and arbitrarily-shaped objects, such as CAD objects, which are computationally intensive to evaluate for distance calculations. Regularly-sampled distance fields and arbitrarily-shaped objects often are composed of a large number of elementary shapes, and these elementary shapes may not support a simplified distance value calculation.
When designing a route for a transport element, an ADF may be treated like any other path constraint. As described above, an ADF may be implemented as a stay-out zone, a stay-in zone, or a pass-through zone. If an ADF is used for a stay-out zone, the route for a transport element should maintain a positive distance value from the ADF. If the ADF is used as a stay-in zone, at least a portion of the route for the transport element should maintain a negative distance value to the ADF such that the route passes into the ADF stay-in zone.
If a cost function (also referred to as a penalty function) is employed by an embodiment of the present invention, during an optimization run of such an embodiment, the cost function of a constraint may use the ADF to compute the minimum distance values along the tube segments influencing the cost function. An ADF constraint may only evaluate straight segments of a transport element modeled as line segments and may ignore the circular sections that connect consecutive straight sections. And the radii of the transport element may be subtracted from the distance minima to obtain the true minimum distances. Thus, each straight section of a transport element may be modeled as a cylinder with hemispherical caps at each end, as shown in
To implement an ADF for use in designing a route for a transport element, an object is selected or otherwise identified for which an ADF is to be established. ADFs use adaptive sampling with high sampling rates in areas of fine detail requiring high resolution and low sampling rates in areas with less detail and smoother variations. ADFs typically are established by pre-computing, or pre-processing, adaptively-sampled data which indirectly represents the object by directly representing distance fields of the space around the object. The pre-compute of the object results in a hierarchy of cells for the ADF which represent distances from the object in varying detail. For example, areas of an object which are relatively smooth may be represented using large cells, while complex areas of an object may require the use of small cells to accurately represent higher shape resolution. Rather than representing an object by the occupation of cells, ADFs represent the distance of cells from an object. Thus, the distance of a point p from an object O may be calculated from the trilinear interpolation of the vertices of the cell in which point p is located. Similarly, the distance of a line segment S to an object O may be calculated by breaking the line segment S into sub-segments s, each of which occupies a single cell, and analytically minimizing the trilinear interpolant subject to the boundary constraints of each cell. Further, pre-processing of ADFs may also include establishing constant-distance offsets, which represent regions of like distance, from an object to permit rapid estimate calculations of the distance from an object. For example, constant-distance offsets can be thought of as layers surrounding an object where each increasing layer of separation from the object represents an increasing distance from the object. Accordingly, identifying a constant-distance offset layer will determine, to a certain degree of accuracy, the distance from an object.
To further describe the above describe aspects of embodiments of the present invention using ADFs to assist in tube routing, below are provided details related to an embodiment of a method for computing the minimum distance between a tube segment and an ADF. In particular, an algorithm to compute the minimum distance between an ADF and a line segment is described by reviewing mathematics of linear interpolation of the distance field within a cell, deriving an analytical solution to computing the minimum distance field value in a given cell along a line segment, and concluding with a minimum distance algorithm for a whole ADF.
Given a point p contained in the root of an ADF, h(p) is approximated by trilinear interpolation on the sample values associated with the deepest leaf cube c in the ADF containing p. Let Qc={q0, . . . , q7} be the vertices of c and the values of h at those vertices. Then the ADF hc is defined restricted to c as
where (w0, . . . , w7) are the barycentric coordinates of p with respect to Qc, The cube c is mapped to the unit cube [0,1]3 by defining a normalized coordinate system where its vertices have the following coordinates.
q0=(0,0,0)
q1=(1,0,0)
q2=(1,1,0)
q3=(0,1,0)
q4=(0,0,1)
q5=(1,0,1)
q6=(1,1,1)
q7=(0,1,1) Eq. 8
Let (x, y, z) be the normalized coordinates of p in c. The formulae for the weights are
And it may be noted that hc is defined only inside c.
The following description relates to determining the minimum distance between a cell c and a line segment s and derives a closed-form solution to the function minfieldc that returns the minimum value of the interpolated distance field in cell c along line segment s. The solution begins with the formula
Let s* be the restriction of s to c. Without loss of generality, the following normalized parameterization of s* in c is used
s*:[0,1]→[0,1]3
s*(t)=t.n+a Eq. 12
with
a=(ax, ay, az)
n=[nx, ny, nz]T Eq. 13
Combining equations 7 and 9 provides
hc(x, y, z)=Axyz+Bxy+Cyz+Dxz+Ex+Fy+Gz+1 Eq. 14
with
A=h1+h3+h4−(h0+h2+h5+h7)
B=h0+h2−(h1+h3)
C=h0+h4−(h3+h7)
D=h0+h5−(h1+h4)
E=h1−h0
F=h3−h0
G=h4−h0 Eq. 15
Let s* be the distance field of c evaluated along s* such that
hc*=hc·s*. Eq. 16
Equation 11 can be rewritten as
Substituting equation 12 in equation 14 obtains
where hcs(t) is in the form of a cubic polynomial. This admits at most two extrema at the parametric values t0 and t1 such that
hcs′(t0)=hcs′(t1)=0 Eq. 20
where hcs′ is the first derivative of hcs. If these values fall inside [0,1] then hcs(t0) and hcs(t1) are potential candidates to be the absolute minimum of hcs along with hcs(0) and hcs(1). Let S be the set of parameter values that are potential candidates. Then minfield is of the form
The clamping function is defined as
clamp(t)=min(max(0, t),1). Eq. 22
The clamping function “clamps” any input to its interval [min, max]. The clamping function is an identity for input values in [min, max]. If the input is greater than max, then the function returns to max. Likewise, if the input is smaller than min, the function returns to min. The method to solve for t0 and t1 depends on its actual degree: 3, 2, 1 or 0, each of the four cases being solved below.
1. Degree 3: A′≠0
The variable hcs′ is a quadratic polynomial of the form
hcs′(t)=3A′t2+2B′t+C′. Eq. 23
The roots of hcs′ are solved by computing the determinant
Δ=4B′2−12A′C′. Eq. 24
Depending on the sign of Δ, the following candidate sets are obtained
2. Degree 2: A′=0 and B′≠0
The variable hcs′ is of the form
hcs′(t)=2B′t+C′. Eq. 26
It admits one root
The candidate set is
S={0, clamp(t0), 1}. Eq. 28
3. Degree 1: A′=0, B′=0 and C′≠0
The variable hcs′ is of the form
hcs′(t)=C′. Eq. 29
It has no root. The candidate set is
S={0,1}. Eq. 30
4. Degree 0: A′=0, B′=0, and C′=0
The field is constant. The candidate set is
S={0}. Eq. 31
The function minfieldT(s) computes the minimum distance field value along a line segment s for an ADF T. It uses a top-down breadth-first traversal to locate the leaf nodes that intersect s. Below is an example pseudocode for this function, noting that ADF T is referenced in the pseudo code as lower-case variable t.
This function is defined only within the boundaries of c. A practical implementation must report an indefinite result if s ∩ c=ø. Let the min and max function be defined on cells such that
These functions return the minimum and maximum field values in the sub-octree rooted at a given cell c. The sampled field values only need to be compared because any interpolated value hc(p) is a convex combination of Hc and, thus, is bounded by min(Hc) and max(Hc).
The main loop of the algorithm consumes a queue of cells that initially contains the root of the ADF. The loop exits when the queue runs out. The variable curMin is the intermediate result of the minimization process and is initialized to max(root(T)), where the function root returns the root cell of an ADF.
For each cell c in the queue:
The use of min and max functions allows an embodiment of the present invention to prune the parts of the octree whose traversal will not improve the lower bound estimate. The algorithm uses the min and max function to decide whether a “promising” cell should be queued and to skip queued cells that are not promising anymore because curMin dropped below the lower bound since the cells were queued. The maximum distance algorithm is straightforward to derive from the algorithm presented above.
By utilizing constraint objects, the designer can effectively limit and simplify the amount of background structure which will have an influence upon the route of the transport element. Typically, the constraint objects do not have the same degree of geometric complexity as does the background object, if any, proxied by the constraint object. However, the constraint object may mimic the shape of an object, or capture a salient feature of the object such as its general orientation, may determine other aspects of the trajectory of the transport element, such as a direction of the transport element, in the region of the object, and is well suited mathematically, as mentioned earlier, as a data structure to be considered during the determination of the optimal route of the transport element. It should be noted, however, that while constraint objects can advantageously represent various objects of the background structure, the constraint objects do not necessarily represent any real object, but can be inserted by the designer as the designer sees fit, such as based upon the designer's intuition about the proper routing of the transport element, even if the constraint object has no obvious basis in the background structure.
In addition to merely defining a number of independent constraint objects, the method according to one aspect of the present invention permits relationships to be established between at least two of the constraint objects. For example, it may be desirable for a transport element to penetrate a series of holes at the same angle and the same spatial offset so that the same style of bracket or clamp may be used at each hole to engage the transport element. While the designer may not care, at least within certain limits, about the actual values of the angle or offset, the designer will require that the angle and spatial offset be the same at all penetration locations. In marked contrast to merely selecting an angle and then requiring that the transport element penetrate each hole at the selected angle, the method of this aspect of the present invention permits the actual angle to be varied so long as the transport element penetrates each hole at the same angle and offset. As such, the value of the angle may be varied according to this aspect of the method in order to optimize the resulting route of the transport element.
In addition to the constraint objects which may or may not, in a given instance, be based upon the background structure, but whose nature might lead them to be seen as intended to potentially model or directly reflect some aspect of the background structure, the method of the present invention may establish constraints that are not related in an obvious or straightforward geometric manner to the background structure. For example, a constraint may fix the slope of at least some segments of the transport element to a constant value or to be above or below a predetermined value. In addition, a constraint may fix at least some segments of the transport element to be planar in order to facilitate duplication of the routing of the transport element, since planar sections can generally be utilized on either the left or right side of a vehicle without modification.
Other constraints may be established that are intrinsic constraints that are not related at all to the background structure, but are, instead, dependent only upon the shape of the transport element itself. In this regard, intrinsic constraints generally include constraints such as the minimum bend angle, the maximum bend angle, the minimum straight section length between bends, a constant bend radius and the like. As such, the intrinsic constraints usually arise from the limitations inherent in the manufacture or installation of a transport element that arise as a result of the manufacturing equipment or in the assemblability, as in the maximum curvature introduced into a hose or wire. Since the intrinsic constraints are dependent upon the type of transport element that is being routed, other types of transport elements may have other intrinsic constraints.
Additional cost functions include simulation-of-gravity costs and segment-length-based regularizer costs. Potential routing scenarios often involve design symmetries or ambiguities. As such additional constraints and costs functions may be imposed to resolve design ambiguities. As shown
Another additional cost for addressing routing ambiguities is a segment-length-based regularizer cost, also referred to as a simply a segment-length regularizer For example, as shown in
A segment-length regularizer might, for example, introduce a cost function equal to the sum of the squares of the lengths of the straight segments. Recall the length cost function from above:
Such a function is invariant under displacements of N1 or N2 along the line between A and B. This can be easily seen by supposing that all they values are zero. Then the above formula looks like
which is a constant. To put it in graphical terms, all three of the configurations of
The function Csumsq obtains its minimum only for the configuration of
A number of interactions with constraint objects such as offsets, distances from stay-out zones, etc. may be defined as constraints and/or cost functions. When there is a constraint (an NTE value) that also has associated with it a preferred value, and an increasing cost function is assigned to the interval between the preferred value and the NTE value, as discussed above, it is conventional in some contexts, and can be convenient, to refer to the associated cost function, or the combination of constraint-cum-associated-cost-function, as a “soft constraint.” This is because a “hard constraint” (i.e., what is simply referred to as the “constraint”) is “softened” by the additional cost function that “leads up to it.” There is some inherent ambiguity in the “hard constraint”—“soft constraint” dichotomy because a “soft constraint” is really just another cost function. Further, there are some contexts in which “hard constraint” denotes the presence of a function in the formulation that cannot be evaluated at all unless the constraint is satisfied. The term “soft constraint” is preferably used only when there will be no ambiguity, and the reader is reminded that a “soft constraint” is not a constraint in the usual mathematical-optimization sense.
In this regard, both NTE and preferred values may be assigned for each constraint. More precisely, for any constraint, such as minimum bend angle, separation from a stay-out zone, or separation from the inner edge of a though-loop, “the constraint setting” is not a single entity but is actually a pair of entities: the NTE value and the preferred value of the relevant independent variable. The preferred value is, in some sense, “better” or “less extreme” than the NTE value. For example, in the case of minimum-bend-angle, an NTE value might be four degrees and the preferred value might be eight degrees, and this is interpreted to mean “try to obtain eight degrees, but if necessary, because of competition with other cost functions, the value may be as extreme as four degrees.”
With regard to constraints and cost functions, each constraint and cost function pertains to a particular function of the independent variables. (Recall that the independent variables are, for example, the node locations (see, e.g.,
For every dependent variable governed by an NTE/preferred pair, an important convenience offered by embodiments of the present invention is the ability to explicitly allow the designer, as a convenience, to choose between four different “enforcement modes.” The term violation cost refers to the cost due to transgressions past the NTE value toward the preferred value. The four different enforcement modes referred to above are:
Based upon the plurality of constraints and/or costs, the method of the present invention automatically defines a route for the transport element. In this regard, a route that complies with each of the constraints is preferably defined such that the route will be feasible. In addition, the route is preferably defined such that the route complies as closely as possible with the preferred values dependent variables, by virtue of the (optional) associated “soft constraint” cost functions. While a plurality of routes likely may be defined that are feasible, i.e., that comply with each of the constraints, the method of the present invention preferably selects, by means of an optimization procedure, a unique, optimal member from the plurality.
In order to permit the route to be optimized, an overall cost function is preferably defined based upon one or more member cost functions based on dependent variables associated with the route. One way to define an overall cost function in terms of the member cost functions was described in an earlier section herein where multi-criteria optimization and weights are discussed at length. For brevity, we refer to the member cost functions as simply “cost functions,” and reserve the term “overall cost function” to refer to the result of combining member cost functions in some way, such as with weights as described in another section herein. Overall cost functions may be defined depending upon the relative importance of the various cost functions. In this regard, the length of the transport element is frequently something that is desirably minimized. As such, one cost function may be the length of the transport element; as such, shorter transport elements are regarded as having lower cost than longer transport elements. Another cost function may be the compliance of the transport element. Compliance is essentially the amount of “give” in a transport element and depends not only on the shape of the transport element, but on the type and arrangement of the fixtures into which the transport element will be installed. In this regard, the fixtures themselves are often regarded, for convenience, as having zero compliance. Since transport elements cannot be manufactured without some error, and since the fixtures into which the transport element is installed are also imperfect, every transport element is installable only because it exhibits some compliance. Additionally, a transport element having a large degree of compliance will generally be subject to lighter loads upon installation than a very stiff or non-compliant transport element. For example, given two end-fittings that are collinearly opposed, one design might connect them with a straight length of tubing. But another design might introduce a “crankshaft” or “U” shape into the tube, even though this clearly makes it longer. The reason is that a straight tube cannot be stretched very much in the longitudinal direction, so the length of the tube must match the spacing between the end-fittings very closely. But if there is a “U” bend in the middle of the tube (sometimes called an expansion loop, see e.g.
Another cost function may be the flow resistance of the transport element. In general terms, the more curvature that a transport element has, the greater the flow resistance of the transport element. While various levels of analysis, and corresponding software programs, are possible for computing the flow resistance of various transport element designs, the number of bends along the route of a transport element or a simple function of the integrated curvature as well as the length of the transport element may be utilized to approximate the flow resistance or head drop along the route of the transport element.
In one embodiment, the contribution of each cost function may be weighted, according as it is more or less important in the designer's view. As such, the overall cost function or cost function defined by the weighted combination of the member cost functions for each feasible routing of the transport element would then be used as an objective function in an optimization (i.e., an efficient, automated search) procedure, and a route of the transport element that minimizes the weighted combination would be selected as the optimal route for the transport element.
The method of the present invention can also utilize many types of cost functions. As described above, for example, preferred values can be assigned to various dependent variables. In this regard, preferred values can be assigned to one or more of the intrinsic constraints, such as the minimum bend angle, the minimum straight segment length, etc., as well as one or more of the design characteristics previously discussed, such as the length of the transport element, the flow resistance, the compliance of the transport element or the like. Additionally, a preferred-value violation cost function (or simply “violation cost function”) for variances from the preferred value may also be defined. Although any violation cost function may be utilized, the violation cost function is typically a smoothly increasing function, in order to facilitate the most common and effective numerical optimization algorithms. As such, an overall cost function may be established based upon the cost of the variances from the preferred values of selected parameters (“soft constraints”). The route of the transport element having the lowest cost of variances will then generally be selected as the optimal route of the transport element. While the violation costs for variances from a preferred value may be defined in various manners, one definition of a violation cost is described below:
where A is the actual value of the parameter, D is the NTE value assigned to the parameter and P is the preferred value of the parameter. As mentioned above, other definitions of the violation cost may be utilized including smoothed staircase-shaped functions that may more accurately represent the discontinuous jumps in cost that occur, for example, when transitioning from one manufacturing process to another. For example, the violation cost associated with a bend that defines an angle less than the minimum bend angle may be based upon the cost of bending the tube without the cost being a constant c up to a 120°, 2c for a bend between 120°-170° since a different machine must be utilized to bend the tube, and 10c for a bend greater than 170° since the bending process must be performed manually.
The total violation cost for a given design characteristic may therefore be the sum of the violation costs along the route. For example, in instances in which the violation cost is the minimum bend angle, the violation cost, if any, for each bend may be summed to produce the total violation cost. The optimal route of the transport element is selected based upon the overall cost function which may combine the violation cost and one or more other design characteristics, typically in a weighted manner. The optimal route is therefore generally defined by minimizing the violation cost summed or otherwise combined with any other design characteristics that form a portion of the overall cost function. By doing so, the method may effectively drive all violations along the route of the transport element towards a weighted compromise value. Alternatively, the optimal route of the transport element may be selected to minimize the greatest violation. While this method would permit all violations to tend to (i.e., move toward) a shared or common value that is slightly less than the maximum violation without further penalty, some designers may find this technique useful.
As described above, after establishing the overall cost function, an optimization (i.e., an efficient, automated search) procedure is applied to investigate possible feasible routes, and an optimal route is selected. It is noted that in some cases, there may be no unique optimal route. For example, two different routes may have the same length, the same bend angles, etc. and may differ only in their node spacing. In such cases, other costs may be combined into the overall cost function, such as a cost for unequal node spacing, in order to differentiate the routes.
According to one embodiment to the present invention, however, the optimization is defined heuristically by the following steps:
By comparison, a conventional CAD tube routing application will only automatically create one of two things for a route between endpoints A and B, with no obstacles or other entities in between:
To create an initial guess, a method estimates a node distribution and imparts to it a small amount of spatial information. A node distribution defines the number of nodes (i.e., bends) a transport element will have and how they lie relative to targets. Given a set of targets, a method determines how many nodes or bends lie between each pair of adjacent targets. In one embodiment, pre-defined heuristic rules may be employed for how many nodes should be guessed between any two kinds of targets. This number may be a function not only of what kinds of targets they are, but also of what kinds of section constraints, if any, lie between them. (The section constraint concept is described in detail below). For example, there may be a rule that between any two rectangular-hoop constraint objects the initial guess will contain two nodes, which lie in line with the respective dir vectors and at distances equal to the respective preferred offsets from the respective ctr points. In addition, a number of extra nodes are generally inserted in the region of, e.g., a stay-out zone, to give enough degrees of freedom to circumvent the stay-out zone. A typical initial guess is illustrated by
In order to define the easy pass route, which satisfies most of the constraints, but is not necessarily optimized using the eventual overall cost function and constraints but is instead optimized for efficiency according to a simplified overall cost function such as length, and may not satisfy all of the intrinsic constraints, it may be advantageous to relax the minimum bend angle constraint and the minimum straight section length constraint to insure that some feasible route is identified. This is the reason for the term “easy pass”—an easy pass route involves constraints that are easier to satisfy, the purpose being merely to “bootstrap” the process by first identifying a rough indication of what shape a route must have to “thread” through the constraint objects and then returning to the easy pass route to optimize the route with respect to the final object function and satisfy all of the intrinsic constraints, thereby achieving an optimal feasible route. Note that to increase the likelihood that a feasible route is found by performing an easy pass, the initial guess upon which the easy pass is based generally includes an over-estimate of the number of nodes, such as two or three nodes between any two targets.
Although a forward-pass/backward-pass method (described below) may be very efficient in automatically determining a good node distribution, some computational burden can nevertheless be relieved by imposing additional constraints consisting of lower or upper number-of-nodes limits, thereby providing a “node-distribution hint,” i.e., an estimate of how many nodes should be placed between any two adjacent targets, or how many nodes are desired between any two adjacent targets. Upper and lower number-of-nodes limits may substantially reduce the number of continuous sub-problems that must be constructed and solved due to re-admissions during the forward pass and/or suppressions during the backward pass. In one embodiment, a user may specify the upper and lower number-of-nodes limits for every inter-target interval. Alternatively, or in addition, a method may rely upon pre-defined, default upper and lower number-of-nodes limits. Further, a method may use the upper and lower number-of-nodes limits between certain adjacent targets in a previous solution as the upper and lower number-of-nodes limits for subsequent routing, such as when modifying a previously designed route. Similarly, a method may re-use the node distribution en masse from a previous routing solution as a special case of the general concept of number-of-nodes limits, such that the subsequent route uses exactly the same number of bends between every pair of adjacent targets as were present in the previous route.
Upper number-of-nodes limits may be implemented, for example, by removing a random subset of nodes between any two adjacent targets exceeding the upper number-of-nodes limit from an initial guess. In the forward-pass/backward-pass process (described below), there can never be any more nodes between any two targets than were present in the initial guess. Lower number-of-nodes limits may be implemented, for example, by placing at least the lower number-of-nodes limit number of fixed nodal point targets having an infinite spatial tolerance in an interval between every two adjacent targets and with zero nodes between node-within-sphere targets. A node-within-sphere target is a spherical stay-in zone for a given node; it consists of a center point and a radius defining a spatial tolerance. By definition, precisely one node is required to exist for each node-within-sphere target, and that node must reside within the corresponding sphere. In the initial guess, a node is placed, as a guess, at the center of each such node-within-sphere target, and there are no nodes placed between any two adjacent node-within-sphere targets. Thus, by assigning the node-within-sphere targets an infinite radius, they effectively require there to be a node somewhere, but does not restrict where the node must be located. Thus, if a pair of adjacent targets has n node-within-sphere targets of infinite radius between two otherwise-adjacent targets, then there will be at least a minimum of n nodes between the adjacent targets. This is just one possible way of implementing minimum number-of-nodes limits.
The initial-guess route is essentially “relaxed” to form the easy pass, via a continuous optimization algorithm such as NPSOL, to a position that still conforms with the constraint objects but is shorter, and generally does not contain gross violations of extrinsic constraints (e.g., it does not run right through a stay-out zone, as the initial guess might). A typical easy pass route is shown in
The identification of the less important nodes may be performed in a variety of manners. By way of example, however, one embodiment of a heuristic method for identifying the less important nodes of a transport element route will be described hereinafter. In this regard, an easy pass route, such as depicted by
For each node sublist, the perpendicular deviation for each intermediate node of the node sublist that is not yet included in the modified route is determined. In other words, for each node sublist, the deviation of the nodes that lie between the first and last, i.e., the endmost, nodes of the respective node sublist from the respective straight segment extending between the endmost nodes of the respective node sublist is determined. For each node sublist, the node having the greatest deviation is chosen as a breakpoint to be added to the modified route, thereby further subdividing the route and creating two new node sublists. This process is repeated for each of the newly created node sublists until each of the nodes of the original node list has been used as a breakpoint or an endpoint. As a result of this process, the deviation for each node at the time of its selection as a breakpoint is noted. This process is termed recursive subdivision; it should be noted that the recursive subdivision process follows a general outline found in classical algorithms in computational geometry for developing piecewise-linear approximations to curves. The final result is a ranking of the nodes according to their order of re-admission, i.e., their perpendicular deviation.
In order to construct the optimal route of the transport element, a trial route is constructed that extends linearly between the first and last nodes, i.e., between the A-end and the B-end. An attempt is made to continuously optimize this route by means of NPSOL or the like, during which process a determination is made as to whether it is feasible, i.e., if it can satisfy each of the constraint objects and the intrinsic constraints such as minimum bend angle and minimum straight-section length. If not, the node from the original node list having the greatest deviation, as determined above, is re-admitted to create a modified trial route. Following the re-admission of the node, an attempt is made to optimize continuously the modified trial route, such as by means of NPSOL or the like, during which process a determination is made as to whether the modified trial route is feasible. If not feasible, the process of re-admitting additional nodes is continued with the node having the greatest deviation as described above being re-admitted and attempts made to optimize the resulting trial route and, as a result, to determine if it is feasible. For a feasible route, the process of defining the route of the transport element could terminate.
However, preferably, once feasibility is obtained, one or more additional nodes are admitted, however, to determine whether the further modified route of the transport element is improved by the addition of one or more nodes. In this regard, a measure of the optimality of each feasible route is obtained based upon the overall cost function, and is compared to previous trial routes to determine whether the optimality is improving. This measure of optimality may be identical to the overall cost function or cost function utilized during the continuous optimization, but generally may be different based upon the designer's preference. For example, it may include a function of the number of nodes, whereas the number of nodes is by definition a constant from the point of view of the continuous optimization process. This entire process of readmitting nodes is termed a forward pass. During the forward pass, an improvement threshold is typically established, such as 10%, such that if the measure of optimality of the further modified route exceeds the measure of optimality of the prior route by at least the improvement threshold, the process of further admitting additional nodes from the original node list and reoptimizing the resulting route is continued. If, however, the measure of optimality of the further modified and optimized route is not greater than the measure of optimality of the prior route by at least the improvement threshold or if the further modified route is infeasible, the process of further admitting additional nodes from the original node list is discontinued. In this instance, the prior route is also identified as the optimal route and the most recently admitted node is deleted to return to the prior route. As such, the process continues until the further modified route is either not feasible or is not a substantial improvement in terms of optimality relative to the prior route.
While the improvement threshold is generally greater than zero, the improvement threshold may be zero such that the process of admitting additional nodes continues so long as the further modified route makes even a slight improvement in optimality vis-a-vis the prior route. Additionally, while the embodiment of the method described heretofore terminates upon re-admitting an additional node from the original node list that makes the further modified route infeasible or that fails to improve the measure of optimality of the prior route by at least the improvement threshold, the method may be constructed to look ahead such that a predetermined number of nodes may be re-admitted following the determination that a further modified route is infeasible or failed to improve the measure of optimality of the prior route by at least the improvement threshold since there are instances in which although the re-admission of an additional node will cause the resulting route to be infeasible or to fail to improve the measure of optimality of the prior route by at least the improvement threshold, the addition of further nodes will not only make the resulting route feasible, but will significantly increase the measure optimality of the resulting route.
Once the most nearly optimal route is determined, the process may be discontinued. In one embodiment, however, the nodes of the resulting route are examined once more to ensure that each node is really necessary. In this regard, it is possible that a node having a relatively low deviation was re-admitted during the forward pass. For example, a node that is not strictly needed for feasibility may have a moderate deviation, while another node that is strictly needed for feasibility may have a very low deviation. As such, the node that is not strictly needed for feasibility will have been re-admitted prior to the node that is required for feasibility due to the relative deviations of the nodes. By way of example, an initial route that is feasible in that it satisfies the constraints at the A-end and the B-end as well as a hardpoint constraint object is depicted in
Based upon the route generated by the forward pass depicted in
Beginning with the node having the least deviance, the least deviant node is deleted. An attempt is then made to optimize the modified route, such as by means of NPSOL or the like, and, as a result, the feasibility of the modified route is determined. If the modified route is feasible, the relative optimality of the route is also determined. If the node is deleted and the resulting route remains feasible and the optimality does not significantly decrease, i.e., does not decrease by more than a predefined degradation threshold, the process, termed the backward pass, continues by deleting the remaining node having the least deviance in the same manner as described above. As also described above, the measure of optimality against which the degradation threshold is applied might generally differ from that used or seen by the continuous optimization process. Note that during the backward pass it may be advantageous to re-compute the deviations at each step.
If the route is infeasible or if the measure of optimality substantially decreases, such as by more than the predefined degradation threshold, however, this process may be halted and the node that was most recently deleted is re-admitted to define the modified route. Alternatively, the backward pass may look ahead by deleting one or more additional nodes to determine whether the resulting route again becomes feasible and if the measure of optimality of the resulting route increases or, at least, does not substantially decrease. If so, the backward pass may continue until the route is again infeasible or the measure of optimality decreases by more than the degradation threshold and the further deletion of one or more additional nodes does not revive the feasibility of the route and cause the measure of optimality of the resulting route to increase. Upon completing the backward pass, the resulting route is not only feasible, but tends to have a small number of nodes, at least with respect to the original overpopulated centerline. An example of the modified route following the backward pass is depicted in
A method of the present invention generally produces an optimal route as well as a cost report identifying cost violations attributable to variations from the preferred values or the NTE values for various design characteristics or parameters. Based upon this information, the designer may vary the preferred values or may reweight the relative importance of variations from the preferred values and then re-execute the method in order to find another route. As such, the method permits a designer to readily experiment with the relative importance of different design characteristics so as to select the route that is not only feasible, but is most appropriate for the situation. It is noted that the re-execution of the method following adjustment of the weightings may be performed very quickly since it need not involve re-searching “node-space”, i.e., repeating the forward/backward pass(s). Additionally, the designer is able to address problems more directly by adjusting design characteristics that are conceptually very closely related to the specific problem. For example, in order to relieve a too-small bend angle, the designer need not consider all of the indirect ways in which to effect the relief, such as lengthening a segment and shortening another segment. Instead, the designer need merely increase the weight associated with violations of the minimum angle requirement. Although not described above, the designer can also introduce additional nodes into the resulting route if the designer feels additional nodes are appropriate, such as for increasing compliance or the like. In fact, a whole class of constraint objects are those that force nodes to exist at certain locations or within certain regions (such as the node-within-sphere targets described above). Thus, the designer can always exert an arbitrary degree of control over the placement of nodes, should they wish to override the placement made automatically, for example. By way of example,
The optimization technique described above is a heuristic method for approaching what is in principle a mixed integer problem. However, the optimization problem including the initial selection of the nodes in terms of the number of nodes and the ordering of the nodes with respect to the constraint objects as well as the concomitant continuous optimization of the number and positions of the nodes may be treated more generically as a mixed integer problem and solved by a mixed integer solver, such as any number of classical brand-and-bound methods, or the pattern-search method exemplified by the NOMAD package of Dennis and Audet of Rice University and the École Polytechnique de Montréal. There are many other possible algorithms Mixed integer problems are ones where some independent variables are integers and other are continuous. In this application, the integer variables describe the number of nodes and their general ordering with respect to the constraint objects, and the continuous variables describe the exact spatial locations of the nodes.
Mixed-integer problems and their solutions are well studied. Thus, for completeness a description of the application of a general mixed-integer formulation to the design of a route of a transport element in accordance with the present invention is provided in conjunction with the class of curves appropriate for representing bent-metal tubes. These are once-differentiable curves consisting in alternating straight segments of positive length and circular arcuate segments of positive finite length. In other words, these curves are arc-splines, i.e., splines consisting in a sequence of circular arcs, with the feature that every other arc has an infinite radius, i.e., is straight, and the remaining arcs all have a common finite radius. However, as noted elsewhere, the method of the present invention may also be applied to other classes of curves, more or less complicated than this exemplary curve, such as cubic B-splines, etc.
A mixed-integer optimization problem is one in which some, but not all, of the decision variables, i.e., independent variables, may take on only integer values. The rest may take on arbitrary real values. As mentioned above, some generic packages for solving mixed-integer problems exist including NOMAD. It is noted that the heuristic method described above already solves a mixed-integer problem. However, the heuristic formulation described above is different from the formulation accepted by a generic package like NOMAD. The reason is that a generic mixed-integer solver must be fed a fixed set of independent variables or decision variables, a fixed cost, and a fixed set of constraints. In contrast, the heuristic method described above works with integer variables that are effectively a very compact encoding of the number of bends and their ordering relative to the constraint objects, such that for each point in that integer space the set of non-integer decision variables is different. That is, the heuristic method presented above is better thought of as formulating the problem in terms of a varying set of decision variables, costs, and constraints.
In order to illustrate the manner in which the problem could be formulated in terms of fixed set of variables, consider a route that must extend from the A-end, through a pair of loops, through a way-point or hardpoint and to the B-end. To approach the problem as a general mixed-integer problem, one could postulate an overpopulation of nodes. Each node represents three continuous decision variables, the x, y, and z coordinates of the node. With the ith node, two sets of constraints ci,a and ci,b are associated. In this sense, a constraint is a function with associated upper and lower bounds. More particularly, ci,a is a constraint on all the continuous decision variables that requires the segment just before the ith node and the segment just after the ith node to be parallel. This could be, for example, one minus the inner product of the associated unit vectors, with upper and lower bounds zero. ci,b contains, among others, a constraint that forces any bend at the ith node to fall within the minimum and maximum bend angle constraints. This would be, for example, the cosine of the bend angle, with appropriate upper and lower bounds. This second set ci,b also generally contains many other constraints, such as those on offsets and other interactions with the external constraint objects, i.e., loops, stay-out zones, hardpoints, etc.
In addition there are integer decision variables that effectively turn the constraint sets ci,a and ci,b “on” or “off”. That is, there are some artificial variables Φj that can take on only integer values, and are used as multipliers on the constraints ci,a and ci,b. Thus the final constraints in the mixed-integer problem may generally be written (with the subscripts omitted for clarity) as follows:
lower_bound≦Φc≦upper_bound Eq. 37
Thus when the Φ multiplying a given c is zero, the c is “off”, or trivially satisfied, and when the Φ multiplying a given c is 1, the c is “on”, i.e., they become non-trivial. It should be noted that other formulations may be utilized without departing from the spirit and scope of the present invention. Furthermore the Φ's are subject to the constraints that 0≦Φj≦1 (i.e., Φj ε{0, 1}) and no two Φ's can take on values that would imply that a given node were both a bend and a non-bend simultaneously. That is, if there is a constraint that a given node must have parallel segments on either side of it, then there cannot also be a constraint that the given node must represent a bend of a certain minimum angle. Otherwise there would be a geometric contradiction.
In formulating the general mixed-integer problem, it should be taken into account that when there are multiple bends “turned off” in a row, the correct minimum straight-segment length requirement to apply cannot be established by simply applying a minimum straight-segment length constraint to each segment. Rather, the contiguous set of collinear straight segments, comprising all those between, and at the ends of, the contiguous non-bends, must be considered to be a single “super-straight” segment.
Heretofore, the general mixed-integer problem has been discussed only in conjunction with the constraints. However, a similar process must be followed to account for the cost function's dependence on parameters associated with bends.
With such a formulation, a generic mixed-integer solver as known to those skilled in the art could be set to work on the problem. It would essentially try out many different combinations of bends and their placement relative to the constraints, by trying out many different settings of the Φ's, subject to the constraints placed on them. At each setting of the Φ's it would have a continuous sub-problem to solve, at least partially. As a result of this process, however, the generic mixed-integer solver, such as NOMAD, would in principle return the route that is most nearly optimal subject to the various constraints imposed upon the route and the overall cost function defined by the designer.
An additional improvement is to partition the routing for a transport element. Such a method may reduce the processing time for long transport elements. Generally the number of optimization variables, and therefore the time for processing continuous sub-problems, increases as a route length increases. Accordingly, if the route for a transport element is broken down into upstream and downstream sub-problems with weak interactions, the upstream and downstream portions for the route may be designed independently, and then those upstream and downstream routes may be used for a continuous sub-problem on the whole route to resolve the weak interactions between the upstream and downstream portions for the route. A partitioning method may be implemented, for example, by partitioning routes into sub-problems with lengths less than a predefined value. Another example implementation for a partitioning method may be to limit sub-problems for the route by a predefined maximum number of targets, such as where a sub-problem may include only, say, fifteen or fewer targets. Partitioning a route into sub-problems may be based, for example, on equal divisions of the whole route. For example, if a route includes twenty targets, two sub-problems may be formed each with ten targets, rather than having one sub-problem with the fifteen target maximum and the other sub-problem with only five targets. Once the partitioned sub-problems have been solved, they can be “stitched” together into an overall solution by simply concatenating them and using them as the starting point for a single continuous optimization. Since they will generally form a very good starting point, this continuous optimization can be very quick. The key principle is that the sum of the computational burdens of the partitioned sub-problems and the computational burden of the stitching-together process may be much less than the single computational burden of the original problem, because the computational burden of a given routing problem generally goes superlinearly with the number of nodes. Furthermore, the partitioned problems could be solved in parallel, given multiple computer processors.
It should be noted that the routing problem solved by the method and computer program product of the present invention cannot be formulated as an optimization in all continuous variables. In this regard, it may be thought that an overpopulation of nodes may be introduced with some of them vanishing as a natural consequence of a continuous optimization process. Thus some nodes might coalesce, to effectively reduce the number of bends in a certain region, or other nodes might take on a zero-degree bend, also to effectively reduce the number of bends. However, such an approach is impossible in any continuous context, because of the intrinsic constraints such as minimum bend angle (which forbids any bend from continuously passing from a finite angle to zero angle) and the minimum straight segment length constraint (which forbids any two nodes from coalescing). Thus, for at least some classes of curves, there is inherently an integer aspect to the problem, namely to choose the number of bends and their ordering relative to the constraint objects (both of which are described in only integer terms).
Oftentimes, it is desirable to route a new transport element parallel to or approximately parallel to an existing transport element. Various techniques can be employed in order to route a new transport element approximately parallel to an existing transport element.
According to one method for routing a new transport element proximate to an existing transport element, a space may be defined through which the route of the new transport element will extend based at least in part upon the route of the existing transport element. Typically the space is sized such that a plurality of candidate routes may extend therethrough with the method of the present invention permitting the selection of an optimal route from among the plurality of candidate routes. As shown in
By extending through the spaces defined by the annular sleeves, the new transport element is roughly parallel to the existing transport element. Further, while
Although the above methods related to subsequent transport element routing have been described in conjunction with the subsequent routing of a single transport element, the methods may route multiple transport elements simultaneously, as in a bundle. The multiple transport elements may be routed in various manners. For example, inter-transport element constraints may be defined to describe the desired relationships between the transport elements, as shown figuratively by the double headed arrows between adjacent transport elements in
Further, when designing routes for multiple transport elements, several additional routing features may be employed. For example, when subsequently designing a route for a second transport element in the presence of an existing, first transport element, the existing transport element may be protected by stay-out zones. Similar to using annular sleeves for routing additional transport elements in proximity to an existing transport element, as shown in
Another routing feature that may be employed when designing routes for multiple transport elements is a routing gutter. A routing gutter refers to a defined shape, such as shown in
Another routing feature that may be employed when designing routes for multiple transport elements is bundle routing, i.e., routing bundles of transport elements. Currently, the only manner of routing multiple transport elements is to route transport elements sequentially, i.e., by routing a first transport element and then routing a subsequent, second transport element in relation to the existing, first transport element, where the existing transport element is considered fixed in space and typically serves as a stay-out zone for the subsequent transport element. This process can be repeated to route bundles of transport elements. However, subsequently routing a transport element in relation to an existing transport element which is fixed in space may not result in desirable positions for the multiple transport elements. For example,
As described above, routing bundles of transport elements may be performed in either of two ways: (1) sequentially in time or (2) simultaneously. If bundle routing is performed sequentially, a new transport element is routed with respect to an existing transport element, or a set of existing transport elements, and these existing transport elements essentially play the role of background geometry—just like any other background geometry, i.e., the existing transport elements might be “marked-up” with, e.g., (a) detailed stay-out zones; (b) simplified stay-out zones, for reasons of computational speed, such as a sequence of spheres spaced out along the length of the existing transport element or transport elements, which serves to “protect” the existing transport element or transport elements with only a coarse fidelity, but from which is easy and fast to compute distances; (c) special constraint objects adapted to bundle routing, such as routing gutters (described above); or any number of other constraints. If bundle routing is performed simultaneously, instead of “building up” a bundle of transport elements one at a time, the transport elements can instead be routed all at once. This can be done either by first routing a “meta-tube” that is essentially a “guide” for a set of other transport elements, or by having the transport elements interact with one another during the optimization process. In both cases of bundle routing, all of the other constraints described herein (i.e., extrinsic constraints like hardpoints, adjustable hardpoints, stay-out zones, etc. and intrinsic constraints like minimum bend angle, minimum straight-section length, etc.) may be applied.
When routing bundles of transport elements, transport elements 170, 171, 172, 173 may share common node distributions, as shown in
Rather than routing a subsequent transport element in relation to an existing transport element which is considered fixed in space, the routing of the multiple transport elements may interact. By interacting, the design of each transport element may influence and/or interfere with the design of other transport elements. Thus, the design of multiple transport elements may occur contemporaneously, such as where the design occurs simultaneously or near-simultaneously and where the design for routing one transport element interacts with the design for routing another transport element.
When routing multiple transport elements, one concern may be to avoid “braiding” amongst the multiple transport elements, i.e., to achieve anti-braiding of multiple transport elements. Braiding may occur because, from the point of view of an underlying mathematical optimization algorithm, a configuration in which one tube spirals around another (braiding) may be a local optimum, and, worse, a local optimum from which a non-braided (i.e., superior) local optimum is not reachable by a feasible path of configurations.
Further, when designing routes for multiple transport elements, one additional routing feature which may be employed is an ADF, such as used as a stay-out zone or a pass-through zone. Just as an ADF may be used as a path constraint to design a route for a single transport element, ADFs may be used for designing routes for multiple transport elements. ADFs may be particularly useful for routing subsequent transport elements in relation to an existing route for a transport element because the existing route may be represented by an ADF which exactly matches the shape of the existing transport element. ADFs can provide protection for the entirety of an existing transport element, by comparison to using multiple pre-defined path constraints, such as multiple parallel sleeves and spheres to protect path segments and nodes. ADFs being used as a stay-in zone may also function to replace inner and outer sleeves which attempt to define an outer region in which a route for a subsequent transport element passes and an inner region which the route for the subsequent transport element circumvents, such as when designing a route for a subsequent transport element to be in proximity to an existing transport element, but not intersect or otherwise pass through the existing transport element. ADFs can, thus, be used for designing a route to approach an object without contacting the object.
The method of the present invention is typically performed by a computer program product that interacts with a designer to provide the functionality described hereinabove. The computer program product for performing the optimized routing of a transport element generally includes a computer-readable storage medium, such as the non-volatile storage medium, and computer-readable program code portions, such as a series of computer instructions, embodied in the computer-readable storage medium. The computer-readable storage medium is generally accessible by a processing element, such as a computer, workstation or the like, for executing the foregoing method in an automated fashion. Thus, based upon some input provided by the designer such as the constraint objects, the identification of the overall cost function, the NTE and preferred values for various parameters, the high and low values for various parameters, the weighting of different cost violations and the like, the computer program product will then operate in accordance with the method of the present invention to determine an optimal route.
The method described above can therefore be implemented by computer program instructions. These computer program instructions may be loaded onto a computer or other programmable apparatus to produce a machine, such that the instructions which execute on the computer or other programmable apparatus create means for implementing the various functions of the method. These computer program instructions may also be stored in a computer-readable memory that can direct a computer or other programmable apparatus to function in a particular manner, such that the instructions stored in the computer-readable memory produce an article of manufacture including instruction means which implement the various functions of the method. The computer program instructions may also be loaded onto a computer or other programmable apparatus to cause a series of operational steps to be performed on the computer or other programmable apparatus to produce a computer implemented process such that the instructions which execute on the computer or other programmable apparatus provide steps for implementing the various functions of the method.
As described above, the computer program product is preferably adapted to solve a mixed-integer nonlinear optimization problem. The problem could in principle be formulated in its full mixed-integer generality, and an off-the-shelf mixed-integer solver such as NOMAD could be utilized. In one embodiment, however, the method exploits specialized domain knowledge to generate a highly promising subset of points in the integer subspace, in a very efficient order, as described, e.g., by the easy-pass/forward-pass/backward-pass procedure above.
Targets, Section Constraints, and Constraint Relationships
Each continuous sub-problem corresponds to a particular number and placement of bends, that is, a choice of (a) how many bends there are, and (b) where the bends fall with respect to the constraint objects and, more precisely, with respect to the targets. In this regard, one class of constraint objects is targets. A target has the property that it necessarily exerts an influence on a predetermined number of nodes in the transport element. That is, the constraint formulas behind a target involve a predictable number of nodes. For example, a hardpoint sets up low-level mathematical constraints that involve precisely four nodes. Another property of targets is that the transport element can meaningfully be said to go through them.
Another class of constraint objects is section constraints, which are different from targets in that the number of nodes they influence or constrain depends on the particular problem in which they are used. The reason they are called section constraints is that they apply to a section, the portion of a transport element lying between two targets. For example, a stay-out zone may apply to the section consisting of the A-end, the B-end, and everything in between, i.e. the entire transport element. Because the node distribution is yet to be determined, it is therefore impossible to tell, a priori, the number of nodes contained in the section. Instead, the problem must be solved to determine the number of nodes. But however many there are, the stay-out zone interacts with every node and link between the A-end and the B-end. If there was a hardpoint between the A-end and B-end, however, the same stay-out zone could have been specified to apply to the section consisting in the A-end, the hardpoint, and everything in between. The stay-out zone would not exert an influence on any nodes between the hardpoint and the B-end. It should be noted that a stay-out zone, or any other section constraint, has a distinct identity independent of what section of the transport element to which it is applied, such that the same data structure can be re-used on different sections, or even different transport elements.
Finally, constraint relationships are meta-constraints that apply to conditions existing at any set of targets. Usually the set is just a pair. Larger sets can be obtained either explicitly or de facto by chaining pairs together. In addition, constraint relationships may exist even between section constraints, not just between targets. For example, a constraint relationship may fix the slope in two different sections of the transport element to be identical, or identical to within certain limits, without specifying the slope in either section.
For each inter-target gap, a concrete number of bends must be assigned, and each distinct assignment leads to a new continuous sub-problem, which consists in adjusting the node locations until the overall cost functionappears to be minimized.
It is illuminating to estimate the size of the integer space. If there are Nt targets, then there are Nt−1 inter-target gaps. Assuming zero to three bends in any gap, then there are potentially 4Nt−1 points in the integer subspace to consider. Thus a 7-target problem implies 4096 continuous sub-problems. Rather than visiting all 4096 integer sites in the discrete parameter space, the method of the present invention instead visits a heuristically limited subset of them, typically a few dozen at most. Furthermore, these sites are advantageously visited in a particularly promising order, via the forward and backward passes.
At any rate, each continuous sub-problem has a complicated cost function and a complicated set of constraints. “Complicated” does not necessarily mean that variables or constraints are particularly numerous. In fact, by continuous optimization standards, they are rather few, on the order of dozens, or at most hundreds. It does mean, however, that the cost function and constraints depend in a complicated way on the constraint objects which are set up by the designer in generally unpredictable ways, and generally in an interactive setting.
The constraint objects are essentially “bundles” or “packages” of many very simple constraints that may be processed by commercial or otherwise off-the-shelf optimization programs such as NPSOL. The designer can pick and choose as many of these packages as they like, and lay them out in a 3-D environment. However, without computer assistance, to proceed from such a layout to a single complete, correct continuous sub-problem, described directly in terms acceptable by off-the-shelf optimization programs would be so error-prone and time consuming as to be utterly impractical.
That being said, the method of one advantageous embodiment performs two subtasks:
1. Transcription.
Given an abstract description of a single continuous sub-problem, i.e., given a choice of how many nodal points there are, and where they fall relative to the constraint objects, the method constructs an appropriate cost function, a constraint function vector, the constraint bounds, scale factors, and other arguments, to pass to a commercial or otherwise off-the-shelf optimization program, which typically expects its inputs in this new form.
2. Flexible Manipulation of a Family of Sub-Problems.
The computer program product also makes it possible to formulate the myriad continuous sub-problems that must be formulated and solved to account for the integer portion of the problem space.
To avoid circumstances where a method of the present invention may be incapable of designing a feasible route for a transport element, a method of the present invention may employ constraint relaxation, whereby at least one constraint is relaxed according to the soft-only mode for relaxing a constraint describe above, where, in fact, the constraint is replaced or ignored and only an associated cost function is employed. If all of the constraints for a route design are relaxed in this way, the route design becomes feasible by definition in that the design becomes an unconstrained optimization. By relaxing constraints, at least some feasible route may be designed and presented to a user, rather than, for example, merely issuing an error message stating “no feasible route configuration.” For example,
Consider also, for example, the case of minimizing the length of a transport element in the face of minimum bend angle constraints, as described with respect to
While relaxing a single constraint, or a limited number of constraints, may transform an infeasible design into a feasible design, it is not always possible to trace infeasibility to specific constraints, such as tracing failure of feasibility to a single constraint. However, relaxing less than all constraints for a design may transform an infeasible design into a feasible design. Accordingly, constraint relaxation may relax as few as one constraint to as many as all constraints for a route design. For example, one method may relax a number of constraints closest to a suspected infeasibility, such as to relax all constraints within the nearest two targets of the suspected infeasibility or all constraints within the nearest two upstream and nearest two downstream targets of the suspected infeasibility.
By relaxing constraints, the resulting feasible route may have minimal distortion from the desired route for a transport element. However, to assist a user in evaluating the infeasibility of a route, a method may output, typically graphically, the degree to which a relaxed constraint bound, i.e., the not-to-exceed (NTE) value of the unrelaxed constraint, has been exceeded. Displaying the degree of deviation may be performed, for example, by highlighting portions of the feasible route with varying colors and/or intensities of brightness. For example, color ranges could be assigned to ranges of percentage deviation from parameter values that surpass what would have been do-not-exceed values of constraints had the constraints not been relaxed, such as where blue indicates no violation, and yellow, orange, and red represent increasing ranges of percentage deviation.
Regardless of the particular implementation, the various embodiments of the method of the present invention permit the route of a transport element to be automatically defined in accordance with one or more constraints that drive or guide the design, including at least one ADF constraint object. As such, the constraints are taken into account during the design of the route and do not merely serve as post hoc checks, wherein the discovery of any violations would require the route to be redesigned. Additionally, the method for designing the route of a transport element establishes an overall cost function to permit the route that is automatically defined to be optimal relative to the overall cost function. By establishing different types of overall cost function, different routes may be defined based upon the requirements of a particular application. Additional embodiments of the present invention further improve the method by permitting relationships to be established between two or more of the constraints and permitting the route to be automatically defined while maintaining the other constraints. Additionally, the route of the transport element may be based upon and proximate to an already existing transport element, if desired, or it may be applied to multiple transport elements simultaneously to route bundles. Additional embodiments rely upon an additional constraint or cost function component to design a route for a transport element.
Many modifications and other embodiments of the invention will come to mind to one skilled in the art to which this invention pertains having the benefit of the teachings presented in the foregoing descriptions and the associated drawings. Therefore, it is to be understood that the invention is not to be limited to the specific embodiments disclosed and that modifications and other embodiments are intended to be included within the scope of the appended claims. In this regard, the method of the present invention has been primarily described in conjunction with the routing of tubes. However, the method is also applicable to the routing of other transport elements such as cables, hoses, wires, wire bundles and the like. In addition, while the routes described heretofore have primarily consisted of straight segments connected by circular arcs, the method of the present invention may construct routes having other shapes, such as routes following a B-spline curve or the like. Although specific terms are employed herein, they are used in a generic and descriptive sense only and not for purposes of limitation.
This application is a continuation-in-part of co-pending U.S. patent application Ser. No. 11/439,643, entitled “Constraint-Based Method of Designing a Route For a Transport Element,” filed May 24, 2006, which is a continuation-in-part of U.S. patent application Ser. No. 09/967,784, entitled “Constraint-Based Method of Designing a Route For a Transport Element,” filed Sep. 29, 2001 now U.S. Pat. No. 7,444,269, the contents of both of which are incorporated by reference in their entirety.
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Child | 11563777 | US | |
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Child | 11439643 | US |