This invention relates generally to the wireless power delivery field, and more specifically to new and useful methods and systems for multi-objective optimization in the wireless power delivery field.
Typical methods and systems for multi-objective optimization may require evaluation of objective functions at numerous points and/or determination of objective function gradients. Such evaluations and/or determinations can be undesirable (e.g., impractical, inefficient, time-consuming, etc.) when applied to wireless power delivery. Thus, there is a need in the wireless power delivery field to create new and useful methods and systems for multi-objective optimization and/or wireless power delivery.
The following description of the preferred embodiments of the invention is not intended to limit the invention to these preferred embodiments, but rather to enable any person skilled in the art to make and use this invention.
1. Overview
A method 10 for multi-objective optimization preferably includes: evaluating objective functions at a point S100; determining a plurality of initial points S200; and/or determining a final point S300 (e.g., as shown in
For example, determining transmission parameter values S200 of U.S. patent application Ser. No. 16/001,725 can include performing one or more elements of the method 10 (e.g., wherein the multi-objective search approach of U.S. patent application Ser. No. 16/001,725 includes performing one or more multi-objective optimizations such as described below). Additionally or alternatively, performing multi-objective optimizations S430 of U.S. patent application Ser. No. 16/295,684 can include using the method 10 (and/or any suitable elements thereof, such as S200 and/or S300) as a multi-objective search approach (e.g., wherein implementing the “high-diversity approach” of U.S. patent application Ser. No. 16/295,684 includes performing S200 of the method 10 described herein, and/or wherein implementing the “high-quality approach” of U.S. patent application Ser. No. 16/295,684 includes performing S300 of the method 10 described herein). In some examples (e.g., as shown in
A system 20 for multi-objective optimization preferably includes one or more computation modules and one or more objective function evaluation modules (e.g., as shown in
2. Method
The method 10 preferably functions to search for points (in a parameter space over which the search is performed) on and/or near the Pareto front defined by a set of objective functions (e.g., as described in the appendix). The Pareto front for a set of objective functions is defined as the set of points that are Pareto efficient (i.e., not Pareto-dominated by any other transmission configuration). For example, for a set with two objective functions (ƒi and fj), a Pareto efficient configuration x is one for which there does not exist a configuration x′ for which ƒi(x′)>ƒi(x) and ƒj(x′)≥ƒj(x), nor for which ƒi(x′)≥ƒi(x) and ƒj(x′)>ƒj(x). Accordingly, the method 11 can function to search for transmission configurations on and/or near the Pareto front defined by a set of receivers.
2.1 Evaluating Objective Functions
Evaluating objective functions at a point S100 preferably functions to determine values associated with one or more objective functions (at the point). The objective function values can be determined based on measurements, such as measurements of physical phenomena associated with operating a system (e.g., the system 20 and/or the system 21) in a manner consistent with the point (e.g., configuring one or more operation parameters based on the point, such as, for each parameter, based on the position of the point along a dimension in the parameter space corresponding to the parameter), based on calculations (e.g., modeling aspects of system performance associated with objective function values; calculating objective function values based on equations and/or other known relationships and/or information; determining derivative values, such as values derived based on one or more measured, stored, received, and/or modeled values, etc.), and/or based on any other suitable evaluation techniques. S100 can additionally or alternatively include computing objective function values, receiving objective function values from other entities, and/or determining objective function values in any other suitable manner.
S100 preferably includes evaluating all objective functions of interest (e.g., the objective functions associated with the receivers of the system and/or the receivers under consideration for the optimization, preferably wherein each receiver is associated with a different objective function). The objective functions are preferably evaluated substantially concurrently, such as evaluated based on the same power transmission event, but can alternatively be evaluated at different times (e.g., evaluating subsets of the objective functions at different times from each other, evaluating each objective function at a separate time, etc.) and/or can be evaluated based on different power transmission events. All of the objective functions are preferably evaluated (e.g., even if some objective function values are not needed for a particular purpose, such as for a particular performance of S100). In some embodiments, the determined objective function values can be cached (e.g., as described in U.S. patent application Ser. No. 16/001,725, filed 06-Jun.-2018 and titled “Method and System for Wireless Power Delivery” and/or in U.S. patent application Ser. No. 16/295,684, filed 07-Mar.-2019 and titled “Method and System for Wireless Power Delivery”, each of which is herein incorporated in its entirety by this reference), preferably, caching all objective function values determined. In such embodiments, S100 can optionally include retrieving cached objective function values (e.g., rather than re-determining the cached objective function values). Alternatively, only a subset of the objective functions can be evaluated (e.g., evaluating only a single objective function) and/or S100 can include evaluating any other suitable objective functions in any suitable manner.
In some embodiments, the point can be a transmission configuration, and the objective function values can be associated with receivers of the system (the power received at each receiver, such as at each receiver within communication range of the transmitter; values proportional to such power, such as power delivery efficiency, which may be calculated as power received at a receiver divided by a transmission power value such as transmitted power or power consumed by the transmitter; etc.). In these embodiments, S100 preferably includes evaluating the transmission configuration as described in U.S. patent application Ser. No. 16/001,725, filed 06-Jun.-2018 and titled “Method and System for Wireless Power Delivery”, and/or in U.S. patent application Ser. No. 16/539,288, filed 13-Aug.-2019 and titled “Method and System for Wireless Power Delivery”, each of which is herein incorporated in its entirety by this reference (e.g., as described regarding determining transmission parameter values S200, such as regarding evaluating candidate transmission parameter values S220 in particular).
For example, evaluating the transmission configuration can include: at the transmitter (e.g., including a plurality of transmission elements, such as an adaptive antenna array), transmitting power (e.g., throughout a time interval) based on the transmission configuration; at one or more receivers, receiving power transmitted by the transmitter (e.g., during the time interval); and, for one or more of the receivers (e.g., for each receiver independently, for one or more groups of receivers, collectively for all the receivers, etc.), determining information associated with the power reception (e.g., amount of power received at the receiver, preferably normalized by the amount of power transmitted by the transmitter), wherein the evaluation is determined based on the information. In a specific example, the transmitter determines how much power it transmits, each receiver determines how much power it receives, and the information is then used to determine a respective power delivery efficiency for each receiver (e.g., wherein the information is communicated to a single entity for analysis, such as wherein each receiver communicates its power reception information to the transmitter). However, S100 can additionally or alternatively include evaluating the transmission configuration in any other suitable manner.
For each transmission configuration evaluated, S100 preferably includes determining and/or caching the corresponding objective space values (e.g., the power received at each receiver, such as at each receiver within communication range of the transmitter; values proportional to such power, such as power delivery efficiency, which may be calculated as power received at a receiver divided by a transmission power value such as transmitted power or power consumed by the transmitter; etc.).
However, the point can additionally or alternatively be a point in any other suitable parameter space, and/or S100 can additionally or alternatively include evaluating the objective functions (e.g., determining the objective function values) in any other suitable manner.
2.2 Determining Initial Points
Determining a plurality of initial points S200 preferably functions to determine initial points for seeding a Pareto front search algorithm.
In a first embodiment, the initial points are determined based on a distribution throughout a parameter space (e.g., random distribution, uniform distribution, etc.), such as the transmission parameter space associated with the transmitter. For example, the initial points can be a uniform array of points in the parameter space (e.g., transmission parameter space), can be concentrated around (e.g., selected randomly around, such as selected within a threshold distance of and/or selected with selection probability dependent on distance from, etc.) one or more known points in the parameter space (e.g., wherein each known point is a known transmission parameter value set, such as a set associated with a previously-used transmitter configuration), and/or can be distributed in any other suitable manner.
In a second embodiment, the initial points are displaced from one or more generation points. The generation points can be points on or near the Pareto front (e.g., determined in previous iterations of S300), can be random points in the parameter space, can be uniformly distributed points in the parameter space, and/or can include any other suitable points.
In a first example of this embodiment, the vectors along which the initial points are displaced from a generation point can have uniform magnitudes, random magnitudes, and/or any other suitable magnitudes. The vectors can have random orientations, regularly-spaced orientations (e.g., regularly spaced about the n-sphere surrounding the generation point in the parameter space, wherein n is the dimension of the parameter space), and/or any other suitable orientations.
In a second example of this embodiment, the initial points are displaced from the generation point along one or more ascent directions, such as the ascent vectors described below regarding S320 and/or the ascent directions described below regarding S330. Preferably, each initial point is displaced from a generation point by one of a plurality of linear combinations of the ascent vectors (e.g., wherein each initial point generated from the generation point is displaced from the generation point by a different linear combination of ascent vectors). The linear combinations can be partitions (e.g., uniform partitions) over combinations of the ascent vectors (e.g., single objective ascent directions), such as wherein a sum over the coefficients of the linear combinations is equal to a constant value (e.g., 1). Alternatively, the linear combinations can have random coefficients (e.g., wherein the coefficients are randomized separately for each initial point generated from a particular generation point) and/or can be determined in any other suitable manner. In some examples, a line search is implemented to determine the magnitude of displacement along each of the ascent directions (e.g., wherein each initial point is displaced from its respective generation point along its respective ascent direction by an optimal or substantially optimal magnitude, such as wherein each initial point is Pareto dominant over its respective generation point).
In a first variation of this embodiment, in which a set of initial points are each displaced from a generation point on or near the Pareto front, the initial points are each displaced by a respective vector. The vectors preferably have uniform magnitudes, but can alternatively have random magnitudes or any other suitable magnitudes. The vectors preferably have random orientations, but can alternatively have orientations defining regular (or substantially regular) angular spacing, and/or have any other suitable orientations (e.g., defining any other suitable distribution).
In a second variation of this embodiment, in which a set of initial points are displaced from a generation point not on or near (or not known to be on or near) the Pareto front, each initial point of the set is displaced by a respective linear combination of local ascent vectors (e.g., single objective ascent directions), wherein each linear combination can be defined by a respective set of coefficients (e.g., each coefficient of a set associated with a different local ascent vector), preferably wherein each such coefficients is greater than or equal to zero (e.g., as shown in
However, S200 can additionally or alternatively include determining any other suitable initial points in any suitable manner.
2.3 Determining the Final Point
Determining a final point S300 preferably functions to, for an initial point (e.g., for each initial point determined in S200, such as in separate performances of S300), search for a corresponding (e.g., nearby) final point (e.g., searching starting from the initial point). Each final point is preferably a point on or near the Pareto front. S300 preferably includes: determining an initial point S310; determining a set of local ascent vectors S320; determining an ascent direction S330; and determining an updated point S340 (e.g., as shown in
Determining an initial point S310 preferably functions to determine a point from which to start a search for a corresponding final point. The initial point can be chosen randomly, predetermined, determined based on historical data (e.g., wherein the initial point is a previously used point, such as corresponding to a previously used transmitter configuration), and/or selected in any other suitable manner. In some embodiments, S310 includes determining the initial point as described above regarding S200 (e.g., performing S200 to determine the initial point, such as performing the second embodiment of S200 using one or more previously-determined final points as the generation points, and/or performing the first embodiment of S200). However, S310 can additionally or alternatively include determining an initial point in any other suitable manner.
Determining a set of local ascent vectors S320 preferably functions to determine vectors in the search space along which one or more objective functions may be improved relative to the initial point. S320 preferably includes, for each objective function ƒi, determining a corresponding local ascent vector di from the initial point. The local ascent vector is preferably determined by performing a local optimum search (e.g., gradient-based algorithm such as gradient descent, conjugate gradient descent, etc.; gradient-free algorithm such as Nelder-Mead, adaptive meshing, etc.) based on the corresponding objective function (e.g., a search to optimize the corresponding objective function). The local search is preferably performed using a search algorithm for which the number of points (in the parameter space) for which the objective function must be evaluated (e.g., evaluated as described above regarding S100) is independent (or substantially independent) of the dimension of the search space (or, alternatively, for which the number of points increases sub-linearly with the number of dimensions of the search space). For example, the local search can be performed using a Nelder-Mead search algorithm. Alternatively, the search can be performed using a search algorithm for which the number of points evaluated increases linearly, substantially linearly, or super-linearly with the number of dimensions of the search space. Preferably, the local search is performed for a few iterations (e.g., for a threshold number of iterations, such as 1, 2, 3, 5, 10, 3-5, 5-10, 10-25, etc.; until a convergence criterion is achieved; etc.), but can alternatively be performed for any other suitable number of iterations. The local search preferably results in a local optimum {circumflex over (x)}i, wherein the local ascent vector di is defined as the direction from the initial point x0 to the local optimum (di={circumflex over (x)}i−x0). Alternatively, the local ascent vector can be determined using a gradient-based technique. For example, the gradient (with respect to the corresponding objective function) at or near x0 can be determined, wherein the local ascent vector is equal to the gradient. However, the local ascent vector can additionally or alternatively be determined in any other suitable manner.
The set of all local ascent vectors (preferably, one local ascent vector corresponding to each objective function) for an initial point can define an ascent cone. The set of all local ascent vectors is preferably a basis of the ascent cone, but can alternatively be any set of vectors that span the ascent cone (e.g., wherein some or all of the ascent cone spanning vectors are not linearly independent).
However, S320 can additionally or alternatively include determining any other suitable set of local ascent vectors in any suitable manner.
Determining an ascent direction S330 preferably functions to select an ascent direction from the ascent cone (e.g., determine a linear combination of the local ascent vectors). For N ascent vectors (e.g., corresponding to each of N objective functions), the ascent direction d can be defined as d=Σi=1Naidi, with ai>0 and Σi=1Nai=1.
In a first embodiment, S330 includes treating this ascent vector selection as another multi-objective optimization (an optimization sub-problem), wherein the objective functions of the sub-problem are equal to the rate of ascent of each objective function of the main optimization problem, and the search space is defined by (e.g., parameterized by) the coefficients of the linear combination of local ascent vectors (or, analogously, defined by the directions within the ascent cone). For example, solving the multi-objective optimization sub-problem can include iterating through coefficient value sets (including a value for each coefficient of the linear combination), wherein for each coefficient value set, the objective functions of the sub-problem are evaluated (preferably excluding any coefficient value set that does not result in a point that Pareto dominates the initial point x0).
In a second embodiment, the ascent direction is determined by solving a linear programming problem. In one example, for each k ∈{1, . . . , N}, the objective of the problem is to maximize ak, subject to the following constraints:
In this embodiment, determining the ascent direction includes solving the linear programming problem. The linear programming problem can be solved using one or more Simplex algorithms, criss-cross algorithms, interior point methods (e.g., path following methods, ellipsoid methods, Karmarkar's algorithm, Affine scaling methods, Mehrotra predictor-corrector method, etc.), column generation algorithms, and/or any other suitable linear programming approaches. If no non-degenerate solution (i.e., a solution in which at least one coefficient is non-zero) to the linear programming problem exists, then the initial point x0 is on the Pareto front, and so x0 is the final point. Otherwise, the solution to the linear programming problem defines the ascent direction as d=Σi=1Naidi. However, S330 can additionally or alternatively include determining the ascent direction in any other suitable manner.
Determining an updated point S340 preferably functions to determine a point near the initial point along the ascent direction. S340 preferably includes performing a line search along the ascent direction from the initial point x0, such that the updated point x1=x0+τd, wherein τ is varied over values greater than zero. The line search is preferably performed until a convergence threshold is reached, such as until x1 Pareto dominates x0. The line search can additionally or alternatively be performed until a number of iterations of the line search have been performed, until a derivative (e.g., derivative along the ascent direction, gradient, etc.) of an objective function (e.g., the objective function with the largest such derivative) is less than a threshold value, and/or until any other suitable criteria are satisfied. However, S340 can additionally or alternatively include determining the updated point in any other suitable manner.
Repeating elements of the search S350 preferably functions to iteratively approach the Pareto front (e.g., to iteratively find points closer to the Pareto front, as compared with the initial point and with points found in previous iterations), more preferably until the final point is determined. S350 can include iteratively repeating one or more elements of S300, using the updated point (e.g., determined in S340 of the previous iteration) in place of the initial point received in S310. S350 preferably includes iteratively repeating S320, S330, and S340, but can additionally or alternatively include repeating any other suitable set of elements of S300 (and/or performing any other suitable elements).
Preferably, S350 includes continuing to iterate until a convergence criterion is met. In a first example, the convergence criterion includes, in S330, failing to determine a non-degenerate ascent direction (i.e., non-zero vector), which can indicate that the updated point is on (or near) the Pareto front. Additionally or alternatively, the convergence criterion can include that one or more objective function values (e.g., all objective function values) are greater than a threshold amount (shared threshold amount, threshold amount specific to each objective function, etc.) The convergence criterion can additionally or alternatively include reaching a threshold cutoff limit, such as a limit on the number of iterations, a limit on the time elapsed performing S300, and/or a limit on any other suitable metrics. Once the convergence criterion is met, the updated point determined in the final iteration is preferably treated as the final point (i.e., wherein the final point determined by performing S300 is the updated point determined in the final iteration).
The method preferably includes performing S300 for each of the initial points (e.g., performed consecutively, concurrently, at different times, and/or with any other suitable timing) to determine a corresponding final point (e.g., in the manner described above). In some examples, the method can include using one or more of the final points determined in S300 as generation points for additional performances of S200, preferably wherein S300 is then performed using one or more resulting initial points from the additional performance(s) of S200 (preferably, using each resulting initial point). For example, the method can include: performing S200 (e.g., the first embodiment of S200) to generate a first set of initial points; performing S300 for each initial point of the first set, thereby generating a first set of final points; performing S200 based on the first set of final points (e.g., performing the second embodiment of S200 using one or more final points of the first set as generation points, preferably using each final point of the first set) to generate a second set of initial points; and performing S300 for each initial point of the second set, thereby generating a second set of final points (e.g., wherein all the final points of the first and second sets, or a subset thereof, can be provided as final points, preferably representing points on or near the Pareto front). However, the method can additionally or alternatively include performing S300 to determine any other suitable final points in any suitable manner, and/or the method can additionally or alternatively include any other suitable elements performed in any suitable manner.
An alternative embodiment preferably implements the some or all of above methods in a computer-readable medium storing computer-readable instructions. The instructions are preferably executed by computer-executable components preferably integrated with a communication routing system. The communication routing system may include a communication system, routing system and a pricing system. The computer-readable medium may be stored on any suitable computer readable media such as RAMs, ROMs, flash memory, EEPROMs, optical devices (CD or DVD), hard drives, floppy drives, or any suitable device. The computer-executable component is preferably a processor but the instructions may alternatively or additionally be executed by any suitable dedicated hardware device.
Although omitted for conciseness, embodiments of the system and/or method can include every combination and permutation of the various system components and the various method processes, wherein one or more instances of the method and/or processes described herein can be performed asynchronously (e.g., sequentially), concurrently (e.g., in parallel), or in any other suitable order by and/or using one or more instances of the systems, elements, and/or entities described herein.
The FIGURES illustrate the architecture, functionality and operation of possible implementations of systems, methods and computer program products according to preferred embodiments, example configurations, and variations thereof. In this regard, each block in the flowchart or block diagrams may represent a module, segment, step, or portion of code, which comprises one or more executable instructions for implementing the specified logical function(s). It should also be noted that, in some alternative implementations, the functions noted in the block can occur out of the order noted in the FIGURES. For example, two blocks shown in succession may, in fact, be executed substantially concurrently, or the blocks may sometimes be executed in the reverse order, depending upon the functionality involved. It will also be noted that each block of the block diagrams and/or flowchart illustration, and combinations of blocks in the block diagrams and/or flowchart illustration, can be implemented by special purpose hardware-based systems that perform the specified functions or acts, or combinations of special purpose hardware and computer instructions.
As a person skilled in the art will recognize from the previous detailed description and from the figures and claims, modifications and changes can be made to the preferred embodiments of the invention without departing from the scope of this invention defined in the following claims.
This application is a continuation of U.S. patent application Ser. No. 16/698,196, filed 27-Nov.-2019, which claims the benefit of U.S. Provisional Application Ser. No. 62/773,935, filed on 30-Nov.-2018, and of U.S. Provisional Application Ser. No. 62/888,817, filed on 19-Aug.-2019, each of which is incorporated in its entirety by this reference.
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Child | 16899473 | US |