None.
Not Applicable.
This invention relates to traction control of railroad locomotives; and more particularly, to a system and method of enhancing locomotive adhesion control using creep and adhesion measurements of all the axles, and the proximity of an axle to each of the other axles to affect the adhesion of each individual axle.
Railroad locomotives must provide a great degree of traction under a wide range of rail conditions; i.e., dry, wet, icy, oily. Generating the maximum tractive effort of a locomotive, or a consist of locomotives, produces the most efficient and effective operation of the train. Developing the maximum tractive effort by a locomotive requires that each axle of the locomotive, which includes the traction motor and wheels associated with the axle, develops its maximum tractive effort.
In a moving train, developing the maximum tractive effort by each axle is a dynamic function dependent upon a number of factors some of which can be controlled, and some of which cannot. Among the latter are rail conditions. It will be appreciated by those skilled in the art that tractive effort is limited by the amount of contact friction between the wheels of the locomotive and the patch of rail over which the wheels are passing at any given moment. This amount of friction, in turn, depends such factors as the presence of contaminants (oil, or lubricants such as sand) on the rail or wheel, the shape (roundness) of the wheel, the shape of the rail, atmospheric temperature, and the normal force or weight imposed on an axle, among others.
Referring to
Creep is defined as follows:
In U.S. Pat. No. 6,163,121 which is assigned to the same assignee as the present application, there is described a method and traction control system for a locomotive which separately controls the allowable creep level of each axle; i.e., the axles A1–A6 in
A problem with current control systems is their response time to a change in road conditions. This time can be in excess of ten seconds between a change in rail conditions and the resulting system response to change traction motor operation to produce the maximum tractive effort for these new conditions. Accordingly, in a moving train, rail conditions may change significantly between a change in conditions is sensed and the system reacts to produce the maximum tractive effort for previous rail conditions.
Regardless of how torque control is applied; i.e., on a per axle, per set of axles, or per locomotive basis, adhesion control systems typically measure, directly or indirectly, the speed of each wheel together with the speed of the locomotive. Wheel speed and mathematical derivatives of wheel speed are then used, together with the measured or calculated locomotive speed, to adjust the amount of torque applied.
Referring to
In
Axles A1–A6 on locomotive V travel over the rails R in a sequential fashion. The condition of rail R and the adhesion curves such as those in
Briefly stated, the present invention is directed to a traction control system for a railroad locomotive to reduce the response time to changed operating conditions so to maintain the locomotive's tractive effort at a maximum level. The system achieves this by determining when an axle is producing at or near its maximum tractive effort for existing rail conditions and then advising the traction motors of other axles so they can more rapidly adjust their operations to produce the maximum tractive effort of their associated axles for those conditions. The system operates dynamically so too also rapidly respond to sensed changes in rail conditions.
The system utilizes quality of adhesion information (which includes creep, tractive effort, torque, etc.) obtained for each axle mounted on a truck, to improve the overall tractive effort of all the axles mounted on the locomotive. The system utilizes this adhesion quality information, and axle proximity information to influence overall locomotive adhesion to the set of rails over which the locomotive is traveling and thereby dynamically control the tractive capabilities of the locomotive. The invention operates on multiple levels: i.e., axle to axle; truck to truck; locomotive to locomotive (in a multiple locomotive consist); and, train to train (where one train passes over the same set of rails as the next train).
In the method of the invention, a creep control signal is provided to a traction controller for each axle to move the locomotive over the rails, the creep control signal being a function of adhesion control or performance characteristics for that axle. A coupled creep control signal whose signal characteristics are a function of the performance characteristics of each of the other axles influences or “advises” the creep control signal, this being done to achieve maximum tractive effort from each respective axle and to decrease the response time in which each axle reaches its maximum tractive effort when rail conditions change. The coupled creep control signal is a function of the adhesion operation of each axle, as well as the proximity of the respective axle to each of the other axles. Tractive effort and creep inputs from each of the axles are combined to create a matrix of coupled creep control values with the coupled creep control signal supplied for each particular axle being derived from this matrix of values. The information used in the matrix includes not only current information, but historical data as well. The information can be geographically specific (since rails and rail conditions differ by locale) and time specific (since rail conditions may differ from one time of the year to another).
Advantages of the traction control system include estimating the optimal creep for each axle, creep limits for each axle based upon what is happening with the other axles, quick response to large changes in rail surface friction, reduction in creep measurement errors, and better response to transient rail conditions.
The foregoing and other objects, features, and advantages of the invention as well as presently preferred embodiments thereof will become more apparent from the reading of the following description in connection with the accompanying drawings.
In the accompanying drawings which form part of the specification:
Corresponding reference numerals indicate corresponding parts throughout the several figures of the drawings.
The following detailed description illustrates the invention by way of example and not by way of limitation. The description clearly enables one skilled in the art to make and use the invention, describes several embodiments, adaptations, variations, alternatives, and uses of the invention, including what is presently believed to be the best mode of carrying out the invention.
Referring to the drawings, as previously described with respect to
Each tractive effort maximizer TEM1–TEM6 incorporates a control logic that “searches” for the maximum tractive effort for the individual axle. The maximizer does this by adjusting the amount of creep present at the wheel W-rail R interface. One equation employed by a tractive effort maximizer TEM1–TEM6 to accomplish this is:
Creeplimit=previous creeplimit+Δt×sign(m)×(crpmax−crpmin)×K1 (Eq.1)
where,
Δt is a predetermined time interval for a discrete controller (not shown) of the tractive effort maximizer;
m is a control signal indicating the measured (or estimated) slope of an adhesion curve;
crp_max and crp_min are respective upper and lower limits on the range of creep movement for a slope m; and,
K1 is a gain (i.e., proportionality) factor controlling the rate at which the creep limit moves for a given slope m.
In prior art control systems such as taught by the U.S. Pat. No. 6,163,121, the creep limit factor is maintained at a substantially constant level. For an adhesion curve such as those shown in
In accordance with the present invention, Eq. 1 is now augmented to incorporate a control effort provided by an algorithm exercised by coupled creep control unit 12. This is achieved by including a creep rate term cccn (where n=axle number), and providing an output from control unit 12 to the tractive effort maximizer TEM for each axle. The resulting output is determined, for example, from Eq. 2., as follows:
Creeplimit=previous creeplimit+Δt×(K1×m×(crpmax−crpmin)+cccn) (Eq. 2)
Referring to
Importantly, and as shown in
As described herein, the system and method of the invention utilize adhesion quality information (including, but not limited to, tractive effort, torque, and creep information) about an axle on the locomotive, and similar information about at least one other axle. This other axle can be on the same truck or one of the other trucks of the locomotive. However, it can be an axle on another locomotive in the consist, or an axle on a locomotive of another consist. In accordance with the invention, values representative of the adhesion quality of at least these two axles are combined to produce a signal which is supplied to the controller TMTC driving the axle on the locomotive to maximize the tractive effort of the axle. The adhesion information is used to maximize the tractive effort of each axle of the locomotive and to reduce the response time needed for an axle to re-attain its maximum tractive effort in response to changed rail conditions.
Static and dynamic weight shifts within truck K1 or K2, and locomotive V, will result in a different normal force for each axle. These force differences are compensated for by calculating the amount of adhesion for an axle (with calculated adhesion values then being used), rather than outputs from the tractive effort maximizer TEM for that axle. As shown in
adh—n=te—n/weight—n (Eq. 3)
The resulting adhesion vector values for each axle are now supplied as inputs to control unit 12. Referring to
Further with respect to the application of Eq. 2, adhesion curves are shown in
In
In addition to the algorithm employed by control unit 12, as set forth in Eq. 2, other factors are also addresses by the control unit in producing outputs to the respective tractive effort maximizers. The first of these factors relates to large signal limits on creep changes. This situation arises because, while the level of creep associated with maximum adhesion is not the same for all axles, the difference in optimal creep levels is bounded, and can be estimated. This enables control unit 12 to account for the creep levels of axles with significantly higher tractive efforts than other axles, so to influence the creep levels of these other axles.
A second factor relates to the amount of adhesion of which an axle is capable. If a relationship between optimal creep levels for a sequential set of axles (A1–A3, or A4–A6) can be established (either through empirical or analytical means), then the creep limit of each axle is partially influenced by the creep limit of the other axles. This relationship can also be based on previous locomotive performance, including performance of other locomotives. It will be understood by those skilled in the art that locomotives of a similar type or model should exhibit common characteristics with other locomotives of the same class. This relationship could further be modeled based on the particular track, position in the track, and rail conditions including weather (all of which could be obtained from way side, on-board GPS and track maps), and the position of the locomotive in the train as noted with respect to
The above relationship(s) is important because it prevents one axle from drifting into a low tractive effort, extreme creep region. This could occur, for example, with trailing truck K2 on locomotive V, where wheel rail cleaning and weight transfer creates an expectation of a tractive effort increase on axles A4 to A6, as the creep on these axles is reduced. If the tractive effort of axle A5, for example, then turns out to be less than that of axle A4, the result would be for the creep level of axle A5 to migrate toward that of axle A4. The same effect will also occur with respect to the creep level of axle A6 migrating toward that of axle A5.
A third factor is the response to significant changes in friction when a transport lag scheduled control effect occurs. An important advantage of adhesion control system 10 is its rapid response to the application of a lubricant by a wayside lubricator and the resultant immediate and sizeable reduction in rail surface friction that occurs. Since the lubrication is typically applied as locomotive V reaches the lubricator, lead axle A1 will first experience the resulting change in friction when the wayside lubricant is applied to rail R. In accordance with the invention, adhesion control system 10 reacts by increasing the magnitude of the creep level signals to the maximizers TEM1–TEM6, and by having sand applied to the rails in front of the wheels by a sand applicator SA (see
An important advantage of adhesion control system 10 is that by use of coupled creep control, the level of creep for one axle is now influenced by the level of creep for the other locomotive axles so to provide a unified or integrated axle creep control which further serves to reduce response time to changed conditions. The result is that in a six axle locomotive such as locomotive V, the adhesion of each axle is maximized and the creep level determined for each axle is optimal for the operating conditions currently being experienced by all the axles. This is because control unit 12 is responsive to information relating to all of the axles and integrates this information so the overall tractive effort attained through maximizer TEM1–TEM6 provides for the most efficient operation under the prevailing circumstances. Since the rail conditions vary from one moment to the next, adhesion control system 10 provides for dynamic creep control, and hence the dynamic traction capabilities of locomotive V.
The maximizer function can be erroneous for a number of reasons including:
In operation, adhesion control system 10 effectively enables each tractive effort maximizer TEM1–TEM6 to provide creep “advice” to the five axles it does not control. This advice is weighted advice, and the amount of influence it has is a function of the following factors:
a) axles displaying the highest level of “normalized adhesion” characteristics are “trusted” most. Normalized adhesion means each axle's adhesion relative to its expected adhesion. Expected adhesion is, in turn, based upon the adhesion of the other five axles (of a six axle locomotive V), and the location of the particular axle on the locomotive.
b) the influence of the creep level of one axle to that of another axle, diminishes as the distance between the two axles increases. An axle adjacent to another axle will have more influence on the creep level of the adjacent axle than when the axles are at opposite ends of the locomotive. This is because of the increasing uncertainty of rail conditions between the respective axles.
Again, the overall effect is to reduce response time to changing conditions to maintain maximum tractive effort.
Before the creep level of one axle is used to influence that of another axle, the creep level value is first normalized. Referring to
A second input to EAC calculator 22 is a rail condition status vector. This input provides information such as, for example, which axles are being sanded. This information includes the time at which each axle experiences these changes. For example, a condition effecting by axle A1 will then be experienced by axle A2 sooner if locomotive V is traveling at high speed rather than at low speed. This is important because it affects expected adhesion ratios.
A creep advice qualifier (CAQ) 24 determines the quality of the creep advice provided by one axle for use by another axle. The quality of advice is typically rated higher if the normalized adhesion (actual adhesion to expected adhesion) developed by the one axle is greater than that developed by the other axle. This means that the axle with the greater normalized adhesion value is performing better than the other axle; and, the other axle is, in effect, advised to use the creep advice provided by the axle with the higher normalized adhesion value. Conversely, if the axle is performing significantly worse than the other axle is, it would be advisable for the one axle to use the opposite sense of the creep advice provided by that axle.
Additionally, the relative proximity of the two axles also influences the quality of the creep advice. If the axles are adjacent axles, the advice provided by the one axle to the other is generally rated higher than if the axles are more separated, assuming other factors are equal.
One method for determining the quality of the advice provided by one axle to the other is set forth in general, and as an illustration, in Eq. 4 as follows:
Where,
y and z are the axles under consideration;
q_adh_y_z is the quality of the creep advice provided by an axle y to an axle z based upon their relative normalized adhesion ratios and is calculated in accordance with Eq. 5 below;
q_prox y_z represents the quality of advice as a function of the proximity of the two axles and is calculated in accordance with Eq. 6 below; and,
q_max is an upper limit for the magnitude of the result.
The second line of the above equation provides the example of its use.
As noted above, the quality of creep advice provided by an axle y to an axle z is based upon their relative normalized adhesion ratios and is calculated, in general and as an illustration, from Eq. 5 as follows:
where,
a and K3 effect the degree to which normalized adhesion ratios for the axles influence the quality of advise from the one axle to the other, q_adh_min is a minimum value. Again, the second line of the equation provides an example of its use.
As further noted above, the proximity effect may be determined, in general and as an illustration, as follows using Eq. 6 as:
where,
P represents the amount of influence one axle's creep value has on another axle based upon the proximity of the two axles. If y=z, then q_prox_y_z=0.
Again, even though the creep advise is given by axles which are performing better compared to what is expected, it is also possible to give negative advise by axles performing poorly.
Referring again to
Next,
A creep advice integrator (CAI) 28 has as inputs values representing the proximity quality matrix shown in
where,
ccc_quality_y_z is the quality of the creep advice from axle y for axle z;
crp_y_z is the creep advice from axle y for axle z;
crp_y is a creep set point for axle y;
crp_max_y is a maximum creep limit set by the tractive effort maximizer TEM1–TEM6 function for axle y;
crp_max_y is a minimum creep limit set by the tractive effort maximizer TEM1-TEM6 function for axle y; and,
Ky-z is a fixed or controlled gain factor that controls the strength of the CCC algorithm.
Finally,
In view of the above, it will be seen that the several objects of the invention are achieved and other advantageous results are obtained. As various changes could be made in the above constructions without departing from the scope of the invention, it is intended that all matter contained in the above description or shown in the accompanying drawings shall be interpreted as illustrative and not in a limiting sense.
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