CN115128957A - Heavy-duty train operation control method based on iterative learning - Google Patents

Heavy-duty train operation control method based on iterative learning Download PDF

Info

Publication number
CN115128957A
CN115128957A CN202210857419.3A CN202210857419A CN115128957A CN 115128957 A CN115128957 A CN 115128957A CN 202210857419 A CN202210857419 A CN 202210857419A CN 115128957 A CN115128957 A CN 115128957A
Authority
CN
China
Prior art keywords
train
control
error
heavy
representing
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Granted
Application number
CN202210857419.3A
Other languages
Chinese (zh)
Other versions
CN115128957B (en
Inventor
孙鹏飞
张传鑫
王青元
魏咪
王开云
凌亮
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Southwest Jiaotong University
Original Assignee
Southwest Jiaotong University
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Southwest Jiaotong University filed Critical Southwest Jiaotong University
Priority to CN202210857419.3A priority Critical patent/CN115128957B/en
Publication of CN115128957A publication Critical patent/CN115128957A/en
Application granted granted Critical
Publication of CN115128957B publication Critical patent/CN115128957B/en
Active legal-status Critical Current
Anticipated expiration legal-status Critical

Links

Images

Classifications

    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B13/00Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion
    • G05B13/02Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric
    • G05B13/04Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators
    • G05B13/042Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators in which a parameter or coefficient is automatically adjusted to optimise the performance
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02TCLIMATE CHANGE MITIGATION TECHNOLOGIES RELATED TO TRANSPORTATION
    • Y02T10/00Road transport of goods or passengers
    • Y02T10/10Internal combustion engine [ICE] based vehicles
    • Y02T10/40Engine management systems

Landscapes

  • Engineering & Computer Science (AREA)
  • Health & Medical Sciences (AREA)
  • Artificial Intelligence (AREA)
  • Computer Vision & Pattern Recognition (AREA)
  • Evolutionary Computation (AREA)
  • Medical Informatics (AREA)
  • Software Systems (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Automation & Control Theory (AREA)
  • Feedback Control In General (AREA)

Abstract

The invention discloses a heavy-duty train operation control method based on iterative learning, which comprises the following steps of: s1: setting an ideal running speed and an ideal planning position of the train; s2: determining a speed state error, a position state error and a coupler clearance error of the train; s3: acquiring historical level data of the train, and determining a control level according to the historical level data; s4: constructing an iteration control model, and optimizing the control level by using the iteration control model to obtain an optimal control level; s5: and controlling the train by using the optimal control level, updating the actual running speed and the actual running position of the train, judging whether the train reaches the end point, if so, ending the heavy-load train running control, otherwise, returning to the step S2 until the train reaches the end point. The invention provides an iterative learning control method suitable for heavy-duty train operation control, which is used for fully utilizing historical repeated data so as to improve the heavy-duty train operation control precision.

Description

Heavy-duty train operation control method based on iterative learning
Technical Field
The invention belongs to the technical field of heavy-duty train control, and particularly relates to a heavy-duty train operation control method based on iterative learning.
Background
Heavy-duty trains have become a popular transportation mode due to their large capacity, low cost, and high efficiency. With the gradual expansion of the running scale of the heavy-duty train and the increase of the vehicle-mounted weight, the increase of the number of the carriages and the increase of the length of the train, the caused excessive longitudinal impact force is a main factor causing great difficulty in the operation of the heavy-duty train. Therefore, the heavy-duty train is difficult to realize rapid and accurate tracking control, and even accidents such as hook breaking and derailment are caused by large coupler force between trains. Therefore, it is necessary to construct a more accurate longitudinal dynamics model and design a controller with higher accuracy to improve the operation control performance of the heavy-duty train.
Trains are typically operated periodically according to a given speed profile according to a schedule established by the railroad department. The heavy-duty train has the characteristics of repeatability of line conditions, periodicity of wheel rotation, similarity of running environments of a plurality of trains in a short time, invariance of a train kinematic model, consistency of vehicle characteristics and the like in the freight special line running process. The driver manually operates the train according to personal experience, which may result in a low control accuracy. Aiming at the problems, the repeatability of the system is effectively utilized by using iterative learning control for realizing rapid and high-precision tracking, and the model parameters and model uncertainty of the system are solved. The iterative learning control which is essentially model-free is suitable for a nonlinear control system like train control. The method is not applied to the heavy-load train with highly coupled and complex interior. Therefore, an iterative learning control method suitable for heavy-duty train operation control is provided.
A train of two-thousand-ton heavy-duty trains consists of a plurality of locomotives and two hundred or more trailers, and under the condition of considering longitudinal impulse among carriages, the limited control quantity is difficult to simultaneously ensure that the serial coupling force among multiple carriages of an overlong and overweight marshalling meets the safety requirement. The too high order and the nonlinearity of the model make it difficult to combine the feedback control mode to control the multi-particle operation of the heavy-duty train. Therefore, the iterative learning control method based on the multi-quality-point model has theoretical research value for the operation control of the heavy-duty train. In the heavy-duty train operation control process, accurate modeling is difficult, various uncertain complex disturbances exist, the disturbances include repetitive disturbances caused by high repetition of train operation characteristics, and non-repetitive disturbances caused by inconsistent operation conditions. Iterative learning can well utilize repetitive information in a system and realize whole-process tracking control, and model prediction control can timely and dynamically respond to non-repetitive disturbance. The model predictive control has efficient dynamic control performance, including predictive model, roll optimization and feedback correction. The model prediction control can timely make up uncertainty caused by factors such as model mismatch, distortion and interference. Therefore, the heavy-load train feedback control method based on the model prediction control method has an application prospect.
In conclusion, the tracking control of the heavy-duty train is a comprehensive and complex problem, wherein both the model prediction control and the iterative learning control have advantages and disadvantages. Therefore, the invention provides the improved iterative learning model predictive control heavy-load train operation control method with better tracking performance by combining the model predictive control and the iterative learning.
Disclosure of Invention
The invention aims to solve the problem that a multi-mass-point model in the existing feedback control method is difficult to apply to a heavy-duty train, and provides a heavy-duty train operation control method based on iterative learning.
The technical scheme of the invention is as follows: a heavy-duty train operation control method based on iterative learning comprises the following steps:
s1: setting an ideal running speed and an ideal planning position of the train;
s2: acquiring the actual running speed and the actual running position of the train, and determining the speed state error, the position state error and the coupler clearance error of the train according to the ideal running speed and the ideal planning position of the train and the actual running speed and the actual running position of the train;
s3: acquiring historical level data of the train, and determining a control level according to the historical level data;
s4: constructing an iteration control model, and optimizing the control level by using the iteration control model to obtain an optimal control level;
s5: and controlling the train by using the optimal control level, updating the actual running speed and the actual running position of the train, judging whether the train reaches the end point, if so, ending the heavy-load train running control, otherwise, returning to the step S2 until the train reaches the end point.
Further, in step S2, the speed state error of the vehicle compartment i
Figure BDA0003755896790000021
Error in position state
Figure BDA0003755896790000022
Clearance error of car coupler
Figure BDA0003755896790000023
The calculation formulas of (A) and (B) are respectively as follows:
Figure BDA0003755896790000024
Figure BDA0003755896790000025
Figure BDA0003755896790000026
wherein v is r (t) is the target speed of the first car at time t, v i (t) is the actual speed of the car i at time t, s r (t) is the target position of the first carriage at the time t; s i (t) is the actual position of the car i at time t, s i+1 (t) is the actual position of the car i +1 at time t; l i When the expansion and contraction state of the buffer of all the trains is zero, the distance between the carriage i and the first carriage is l i+1 When the expansion and contraction state of the buffer of all the trains is zero, the distance between the carriage i +1 and the first carriage,
Figure BDA0003755896790000027
is the position state error of the vehicle compartment i + 1.
Further, step S4 includes the following sub-steps:
s41: constructing an error state space expression;
s42: discretizing an error state space expression and constructing a target function of a fixed time domain;
s43: calculating a minimum optimal solution of an objective function of a fixed time domain;
s44: constructing an iterative control model according to the minimum optimal solution of the objective function of the fixed time domain;
s45: and optimizing the control level by using the iterative control model to obtain the optimal control level.
Further, in step S41, the error state space expression is:
Figure BDA0003755896790000031
Y(t)=Ce(t)
wherein the content of the first and second substances,
Figure BDA0003755896790000032
representing the derivative of velocity with position, y (t) representing the output state, a representing the first coefficient matrix, B representing the second coefficient matrix, C representing the third coefficient matrix, e (t) representing the error state vector, Δ u (t) representing the error control vector, w' (t) representing the process noise.
Further, in step S42, the expression of the objective function J in the fixed time domain is:
Figure BDA0003755896790000033
wherein T represents the predicted time, N represents the number of vehicles, k v Representing the velocity weight, k s Representing the position weight, k x The weight of the inter-vehicle distance is represented,
Figure BDA0003755896790000034
the speed difference of the vehicle compartment i is indicated,
Figure BDA0003755896790000035
indicating the error in the positional state of the vehicle compartment i,
Figure BDA0003755896790000036
the error indicates the position state of the vehicle i +1, Δ u (j) indicates the change in force at time j, and R indicates the control force change coefficient.
Further, in step S43, the equation for calculating the minimum optimal solution Δ u of the objective function in the fixed time domain is as follows:
Δu=-(R+B T PB) -1 B T PAe(k)=-Ke(k)
wherein A represents a first coefficient matrix, B represents a second coefficient matrix, K represents a state feedback gain matrix, R represents a control force variation coefficient, P represents a symmetric positive definite constant matrix, and e (K) represents an error state vector.
Further, in step S44, the iterative control model u k The expression of (t) is:
Figure BDA0003755896790000037
Figure BDA0003755896790000038
Figure BDA0003755896790000039
wherein the content of the first and second substances,
Figure BDA00037558967900000310
the model is represented as a predictive control increment,
Figure BDA00037558967900000311
representing the iterative learning rate, A representing the first coefficient momentArray, B denotes a matrix of second coefficients, k m Representing model predictive control gain weights, R representing control force variation coefficients, P representing a symmetric positive definite constant matrix, e k (t) represents the error state vector at time t in the kth iteration,
Figure BDA00037558967900000312
represents the last iterative learning rate, alpha represents the current iterative error and the last iterative error weight, gamma represents the learning gain,
Figure BDA00037558967900000313
representing the error state vector at time t in the (k-1) th iteration,
Figure BDA00037558967900000314
representing the derivative of the error state vector at time t in the kth iteration.
The invention has the beneficial effects that:
(1) the invention provides an iterative learning control method suitable for heavy-duty train operation control, which is used for fully utilizing historical repeated data so as to improve the heavy-duty train operation control precision;
(2) the heavy-duty train operation control method based on the multi-mass-point model is beneficial to reducing the longitudinal impulse of the train and ensuring the safe and stable operation of the heavy-duty train;
(3) by the controller integrating model predictive control and iterative learning design, the method can also help to inhibit the influence of non-repetitive disturbance and improve the accuracy and reliability of control.
Drawings
FIG. 1 is a flow chart of a method for controlling the operation of a heavy haul train;
FIG. 2 is a schematic diagram of an application of the heavy haul train operation control method;
fig. 3 is a diagram of a controller architecture based on improved iterative learning model predictive control.
Detailed Description
The embodiments of the present invention will be further described with reference to the accompanying drawings.
As shown in fig. 1, the invention provides a heavy haul train operation control method based on iterative learning, which comprises the following steps:
s1: setting an ideal running speed and an ideal planning position of the train;
s2: acquiring the actual running speed and the actual running position of the train, and determining the speed state error, the position state error and the coupler clearance error of the train according to the ideal running speed and the ideal planning position of the train and the actual running speed and the actual running position of the train;
s3: obtaining historical level data of the train, and determining a control level according to the historical level data;
the control quantity exists in the form of continuous force and needs to be converted into a discrete level control mode to operate the heavy-duty train. In order to avoid reducing the passenger's riding experience due to frequent level switching, it is necessary to output an appropriate control level according to the historical level data.
S4: constructing an iteration control model, and optimizing the control level by using the iteration control model to obtain an optimal control level;
s5: and controlling the train by using the optimal control level, updating the actual running speed and the actual running position of the train, judging whether the train reaches the terminal, if so, ending the heavy-duty train running control, and otherwise, returning to the step S2 until the train reaches the terminal.
As shown in FIG. 2 and FIG. 3, the controller is used for heavy-duty train trajectory tracking and is based on improved iterative learning model predictive control, the input of the controller is the tracking state error of the train, and the controlled variable is obtained after the output of the model predictive controller and the iterative learning law is weighted.
And (3) state error: the train tracks the difference between the desired speed, position and the actual speed, position of the train.
Train operating speed, position tracking expectation: and calculating an ideal speed and position curve according to parameters such as train characteristics, line characteristics and the like of the ideal train model.
An ideal train model: and obtaining an ideal train model by train design parameters.
Tracking a speed curve: because the actual train has a certain deviation from the ideal train model, the deviation occurs when the train runs according to the train level planned by the ideal running curve, so the control is carried out to adjust the actual running speed curve of the train to be close to the planned speed curve of the train as much as possible, namely the train speed curve tracking.
Level: the handle level is used for controlling the train to drag or brake.
In the embodiment of the present invention, the objective of the running control is to find an appropriate control amount to make the output state approach the ideal output and eliminate the consistency error in step S2. The speed difference of adjacent cars and the position difference of the buffer are main influence indexes influencing coupler force. In order to reduce the risk of unhooking and unhooking of a heavy-duty train caused by excessive coupler force, the speeds of adjacent carriages need to be kept consistent and the telescopic state of a buffer needs to be kept to be zero as much as possible. Speed state error of car i
Figure BDA0003755896790000051
Error in position state
Figure BDA0003755896790000052
Clearance error of car coupler
Figure BDA0003755896790000053
The calculation formulas of (A) and (B) are respectively as follows:
Figure BDA0003755896790000054
Figure BDA0003755896790000055
Figure BDA0003755896790000056
wherein v is r (t) is the target speed of the head car at time t, v i (t) is the actual speed of car i at time t,s r (t) is the target position of the first carriage at time t; s i (t) is the actual position of the car i at time t, s i+1 (t) is the actual position of the car i +1 at time t; l i When the expansion and contraction state of the buffer of all the trains is zero, the distance between the carriage i and the first carriage is l i+1 When the expansion and contraction state of the buffer of all the trains is zero, the distance between the carriage i +1 and the first carriage,
Figure BDA0003755896790000057
is the position state error of the vehicle compartment i + 1.
In the embodiment of the present invention, step S4 includes the following sub-steps:
s41: constructing an error state space expression;
s42: discretizing an error state space expression and constructing a target function of a fixed time domain;
s43: calculating a minimum optimal solution of the target function of the fixed time domain;
s44: constructing an iterative control model according to the minimum optimal solution of the objective function of the fixed time domain;
s45: and optimizing the control level by using the iteration control model to obtain the optimal control level.
In the embodiment of the invention, in step S41, in order to solve the problem that the multi-mass-point model in the existing feedback control method is difficult to apply to a heavy-duty train, the integral of the speed states and the position states of all vehicles is used as a performance index, and the performance index is converted into a linear quadratic optimal control problem based on a model predictive control framework. In order to construct a quadratic performance index conveniently, an error state space expression is constructed as follows:
Figure BDA0003755896790000061
Y(t)=Ce(t)
wherein the content of the first and second substances,
Figure BDA0003755896790000062
representing the derivative of velocity with position, y (t) representing the output state,a denotes a first coefficient matrix, B denotes a second coefficient matrix, C denotes a third coefficient matrix, e (t) denotes an error state vector, Δ u (t) denotes an error control vector, and w' (t) denotes process noise.
In the embodiment of the present invention, in step S42, in the heavy-duty train operation control, the accuracy of train tracking is improved and the coupler force is reduced by tracking the target speed and the target position of each vehicle. Discretizing the state equation of the continuous time domain, and constructing an expression of an objective function J of the fixed time domain as follows:
Figure BDA0003755896790000063
wherein T represents the predicted time, N represents the number of vehicles, k v Representing the velocity weight, k s Representing the position weight, k x The weight of the inter-vehicle distance is represented,
Figure BDA0003755896790000064
the speed difference of the vehicle compartment i is indicated,
Figure BDA0003755896790000065
indicating the error in the positional state of the vehicle compartment i,
Figure BDA0003755896790000066
the error indicates the position state of the vehicle i +1, Δ u (j) indicates the change in force at time j, and R indicates the control force change coefficient.
In the embodiment of the present invention, in step S43, the calculation formula of the minimum optimal solution Δ u of the objective function in the fixed time domain is as follows:
Δu=-(R+B T PB) -1 B T PAe(k)=-Ke(k)
wherein A represents a first coefficient matrix, B represents a second coefficient matrix, K represents a state feedback gain matrix, R represents a control force variation coefficient, P represents a symmetric positive definite constant matrix, and e (K) represents an error state vector.
In step S44, the iterative learning model predictive control law is determined by the iterative learning rate
Figure BDA0003755896790000067
And model predictive control increments
Figure BDA0003755896790000068
The iterative learning and the model predictive control are mutually independent, so that the feedback control quantity generated by the model predictive control is not used as the experience information of the next iteration of the iterative learning, and the model u is controlled by the iterative control k The expression of (t) is:
Figure BDA0003755896790000069
Figure BDA00037558967900000610
Figure BDA00037558967900000611
Γ(t)C(t)B(t)=k l (R+B T PB) -1 B T PACB
wherein the content of the first and second substances,
Figure BDA00037558967900000612
the model is represented as a predictive control increment,
Figure BDA00037558967900000613
represents the iterative learning rate, A represents the first coefficient matrix, B represents the second coefficient matrix, k m Representing model predictive control gain weights, R representing control force variation coefficients, P representing a symmetric positive definite constant matrix, e k (t) represents the error state vector at time t in the kth iteration,
Figure BDA0003755896790000071
represents the last iterative learning rate, alpha represents the current iterative error and the last iterative error weight, gamma represents the learning gain,
Figure BDA0003755896790000072
representing the error state vector at time t in the (k-1) th iteration,
Figure BDA0003755896790000073
representing the derivative of the error state vector at time t in the kth iteration.
The model prediction control and the quadratic optimal control both adopt a performance index control method taking a quadratic function as integral. The quadratic optimal solution is an essential condition for gradually stabilizing the closed-loop system, so that the model predicts the control increment
Figure BDA0003755896790000074
The design is as follows:
Figure BDA0003755896790000075
the open-close loop iterative learning control algorithm is designed according to the error of the current iteration and the last iteration error. And the last iteration learning rate is adopted
Figure BDA0003755896790000076
Instead of the last control force u k-1 (t), which ensures the independence of iterative learning from model predictive control. And an iterative learning control method suitable for the heavy-duty train is designed based on quadratic optimal control.
The working principle and the process of the invention are as follows: iterative learning can well utilize the system operation repeatability characteristics of the heavy-duty train and realize whole-course tracking control, and model prediction control can timely and dynamically respond to non-repeatability disturbance, so the invention provides an improved iterative learning model prediction control method suitable for the heavy-duty train, thereby improving the accurate tracking control of the heavy-duty train and relieving longitudinal impulse.
The invention has the beneficial effects that:
(1) the invention provides an iterative learning control method suitable for heavy-duty train operation control, which is used for fully utilizing historical repeated data so as to improve the heavy-duty train operation control precision;
(2) the heavy-duty train operation control method based on the multi-mass-point model is beneficial to reducing the longitudinal impulse of the train and ensuring the safe and stable operation of the heavy-duty train;
(3) by the controller integrating model predictive control and iterative learning design, the method can also help to inhibit the influence of non-repetitive disturbance and improve the accuracy and reliability of control.
It will be appreciated by those of ordinary skill in the art that the embodiments described herein are intended to assist the reader in understanding the principles of the invention and are to be construed as being without limitation to such specifically recited embodiments and examples. Those skilled in the art, having the benefit of this disclosure, may effect numerous modifications thereto and changes may be made without departing from the scope of the invention in its aspects.

Claims (7)

1. A heavy-duty train operation control method based on iterative learning is characterized by comprising the following steps:
s1: setting an ideal running speed and an ideal planning position of the train;
s2: acquiring the actual running speed and the actual running position of the train, and determining the speed state error, the position state error and the coupler clearance error of the train according to the ideal running speed and the ideal planning position of the train and the actual running speed and the actual running position of the train;
s3: obtaining historical level data of the train, and determining a control level according to the historical level data;
s4: constructing an iteration control model, and optimizing the control level by using the iteration control model to obtain an optimal control level;
s5: and controlling the train by using the optimal control level, updating the actual running speed and the actual running position of the train, judging whether the train reaches the terminal, if so, ending the heavy-duty train running control, and otherwise, returning to the step S2 until the train reaches the terminal.
2. The heavy-duty train operation control method based on iterative learning of claim 1, wherein in said step S2, the speed state error of car i
Figure FDA0003755896780000011
Error in position state
Figure FDA0003755896780000012
Clearance error of car coupler
Figure FDA0003755896780000013
The calculation formulas of (A) and (B) are respectively as follows:
Figure FDA0003755896780000014
Figure FDA0003755896780000015
Figure FDA0003755896780000016
wherein v is r (t) is the target speed of the head car at time t, v i (t) is the actual speed of the car i at time t, s r (t) is the target position of the first carriage at time t; s i (t) is the actual position of the car i at time t, s i+1 (t) is the actual position of the car i +1 at time t; l i When the expansion and contraction state of the buffer of all the trains is zero, the distance between the carriage i and the first carriage is l i+1 When the expansion and contraction state of the buffer of all the trains is zero, the distance between the carriage i +1 and the first carriage,
Figure FDA0003755896780000017
is the position state error of the vehicle compartment i + 1.
3. The heavy-duty train operation control method based on iterative learning of claim 1, wherein said step S4 includes the substeps of:
s41: constructing an error state space expression;
s42: discretizing an error state space expression and constructing a target function of a fixed time domain;
s43: calculating a minimum optimal solution of the target function of the fixed time domain;
s44: constructing an iterative control model according to the minimum optimal solution of the objective function of the fixed time domain;
s45: and optimizing the control level by using the iteration control model to obtain the optimal control level.
4. The heavy-duty train operation control method based on iterative learning of claim 3, wherein in said step S41, the error state space expression is:
Figure FDA0003755896780000021
Y(t)=Ce(t)
wherein, the first and the second end of the pipe are connected with each other,
Figure FDA0003755896780000022
representing the derivative of velocity with position, y (t) representing the output state, a representing the first coefficient matrix, B representing the second coefficient matrix, C representing the third coefficient matrix, e (t) representing the error state vector, Δ u (t) representing the error control vector, w' (t) representing the process noise.
5. The heavy-duty train operation control method based on iterative learning of claim 3, wherein in said step S42, the expression of the objective function J in the fixed time domain is:
Figure FDA0003755896780000023
wherein T represents the predicted time, N represents the number of vehicles, k v Representing the velocity weight, k s Representing the position weight, k x The weight of the inter-vehicle distance is represented,
Figure FDA0003755896780000024
the speed difference of the vehicle compartment i is indicated,
Figure FDA0003755896780000025
indicating the error in the positional state of the vehicle compartment i,
Figure FDA0003755896780000026
the error indicates the position state of the vehicle i +1, Δ u (j) indicates the change in force at time j, and R indicates the control force change coefficient.
6. The method for controlling the operation of the heavy-duty train according to claim 3, wherein in step S43, the formula for calculating the minimum optimal solution Δ u of the objective function in the fixed time domain is as follows:
Δu=-(R+B T PB) -1 B T PAe(k)=-Ke(k)
wherein A represents a first coefficient matrix, B represents a second coefficient matrix, K represents a state feedback gain matrix, R represents a control force variation coefficient, P represents a symmetric positive definite constant matrix, and e (K) represents an error state vector.
7. The heavy-duty train operation control method based on iterative learning of claim 3, wherein in said step S44, the iterative control model u is k The expression of (t) is:
Figure FDA0003755896780000027
Figure FDA0003755896780000028
Figure FDA0003755896780000029
wherein, the first and the second end of the pipe are connected with each other,
Figure FDA00037558967800000210
a model-predictive control increment is represented,
Figure FDA00037558967800000211
represents the iterative learning rate, A represents the first coefficient matrix, B represents the second coefficient matrix, k m Representing model predictive control gain weights, R representing control force variation coefficients, P representing a symmetric positive definite constant matrix, e k (t) represents the error state vector at time t in the kth iteration,
Figure FDA00037558967800000212
represents the last iterative learning rate, alpha represents the current iterative error and the last iterative error weight, gamma represents the learning gain,
Figure FDA00037558967800000213
representing the error state vector at time t in the (k-1) th iteration,
Figure FDA0003755896780000031
representing the derivative of the error state vector at time t in the kth iteration.
CN202210857419.3A 2022-07-20 2022-07-20 Heavy-duty train operation control method based on iterative learning Active CN115128957B (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN202210857419.3A CN115128957B (en) 2022-07-20 2022-07-20 Heavy-duty train operation control method based on iterative learning

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN202210857419.3A CN115128957B (en) 2022-07-20 2022-07-20 Heavy-duty train operation control method based on iterative learning

Publications (2)

Publication Number Publication Date
CN115128957A true CN115128957A (en) 2022-09-30
CN115128957B CN115128957B (en) 2023-03-14

Family

ID=83384557

Family Applications (1)

Application Number Title Priority Date Filing Date
CN202210857419.3A Active CN115128957B (en) 2022-07-20 2022-07-20 Heavy-duty train operation control method based on iterative learning

Country Status (1)

Country Link
CN (1) CN115128957B (en)

Citations (12)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN105446320A (en) * 2015-12-17 2016-03-30 南京航空航天大学 Fault detection method of high speed train vertical suspension system based on limited frequency domain
CN107640183A (en) * 2017-07-31 2018-01-30 李振轩 A kind of operation control method for train based on iterative learning control
US20180037243A1 (en) * 2016-08-08 2018-02-08 Mitsubishi Electric Research Laboratories, Inc. Train Automatic Stopping Control with Quantized Throttle and Braking
CN110083056A (en) * 2019-05-28 2019-08-02 北京交通大学 A kind of municipal rail train PID controller automatic adjusting method
CN110824465A (en) * 2019-10-25 2020-02-21 中铁武汉勘察设计研究院有限公司 Method and system for positioning molten iron combined transport vehicle based on image recognition and radar measurement
CN112193280A (en) * 2020-12-04 2021-01-08 华东交通大学 Heavy-load train reinforcement learning control method and system
CN112590738A (en) * 2020-12-23 2021-04-02 交控科技股份有限公司 ATO (automatic train operation) parking control method compatible with different inter-vehicle generations
US20210117776A1 (en) * 2019-10-22 2021-04-22 Baidu Usa Llc Method, electronic device and computer readable medium for information processing for accelerating neural network training
CN113085963A (en) * 2021-04-22 2021-07-09 西南交通大学 Dynamic regulation and control method and dynamic regulation and control device for train control level
CN113552801A (en) * 2021-07-08 2021-10-26 北京交通大学 Distributed subway train virtual formation operation control method
CN113911172A (en) * 2021-10-12 2022-01-11 中车大连机车研究所有限公司 High-speed train optimal operation control method based on self-adaptive dynamic planning
CN114326386A (en) * 2021-11-30 2022-04-12 卡斯柯信号有限公司 Automatic train driving track planning and tracking integrated control method and device

Patent Citations (12)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN105446320A (en) * 2015-12-17 2016-03-30 南京航空航天大学 Fault detection method of high speed train vertical suspension system based on limited frequency domain
US20180037243A1 (en) * 2016-08-08 2018-02-08 Mitsubishi Electric Research Laboratories, Inc. Train Automatic Stopping Control with Quantized Throttle and Braking
CN107640183A (en) * 2017-07-31 2018-01-30 李振轩 A kind of operation control method for train based on iterative learning control
CN110083056A (en) * 2019-05-28 2019-08-02 北京交通大学 A kind of municipal rail train PID controller automatic adjusting method
US20210117776A1 (en) * 2019-10-22 2021-04-22 Baidu Usa Llc Method, electronic device and computer readable medium for information processing for accelerating neural network training
CN110824465A (en) * 2019-10-25 2020-02-21 中铁武汉勘察设计研究院有限公司 Method and system for positioning molten iron combined transport vehicle based on image recognition and radar measurement
CN112193280A (en) * 2020-12-04 2021-01-08 华东交通大学 Heavy-load train reinforcement learning control method and system
CN112590738A (en) * 2020-12-23 2021-04-02 交控科技股份有限公司 ATO (automatic train operation) parking control method compatible with different inter-vehicle generations
CN113085963A (en) * 2021-04-22 2021-07-09 西南交通大学 Dynamic regulation and control method and dynamic regulation and control device for train control level
CN113552801A (en) * 2021-07-08 2021-10-26 北京交通大学 Distributed subway train virtual formation operation control method
CN113911172A (en) * 2021-10-12 2022-01-11 中车大连机车研究所有限公司 High-speed train optimal operation control method based on self-adaptive dynamic planning
CN114326386A (en) * 2021-11-30 2022-04-12 卡斯柯信号有限公司 Automatic train driving track planning and tracking integrated control method and device

Non-Patent Citations (3)

* Cited by examiner, † Cited by third party
Title
S. SU ET AL.: "Optimization of cyclic air braking strategy for heavy haul trains: an ADP approach", 《2021 IEEE INTELLIGENT TRANSPORTATION SYSTEMS CONFERENCE (ITSC)》 *
赵巧妮: "基于模糊自适应PID控制的重载列车操纵优化研究", 《机车电传动》 *
高速铁路长大坡道动车组运行性能分析方法: "胡彦霖 等", 《西南交通大学学报》 *

Also Published As

Publication number Publication date
CN115128957B (en) 2023-03-14

Similar Documents

Publication Publication Date Title
US7359770B2 (en) Control system for operating long vehicles
CN110827535B (en) Nonlinear vehicle queue cooperative self-adaptive anti-interference longitudinal control method
CN104590333A (en) Railway train intelligent operation optimization control system
CN110450794B (en) Optimal adhesion control method based on optimal creep speed searching and tracking
CN110281982B (en) Heavy-load train cruise control method based on periodic intermittent control
CN106056238B (en) Planning method for train interval running track
CN109703606B (en) High-speed train intelligent driving control method based on historical operation data
Graffione et al. Model predictive control of a vehicle platoon
CN111580391B (en) Motor train unit traction torque control method based on model prediction
Tian et al. Active radial system of railway vehicles based on secondary suspension rotation angle sensing
Liu et al. An approach for accurate stopping of high-speed train by using model predictive control
CN116080725A (en) Virtual reconnection high-speed train tracking interval control method based on model prediction
CN115128957B (en) Heavy-duty train operation control method based on iterative learning
Lang et al. Dqn-based speed curve optimization for virtual coupling
Zhang et al. Braking-penalized receding horizon control of heavy-haul trains
CN108749816B (en) Method for regulating and controlling speed of intelligent vehicle by using energy dissipation theory
Yang et al. Optimal Operation of High‐Speed Trains Using Hybrid Model Predictive Control
CN112109773B (en) Train speed control method based on H infinity and multi-objective optimization
CN112782978B (en) High-speed train cruising operation control method based on self-triggering mechanism
CN117170228A (en) Self-adaptive sliding mode control method for virtual marshalling high-speed train interval control
CN116594305A (en) Virtual marshalling train tracking control system and method based on model predictive control
CN114815852B (en) CACC fleet track planning method based on space discretization
CN112793625B (en) High-speed train event trigger control method based on discrete sampling data
CN115524975A (en) Virtual coupling strategy and model prediction control method for train operation
Chen et al. Distributed Global Composite Learning Cooperative Control of Virtually Coupled Heavy Haul Train Formations

Legal Events

Date Code Title Description
PB01 Publication
PB01 Publication
SE01 Entry into force of request for substantive examination
SE01 Entry into force of request for substantive examination
GR01 Patent grant
GR01 Patent grant