The Wheel–Rail Contact Force for a Heavy-Load Train Can Be Measured Using a Collaborative Calibration Algorithm
Abstract
:1. Introduction
- (1)
- A wheel–rail contact force measurement platform is built for heavy-load trains. A railway inspection vehicle’s instrumented wheelset and a steel rail ground sensor device are combined. By using data from two different sets of signal acquisition equipment, the error caused by a single type of equipment is effectively eliminated.
- (2)
- Using the experimental site’s characteristics, a data relationship mapping model is developed for the ground-measured wheel–rail contact force and railway inspection vehicle measurements of heavy-load trains. Based on a multilayer perceptron (MLP), this model explores the independent characteristics of intelligent agents in the golden jackal algorithm to provide the MLP with greater training efficiency and maps the wheel–rail contact force data for two working circumstances.
- (3)
- A collaborative calibration algorithm for the wheel–rail contact force of heavy-load trains is suggested using the wheel–rail contact force data calibration method from the instrumented wheelset on the railway inspection vehicle and the data relationship mapping model. This collaborative calibration can be used to measure a heavy-load train’s wheel–rail contact force by detecting the railway inspection vehicle’s force as it passes by. This overcomes the problem of directly measuring the force.
2. Hardware Design and Data Acquisition
2.1. Equipment
2.2. Data Acquisition and Preprocessing
3. Collaborative Calibration Algorithm to Determine the Wheel–Rail Contact Force of Heavy-Load Trains
3.1. Calibration Model of Wheel–Rail Contact Force from the Railway Inspection Vehicle
3.2. Wheel–Rail Contact Force Relationship Mapping between the Railway Inspection Vehicle and Heavy-Load Train
3.3. Collaborative Calibration Algorithm of Wheel–Rail Contact Force for Heavy-Load Trains
4. Experiment Results and Analysis
4.1. Test Details
4.1.1. Experimental Setup
4.1.2. Dataset Introduction
4.1.3. Evaluation Indicators
4.2. Experimental Analysis of Collaborative Calibration of the Wheel–Rail Contact Force for a Heavy-Load Train
4.2.1. Wheel–Rail Contact Force Calibration of a Railway Inspection Vehicle on the Baotou–Shenmu Railway Line
4.2.2. Calibration of Wheel–Rail Contact Force on a Straight Section for a Heavy-Load Train
4.2.3. Calibration of Wheel–Rail Contact Force for a Heavy-Load Train Running on a Curved Line with a Small Radius
5. Conclusions
- (1)
- A data collection method to obtain the wheel–rail contact force of heavy-load trains was proposed. The method combines a ground monitoring system and a railway inspection vehicle. Through methods such as downsampling, the two sets of system data are effectively aligned.
- (2)
- A collaborative calibration algorithm for the wheel–rail contact force of a heavy-load train was established. When compared with three other algorithms, the calibration accuracy of the proposed GJO-MLP model was higher, with improved MAE and MAPE values. For the working condition of a straight-line section, the MAPE of the calibration results was 0.105%; for the working condition of a curved-line section, the RMSE of the calibration results was 184.72 N.
- (3)
- The heavy-load train wheel–rail contact force calibration model based on GJO–MLP maintained good robustness and generalization ability for different operating conditions and varied parameters. This means that this model has high reliability and adaptability in practical applications.
- (4)
- The empirical evidence garnered from field data elucidates that within railway sections characterized by reduced curvature radii, wheel sets exhibit a pronounced lateral displacement toward the inside of the curve. This phenomenon engenders an augmentation in the vibrational intensity of the inner rail, thereby imposing substantial ramifications on the operational safety of trains and the requisite maintenance of the track infrastructure. Subsequent to implementing corrective measures, a comprehensive assessment of designated performance indicators becomes feasible; these indicators are pivotal in ascertaining the capacity of trains to operate in a secure and stable manner.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Algorithm | Parameter | Value |
---|---|---|
GA-BP | Number of evolutionary iterations | 200 |
Population size | 30 | |
Crossover probability | 0.6 | |
Mutation probability | 0.05 | |
SSA-LSTM | Population size | 30 |
Maximum number of iterations | 200 | |
NGO-MLP | Population size | 30 |
Maximum number of iterations | 200 | |
GJO-MLP | Population size | 30 |
Maximum number of iterations | 200 |
Model | RMSE/N | MAE/kN | MAPE/% |
---|---|---|---|
GA-BP | 4656.17 | 4.147 | 4.16 |
SSA-LSTM | 3441.59 | 3.418 | 2.75 |
NGO-MLP | 2206.46 | 2.384 | 1.83 |
GJO-MLP | 1625.64 | 1.593 | 1.35 |
Model | RMSE/N | MAE/kN | MAPE/% |
GA-BP | 7015.36 | 7.473 | 17.69 |
SSA-LSTM | 4331.21 | 4.026 | 10.33 |
NGO-MLP | 2789.88 | 2.728 | 6.71 |
GJO-MLP | 1584.73 | 1.644 | 3.84 |
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Wen, T.; He, J.; Zhang, C.; He, J. The Wheel–Rail Contact Force for a Heavy-Load Train Can Be Measured Using a Collaborative Calibration Algorithm. Information 2024, 15, 535. https://doi.org/10.3390/info15090535
Wen T, He J, Zhang C, He J. The Wheel–Rail Contact Force for a Heavy-Load Train Can Be Measured Using a Collaborative Calibration Algorithm. Information. 2024; 15(9):535. https://doi.org/10.3390/info15090535
Chicago/Turabian StyleWen, Tianning, Jing He, Changfan Zhang, and Jia He. 2024. "The Wheel–Rail Contact Force for a Heavy-Load Train Can Be Measured Using a Collaborative Calibration Algorithm" Information 15, no. 9: 535. https://doi.org/10.3390/info15090535
APA StyleWen, T., He, J., Zhang, C., & He, J. (2024). The Wheel–Rail Contact Force for a Heavy-Load Train Can Be Measured Using a Collaborative Calibration Algorithm. Information, 15(9), 535. https://doi.org/10.3390/info15090535