Method for Fault Diagnosis of Track Circuits Based on a Time–Frequency Intelligent Network
<p>Time–frequency intelligent network flow chart.</p> "> Figure 2
<p>Configuration of ZPW-2000A.</p> "> Figure 3
<p>Track voltage time-domain signal diagram.</p> "> Figure 4
<p>DBN structure and training process.</p> "> Figure 5
<p>GA-LSSVM diagnosis flow chart.</p> "> Figure 6
<p>Wavelet time–frequency diagram of voltage signals.</p> "> Figure 7
<p>Time–frequency diagram feature set.</p> "> Figure 8
<p>DBN training accuracy: (<b>a</b>) without wavelet transformation; (<b>b</b>) with wavelet transformation.</p> "> Figure 9
<p>Confusion matrix of the DBN training results: (<b>a</b>) without wavelet transformation; (<b>b</b>) with wavelet transformation.</p> "> Figure 10
<p>DBN feature extraction visualization: (<b>a</b>) first layer; (<b>b</b>) second layer; (<b>c</b>) third layer.</p> "> Figure 11
<p>Fitness curve of GA optimization.</p> "> Figure 12
<p>Confusion matrix of track circuit fault diagnosis.</p> ">
Abstract
:1. Introduction
2. Track Circuit Fault Diagnosis Network Design
2.1. Overview of the DBN-GA-LSSVM Diagnosis Framework
- The creation of a ZPW-2000A track circuit voltage simulation model, implemented in the Simulink software MATLAB R2022a, is initiated. This model is utilized to reflect the fault modes of the track circuit, and a corresponding voltage fault dataset is generated.
- The initial dataset undergoes continuous wavelet transformation to unveil the time–frequency characteristics inherent in the voltage signals.
- The DBN model is utilized to extract distinctive features from the wavelet spectrograms, while the LSSVM is employed as a classifier for fault diagnosis.
- Optimization of the LSSVM parameters is achieved through the application of a genetic algorithm (GA), and the refined model’s effectiveness is assessed using an independent test set.
2.2. Generation of the Dataset
2.2.1. Modeling of the ZPW-2000A
2.2.2. Time–Frequency Visualization of the CWT
2.3. Deep Belief Network
2.4. Least-Squares Support Vector Machine
2.5. Genetic Algorithm
3. Experiment
3.1. Experimental Setup and Evaluation Index
3.2. Time–Frequency Visualization of Continuous Wavelet Transformation
3.3. DBN-Based Fault Diagnosis Results
3.4. Genetic Algorithm Optimization for the LSSVM
3.5. Results of Fault Diagnosis Using DBN-GA-LSSVM
4. Conclusions
- Using the CWT to preprocess the voltage signal data to obtain a wavelet video image is helpful to better capture the dynamic characteristics of the signal, so that the induced voltage signals in different states are easier to distinguish and more interpretable;
- Aiming at the problem of insufficient fault sample data of track circuits, a fault diagnosis model based on optimized DBN-LSSVM is proposed. The DBN exhibits a good feature extraction ability, and the LSSVM has the advantage of solving high-dimensional pattern recognition in the case of small samples, which reduces the working time. The genetic algorithm makes the optimization parameters gradually tend to be optimal with the increase in the number of iterations. Compared with the traditional neural network, this method has better fault diagnosis performance;
- In terms of engineering verification, the proposed model can be applied to an actual track circuit fault diagnosis system to further verify its applicability in practical engineering. The research object of this paper is only the ZPW-2000 track circuit, and a comparative study of 25 Hz phase-sensitive track circuits and high-voltage pulse track circuits can be added in the future.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
CWT | Continuous wavelet transform |
DBN | Deep belief network |
RBM | Restricted Boltzmann machine |
GA | Genetic algorithm |
LSSVM | Least-squares support vector machine |
MLP | Multilayer perceptron |
BP | Backpropagation neural network |
CNN | Convolutional neural network |
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Fault Number | Failure Mode | Failed Part |
---|---|---|
F1 | normal | - |
F2 | the sending voltage is large | transmitter |
F3 | the sending voltage is small | |
F4 | the analog network capacitance is small | transmitting cable |
F5 | the analog network inductance is small | |
F6 | SPT cable fault | |
F7 | matching transformer fault | transmitter matching transformer |
F8 | TU1 failure | transmitter tuning area |
F9 | SVA failure | |
F10 | TU2 failure | |
F11 | the ballast resistance is large | rail line |
F12 | the ballast resistance is small | |
F13 | compensation capacitor fault | |
F14 | TU1 failure | receiver tuning area |
F15 | SVA failure | |
F16 | TU2 failure | |
F17 | matching transformer fault | receiving-end matching transformer |
F18 | SPT cable fault | seismic cable |
F19 | the analog network capacitance is small | |
F20 | the inductance of the analog network is small |
Feature | Simulative Value/V | Measured Value/V | E1/% | E2/% |
---|---|---|---|---|
M1 | 104 | 104 | 0 | 0 |
M2 | 34.28 | 34.65 | 0.37 | 1.07 |
M3 | 2.97 | 3.12 | 0.15 | 4.80 |
M4 | 2.61 | 2.61 | 0 | 0 |
M5 | 20.19 | 20.51 | 0.32 | 1.58 |
M6 | 2.3 | 2.24 | 0.06 | 2.60 |
Model | Accuracy/% | Time/s |
---|---|---|
DBN | 92.00 | 50.65 |
MLP | 91.21 | 30.13 |
CNN | 97.80 | 283.5 |
BP | 91.31 | 28.33 |
DBN-GA-LSSVM | 99.60 | 70.18 |
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Peng, F.; Liu, T. Method for Fault Diagnosis of Track Circuits Based on a Time–Frequency Intelligent Network. Electronics 2024, 13, 859. https://doi.org/10.3390/electronics13050859
Peng F, Liu T. Method for Fault Diagnosis of Track Circuits Based on a Time–Frequency Intelligent Network. Electronics. 2024; 13(5):859. https://doi.org/10.3390/electronics13050859
Chicago/Turabian StylePeng, Feitong, and Tangzhi Liu. 2024. "Method for Fault Diagnosis of Track Circuits Based on a Time–Frequency Intelligent Network" Electronics 13, no. 5: 859. https://doi.org/10.3390/electronics13050859
APA StylePeng, F., & Liu, T. (2024). Method for Fault Diagnosis of Track Circuits Based on a Time–Frequency Intelligent Network. Electronics, 13(5), 859. https://doi.org/10.3390/electronics13050859