Dynamic Response Prediction of Railway Bridges Considering Train Load Duration Using the Deep LSTM Network
Abstract
:1. Introduction
2. Background Theory and Proposed Framework
2.1. Brief Description of LSTM Network
2.2. Feasibility of Predicting Bridge Responses Using the LSTM Network
2.3. Proposed Framework for Predicting Train-Induced Bridge Responses
3. Metrics for Evaluating Prediction Performance
3.1. Dimensional Metrics
3.2. Non-Dimensional Metrics
3.3. Improved Evaluation Metrics
4. Case Study
4.1. Engineering Background
4.2. Network Determination and Training
4.2.1. Training Strategies
4.2.2. Network Structures
4.2.3. The Size of Training Dataset
4.2.4. The Number of Discretized Bridge Elements
4.3. Effect of the Train System on the Prediction Accuracy
4.3.1. The Riding Speed of the Train
4.3.2. The Number of Train Carriages
4.4. The Influence of Measurement Noise
5. Conclusions
- (1)
- In terms of the prediction accuracy of different types of responses, in general, the accuracy of displacement prediction was obviously better than that of acceleration, and the prediction of displacement was less affected by various unfavorable factors than that of acceleration. The peak value of acceleration prediction value was smaller than that of theoretical value, and the prediction results were generally strongly correlated with the theoretical value. Therefore, displacement prediction had higher reliability than acceleration prediction;
- (2)
- For different dimensional indicators, under the same number of LSTM network layers, as the number of neurons increased, the model evaluation indicators tended to be better, that is, the accuracy of the prediction results tended to increase. However, with the increase in the number of parameters of the neural network model, the nonlinear fitting performance of the model was improved, and it was easy to produce over-fitting phenomena, which led to a decrease in prediction accuracy. When the number of neurons increased from 128 to 256, the trend of each index was different, and some indexes did not change much or even tended to deteriorate;
- (3)
- Considering the influence of the noise of axle load and wheelbase on the response prediction, it was found that the noise of the wheelbase had a more significant influence on the prediction, but, in general, the correlation between the predicted response value and the theoretical value was good and the error was controllable. In particular, the displacement prediction performs well under the influence of noise. In addition, with the increase of train speed, the prediction accuracy decreased slightly—in particular, the acceleration prediction was more sensitive. The increase in the number of train sections also reduced the accuracy of response prediction, and the acceleration prediction was more sensitive to the change in train sections.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Dataset Name | Train Speed/(km/h) | Number of Carriages | Fixed Wheel Base l1/m | Sampling Frequency/Hz |
---|---|---|---|---|
A: sample size is 25 | 20, 40, 60 | 4, 8, 12 | 1.8, 2.5 | 100, 200 |
B: sample size is 50 | 20, 40, 60, 80 | 4, 8, 12, 16 | 1.8, 2.5 | 100, 200 |
C: sample size is 100 | 20, 40, 60, 80, 100 | 4, 8, 12, 16, 20 | 1.8, 2.5 | 100, 200 |
D: sample size is 150 | 20, 40, 60, 80, 100 | 4, 8, 12, 16, 20 | 1.8, 2.5 | 100, 150, 200 |
E: sample size is 200 | 20, 40, 60, 80, 100 | 4, 8, 12, 16, 20 | 1.8, 2.2, 2.5 | 100, 150, 200 |
Model Name | LSTM Layers | Number of Neurons | Model Name | LSTM Layers | Number of Neurons |
---|---|---|---|---|---|
1-32 | 1 | 32 | 2-128 | 2 | 128 |
1-64 | 1 | 64 | 2-256 | 2 | 256 |
1-128 | 1 | 128 | 3-32 | 3 | 32 |
1-256 | 1 | 256 | 3-64 | 3 | 64 |
2-32 | 2 | 32 | 3-128 | 3 | 128 |
2-64 | 2 | 64 | 3-256 | 3 | 256 |
Name | Description of the Noise Level |
---|---|
Case 0 | Both axle load and axle spacing adopt the optimal values identified by load recognition. |
Case 1 | Axle spacing adopts the optimal value identified by load recognition, while axle load values are randomly generated based on their uncertainty results. |
Case 2 | Axle load adopts the optimal value identified by load recognition, while axle spacing adds 5% noise. |
Case 3 | Axle load values are randomly generated based on their uncertainty results, while axle spacing adds 5% noise. |
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Tan, S.; Ke, X.; Pang, Z.; Mao, J. Dynamic Response Prediction of Railway Bridges Considering Train Load Duration Using the Deep LSTM Network. Appl. Sci. 2024, 14, 9161. https://doi.org/10.3390/app14209161
Tan S, Ke X, Pang Z, Mao J. Dynamic Response Prediction of Railway Bridges Considering Train Load Duration Using the Deep LSTM Network. Applied Sciences. 2024; 14(20):9161. https://doi.org/10.3390/app14209161
Chicago/Turabian StyleTan, Sui, Xiandong Ke, Zhenhao Pang, and Jianxiao Mao. 2024. "Dynamic Response Prediction of Railway Bridges Considering Train Load Duration Using the Deep LSTM Network" Applied Sciences 14, no. 20: 9161. https://doi.org/10.3390/app14209161
APA StyleTan, S., Ke, X., Pang, Z., & Mao, J. (2024). Dynamic Response Prediction of Railway Bridges Considering Train Load Duration Using the Deep LSTM Network. Applied Sciences, 14(20), 9161. https://doi.org/10.3390/app14209161