Structural Prediction Analysis of Cross-Sea Cable-Stayed Bridges during Operation Based on Existing Traffic Volumes
Abstract
:1. Introduction
2. Traffic Flow Forecast Analysis
2.1. Overview of the LSTM Model
2.2. Overview of the XGBoost Model
2.3. Combined LSTM-XGBoost Model Implementation Method
- (1)
- Using the LSTM model to predict the data to acquire .
- (2)
- Prediction of the data using the XGBoost model yields .
- (3)
- Training of model weights α and β by means of equation and genetic algorithms.
- (4)
- The weights obtained were assigned as single model weights in the mixed model and linearly summed to obtain .
2.4. Example Analysis
3. Finite Element Analysis Model
3.1. Background of the Study
3.2. Building a Finite Element Model
3.3. Time Course Analysis
4. Dynamic Simulation Analysis under Different Traffic Flow Loads
4.1. Influence of Different Traffic Volumes on Spanwise Deflection of the Main Beam
4.2. Influence of Different Traffic Volumes on the Stress of the Diagonal Cable
4.3. Effect of Different Traffic Volumes on Stresses in the Span of the Main Beam
4.4. Bridge Traffic Management Analysis
4.4.1. Passable Traffic Volume
4.4.2. Vehicle Travel Speed
5. Conclusions
- (1)
- This paper is based on a combined LSTM-XGBoost model for traffic volume prediction. Comparing the combined LSTM-XGBoost model with a single model for prediction. The MAE, MAPE and RMSE values for the combined model were only 074.0163, 0.13 and 75.7115. The results show that the combined LSTM-XGBoost model has higher prediction accuracy than the single model.
- (2)
- In this paper, 10 traffic load conditions are simulated by finite element software under the combined LSTM-XGBoost model prediction. The variation of the stress state of the main beam, the stress in the diagonal cable and the deflection in the span were analyzed. The simulation data were fitted and analyzed to obtain the final fitted curves of the three with the predicted traffic volumes.
- (3)
- According to the results of the calculations, the limit traffic volume of the bridge is approximately 220,000 vehicles. According to the combined LSTM-XGBoost model, this maximum can be predicted to occur in 2038. If vehicles maintain a constant speed of 80 km/h when crossing the bridge, the structural condition of the bridge will be minimally affected.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Model | MAE/Vehicle | MAPE/% | RMSE/Vehicle |
---|---|---|---|
LSTM | 88.1141 | 0.16 | 89.8220 |
XGBoost | 116.5163 | 0.19 | 117.7853 |
Combined model | 74.0163 | 0.13 | 75.7115 |
Projects | Materials | Capacity | Modulus of Elasticity | Poisson Ratio |
---|---|---|---|---|
Cable tower | C50 Concrete | 25 kN/m3 | 3.45 × 104 MPa | 0.2 |
Main beam | Q345 steel | 77 kN/m3 | 2.06 × 105 MPa | 0.3 |
Crossbeam | C50 Concrete | 25 kN/m3 | 3.45 × 104 MPa | 0.2 |
Prestressed steel bundles | 15–22 Steel strand | 78.5 kN/m3 | 1.95 × 105 MPa | 0.3 |
Inclined ropes | Steel wire | 78.5 kN/m3 | 1.95 × 105 MPa | 0.3 |
Load | Remarks |
---|---|
Self-weight | Automatic software calculation |
Phase II Loads | 31 kN/m |
Prestressing loads | Added by actual prestressing loads |
Overall warming | Steel construction 31.2 °C Concrete 16.5 °C |
Overall cooling | Steel construction 32 °C Concrete 18.2 °C |
Wind loads | 25 m/s |
Crowd loads | 2.5 kN/m2 |
Slanting cable forces | Add according to actual initial tension |
Binding Directions | Transition Pier | Auxiliary Pier | Cable Tower |
---|---|---|---|
Longitudinal orientation | Unbinding | Unbinding | Viscous dampers |
Horizontal orientation | Binding | Viscous dampers | Binding |
Vertical orientation | Binding | Binding | Binding |
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Xin, S.; Wang, Z.; Su, H.; Shang, L.; Meng, K.; Wang, X.; Zhou, Z.; Zhao, Z.; Zhang, P. Structural Prediction Analysis of Cross-Sea Cable-Stayed Bridges during Operation Based on Existing Traffic Volumes. J. Mar. Sci. Eng. 2022, 10, 1758. https://doi.org/10.3390/jmse10111758
Xin S, Wang Z, Su H, Shang L, Meng K, Wang X, Zhou Z, Zhao Z, Zhang P. Structural Prediction Analysis of Cross-Sea Cable-Stayed Bridges during Operation Based on Existing Traffic Volumes. Journal of Marine Science and Engineering. 2022; 10(11):1758. https://doi.org/10.3390/jmse10111758
Chicago/Turabian StyleXin, Song, Ziyi Wang, Huifeng Su, Liuhong Shang, Kun Meng, Xiang Wang, Zhiyong Zhou, Zhongxiao Zhao, and Pengfei Zhang. 2022. "Structural Prediction Analysis of Cross-Sea Cable-Stayed Bridges during Operation Based on Existing Traffic Volumes" Journal of Marine Science and Engineering 10, no. 11: 1758. https://doi.org/10.3390/jmse10111758
APA StyleXin, S., Wang, Z., Su, H., Shang, L., Meng, K., Wang, X., Zhou, Z., Zhao, Z., & Zhang, P. (2022). Structural Prediction Analysis of Cross-Sea Cable-Stayed Bridges during Operation Based on Existing Traffic Volumes. Journal of Marine Science and Engineering, 10(11), 1758. https://doi.org/10.3390/jmse10111758