Load Effect Analysis Method of Cable-Stayed Bridge for Long-Span Track Based on Adaptive Filtering Method
Abstract
:1. Introduction
2. Project and Finite Element
2.1. Project Overview
2.2. Health Monitoring System
2.3. Finite Element Analysis
3. Load Effect Analysis Method
- According to the period T of the train crossing the bridge and the monitoring data acquisition frequency , the number of data samples required for analysis is determined.
- When the number of data samples reaches the minimum value and the median value of the data sample is obtained, where data sample f generally refers to structural stress, displacement, and cable force. If , the program preliminarily determines it as the train load effect data.
- Based on the finite element model, the calculated value under train load is obtained, and the limit value f is set, where is less than 1. The specific value is determined by the sample data, and the initial value of the sample is obtained. If ≥ , it is confirmed that these data samples are train load effect data.
- After the train load effect data are extracted, the initial sample value is subtracted to carry out initialization processing and remove the influence of temperature load.
4. Load Effect Separation Experiment
4.1. Analysis of Train Load Effect Based on Influence Line
4.2. Analysis of Temperature Load Effect Based on Correlation
5. Conclusions and Prospects
- The adaptive filtering load effect separation method proposed in this paper is both feasible and effective. Based on the characteristics of high frequency, large response, and periodicity of train load effect, a method for separating load effect is proposed. Through the signal separation of the composite structure response data obtained by the monitoring system, the respective effects of train load and temperature load at the same time are obtained, which provides scientific support for the state evaluation of the bridge and makes the evaluation results more accurate and reliable.
- The measured values of the structural influence line of the vertical displacement of the main beam, the longitudinal displacement of the main tower, and the stress index of the main beam under the action of train load are compared with the theoretical influence line obtained by simulation, based on the train load effect analysis method of the influence line. The normalized cross-correlation (NCC) of the two indexes was found to be 0.9457, 0.9531, 0.8873, 0.9098, and 0.9101. This demonstrated a very high degree of fit, indicating that no significant anomalies were found in the bridge and verifying the direct evaluation of the structural state of the line affected by the train load.
- The impact of ambient temperature on the cable-stayed bridge with a long-span track is profound, and there is a clear correlation between the response of each structural component. The temperature exhibits a strong negative correlation with the vertical displacement of the main beam, longitudinal displacement of the main tower (A0 side, P3 side, and P5 side), and Pearson correlation coefficient R < −0.7 of the stay cable. Conversely, the longitudinal displacement of the main tower (P2 side), roof stress in the main beam span, and floor stress in the main beam span exhibit a strong positive correlation coefficient R > 0.7. It has been demonstrated that the structural state can be evaluated indirectly by temperature load correlation.
- Comprehensive consideration of long-term effects: In addition to the load effect, the durability of the long-span track special cable-stayed bridge is also an important consideration. Therefore, in the future, a durability analysis will be carried out by monitoring the corrosion and fatigue of bridge materials to ensure the long-term safe operation of the bridge.
- Optimize the monitoring system: In the future, the combination of artificial intelligence and big data analysis technology with the establishment of a decision support system will facilitate more accurate real-time monitoring, analysis, and prediction of the load effect of long-span track special cable-stayed bridges. Through systematic data management and analysis, the efficiency and safety of bridge operation and maintenance will be enhanced.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Category | Monitoring Item | Number in Figure 5 * | Main Parameter | Device Type | Sampling Frequency |
---|---|---|---|---|---|
Load and environmental monitoring | Strike | ⑫, ⑬, ⑭ | Crash—Ship crash | Unidirectional acceleration sensor | 20 Hz |
Temperature | ⑯, ㉓ | Temperature—Ambient temperature | Hygrograph | 1/600 Hz | |
⑥ | Temperature—Temperature inside the box girder | Hygrograph | 1/600 Hz | ||
Humidness | ⑯, ㉓ | Humidity—Ambient humidity | Hygrograph | 1/600 Hz | |
Humidity—Box girder inside wet | Hygrograph | 1/600 Hz | |||
Rainfall | ⑲ | rainfall | Hyetometer | 1/60 Hz | |
Water level | ⑰ | Water level | Radar water level gauge | 1 Hz | |
Wind | ⑮ | Wind speed and direction | anemometer | 1 Hz | |
Static and dynamic response monitoring of the whole structure | Vibration | ⑨, ⑩ | Vibration—Main beam vibration | Unidirectional acceleration sensor | 20 Hz |
⑳, ㉑ | Vibration—Tower vibration | Unidirectional acceleration sensor | 20 Hz | ||
Amorphosis | ④ | Deformation—Vertical change in the main beam | Static level | 1 Hz | |
⑪ | Deformation—Tower space deformation (GNSS) | GNSS deformation monitoring system | 1 Hz | ||
Static and dynamic response monitoring of the whole structure | Amorphosis | ⑪ | Deformation—Main beam space deformation (GNSS) | GNSS deformation monitoring system | 1 Hz |
⑧ | Deformation—Horizontal displacement of the pier | Inclinometer | 1 Hz | ||
① | Deformation—Displacement of expansion joint | Fiber grating displacement meter | 1 Hz | ||
Corner | ② | Corner | inclinometer | 1 Hz | |
Structure local response monitoring | Stress | ⑤ | Main beam stress | Fiber grating strain gauge | 1 Hz |
㉒ | Main tower stress | Fiber grating strain gauge | 1 Hz | ||
Cable force | ⑱ | Cable force of the cable | Cable force accelerometer | 20 Hz | |
Transcore pressure sensor | 1/60 Hz | ||||
Structural fatigue | ⑦ | Fatigue of steel structure | Fiber grating strain gauge | 1 Hz |
Serial Number | Structural Response Parameter | NCC | Similarity |
---|---|---|---|
1 | Vertical displacement of the main beam | 0.9457 | High |
2 | Longitudinal displacement of the main tower (P2 side) | 0.9531 | High |
3 | Longitudinal displacement of the main tower (P3 side) | 0.8873 | High |
4 | Roof stress in the span of the main beam | 0.9098 | High |
5 | Middle floor stress of main beam span | 0.9101 | High |
Serial Number | Structural Response Parameter | Pearson Correlation Coefficient R | Strength of Correlation |
---|---|---|---|
1 | Vertical displacement of the main beam | −0.9634 | strong |
2 | Longitudinal displacement of the main tower (P2 side) | 0.9384 | strong |
3 | Longitudinal displacement of the main tower (P3 side) | −0.8951 | strong |
4 | Longitudinal displacement of the main beam (A0 side) | −0.9421 | strong |
5 | Longitudinal displacement of the main beam (P5 side) | −0.7853 | strong |
6 | SMC1 Cable | −0.8980 | strong |
7 | NMC1 Cable | −0.9625 | strong |
8 | Roof stress in the span of the main beam | 0.9658 | strong |
9 | Middle floor stress of main beam span | 0.9326 | strong |
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Ding, P.; Li, X.; Chen, S.; Huang, X.; Chen, X.; Qi, Y. Load Effect Analysis Method of Cable-Stayed Bridge for Long-Span Track Based on Adaptive Filtering Method. Appl. Sci. 2024, 14, 7057. https://doi.org/10.3390/app14167057
Ding P, Li X, Chen S, Huang X, Chen X, Qi Y. Load Effect Analysis Method of Cable-Stayed Bridge for Long-Span Track Based on Adaptive Filtering Method. Applied Sciences. 2024; 14(16):7057. https://doi.org/10.3390/app14167057
Chicago/Turabian StyleDing, Peng, Xiaogang Li, Sheng Chen, Xiangsheng Huang, Xiaohu Chen, and Yong Qi. 2024. "Load Effect Analysis Method of Cable-Stayed Bridge for Long-Span Track Based on Adaptive Filtering Method" Applied Sciences 14, no. 16: 7057. https://doi.org/10.3390/app14167057
APA StyleDing, P., Li, X., Chen, S., Huang, X., Chen, X., & Qi, Y. (2024). Load Effect Analysis Method of Cable-Stayed Bridge for Long-Span Track Based on Adaptive Filtering Method. Applied Sciences, 14(16), 7057. https://doi.org/10.3390/app14167057