Complete Ensemble Empirical Mode Decomposition and Wavelet Algorithm Denoising Method for Bridge Monitoring Signals
Abstract
:1. Introduction
2. CEEMD–Wavelet Threshold Denoising Method Principle
2.1. Wavelet Denoising Method
2.2. Denoising Reduction Method Based on CEEMD Decomposition
2.3. Principle of CEEMD–Wavelet Threshold Denoising Algorithm
3. Project Overview and Measuring Point Layout
3.1. Project Overview
3.2. Measuring Point Layout
- (1)
- Load source monitoring
- (2)
- Deflection of the main beam
- (3)
- Structural stress
4. Results and Discussion
4.1. Evaluation Indicators
- (1)
- Signal-to-Noise Ratio
- (2)
- Root-Mean-Square Error
4.2. Strain Cleaning Results
4.3. Temperature Cleaning Result
4.4. Deflection Cleaning Results
5. Conclusions
- (1)
- By comparing the SNR and the mean square error of temperature, deflection, and strain after EMD–wavelet threshold denoising and VMD–wavelet threshold denoising methods, it is found that the SNR of deflection after denoising by this method is 63% higher than that after VMD–wavelet threshold denoising. The mean square error of strain after denoising is 40% lower than that of the data after EMD–wavelet threshold noise reduction.
- (2)
- This method has the advantages of a large data sample and high mode decomposition performance when dealing with nonlinear and nonstationary data, which provides a certain reference value for further research in the field of signal processing.
- (3)
- Maintaining the integrity of the original signal while reducing noise has superior application potential.
- (4)
- Due to constraints in the engineering environment and equipment, this study cannot precisely compare the collected data in the time–frequency domain. For future research, the synchronous squeezing wavelet transform method can be employed for high-precision data processing.
- (5)
- All conclusions drawn in this study are specific to the project referenced and may not be applicable to all scenarios.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Location | Number of Measurement Points | Measurement Frequency | Sensor Type |
---|---|---|---|
Z1 tower anchor zone | 2 | Once/10 min | Temperature and humidity instruments |
Mid span of the main span | 1 |
Location | Number of Measurement Points | Measurement Frequency | Sensor Type |
---|---|---|---|
Kuitun side span | 2 | 10 Hz~300 Hz | Image deflection instruments |
Z1 tower beam junction | 2 | ||
Z1 tower beam junction | 2 | ||
Mid span of the main span | 2 |
Location | Number of Measurement Points | Measurement Frequency | Sensor Type |
---|---|---|---|
Mid span of Kuitun side span | 12 | Once/10 min | Vibrating wire gages |
The main beam at the junction of tower and beam | 12 | ||
Main beam at L/4 of the main span | 12 | ||
Mid span of the main span | 12 |
Function Type | SNR | RMSR |
---|---|---|
EMD wavelet threshold denoising | 27.813 | 15.234 |
VMD wavelet threshold denoising | 31.471 | 13.397 |
CEEMD wavelet threshold denoising | 35.089 | 9.076 |
Function Type | SNR | RMSR (°C) |
---|---|---|
EMD wavelet threshold denoising | 20.963 | 0.5936 |
VMD wavelet threshold denoising | 29.966 | 0.173 |
CEEMD wavelet threshold denoising | 31.640 | 0.132 |
Function Type | SNR | RMSR (mm) |
---|---|---|
EMD wavelet threshold denoising | 11.039 | 3.921 |
VMD wavelet threshold denoising | 12.665 | 1.616 |
CEEMD wavelet threshold denoising | 20.614 | 1.330 |
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Yang, B.-C.; Xu, F.-Z.; Zhao, Y.; Yao, T.-Y.; Hu, H.-Y.; Jia, M.-Y.; Zhou, Y.-J.; Li, M.-Z. Complete Ensemble Empirical Mode Decomposition and Wavelet Algorithm Denoising Method for Bridge Monitoring Signals. Buildings 2024, 14, 2056. https://doi.org/10.3390/buildings14072056
Yang B-C, Xu F-Z, Zhao Y, Yao T-Y, Hu H-Y, Jia M-Y, Zhou Y-J, Li M-Z. Complete Ensemble Empirical Mode Decomposition and Wavelet Algorithm Denoising Method for Bridge Monitoring Signals. Buildings. 2024; 14(7):2056. https://doi.org/10.3390/buildings14072056
Chicago/Turabian StyleYang, Bing-Chen, Fang-Zhou Xu, Yu Zhao, Tian-Yun Yao, Hai-Yang Hu, Meng-Yi Jia, Yong-Jun Zhou, and Ming-Zhu Li. 2024. "Complete Ensemble Empirical Mode Decomposition and Wavelet Algorithm Denoising Method for Bridge Monitoring Signals" Buildings 14, no. 7: 2056. https://doi.org/10.3390/buildings14072056
APA StyleYang, B. -C., Xu, F. -Z., Zhao, Y., Yao, T. -Y., Hu, H. -Y., Jia, M. -Y., Zhou, Y. -J., & Li, M. -Z. (2024). Complete Ensemble Empirical Mode Decomposition and Wavelet Algorithm Denoising Method for Bridge Monitoring Signals. Buildings, 14(7), 2056. https://doi.org/10.3390/buildings14072056