Theoretical and Experimental Investigations of Identifying Bridge Damage Using Instantaneous Amplitude Squared Extracted from Vibration Responses of a Two-Axle Passing Vehicle
Abstract
:1. Introduction
2. Theoretical Formulations of the Problem
2.1. Closed-Form Solutions of Residual CP Responses
2.2. Bridge Damage Detection Using Residual CP Acceleration
- Measure the vehicle accelerations 1 and 2 of the vehicle body at the front and rear axles of the two-axle test vehicle;
- Calculate the residual CP acceleration Δ of the front and rear vehicle axles using Equation (15);
- Analyze the frequency spectrum of Δ using FFT and isolate its first few orders of driving frequencies 2nπv/L using the multi-peak spectrum idealized filter;
- Obtain the time-domain results of the driving frequency components Rn(t) using the multi-point spectra idealized filter and inverse FFT and construct its instantaneous amplitude IAS index A(t) by Hilbert transform.
3. Numerical Investigations Using Finite Element Simulation
3.1. Finite Element Simulation of the VBI System with Damage
3.2. Numerical Validation of the Residual CP Response
3.3. Numerical Validation of Damage Identification
3.4. Influence of Vehicle Speed on Damage Identification
3.5. Influence of Road Roughness on Damage Identification
4. Experimental Validations
4.1. The Laboratory VBI System
4.2. Damage Detection under the Perfect Road Surface
4.3. Damage Detection under Rough Road Surface
5. Conclusions
- (1)
- The IAS index of the residual CP acceleration can be constructed by applying a multi-peak idealized filter and the Hilbert transform to the driving frequency spectra. This index is theoretically sensitive to the bridge modal shape and can be used to identify bridge damage. Theoretically, it eliminates the influence of vehicle self-vibrations and road roughness when the vehicle–bridge coupling effect can be ignored;
- (2)
- Numerical investigations verify the accuracy of the theoretical derivations. The bridge damage can be determined by observing IAS abnormalities, which are baseline-free. The IAS of the residual CP acceleration can identify a 10% stiffness loss in a beam element under low road surface roughness and a 30% stiffness loss under high road surface roughness. A favorable vehicle speed of no greater than 2 m/s yields good damage identification results;
- (3)
- Laboratory tests show that it is possible to roughly identify bridge damage using the IAS extracted from residual CP acceleration under perfect road surfaces. The results of the IAS from residual CP acceleration show the same ability to locate damage as those of the IAS from CP accelerations at the front or rear axle. However, some irrelevant IAS abnormalities were observed, which have no relation to the bridge damage;
- (4)
- Regarding rough road surfaces in the experimental setup, while both IAS indicators derived from residual CP acceleration and axle CP acceleration successfully identify multiple bridge frequencies, it is likely that they both fall short in detecting damage. Hence, further experiments should be performed to fully examine the capacity of the IAS for bridge damage identification in practical applications.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Item | Parameters | Symbol | Unit | Value |
---|---|---|---|---|
Vehicle | Mass of vehicle | Mv | kg | 1000 |
Mass moment of vehicle | Jv | kg·m2 | 900 | |
Stiffness of front axle | k1 | N/m | 3.5 × 105 | |
Stiffness of rear axle | k2 | N/m | 4 × 105 | |
Distance from the front axle | l1 | m | 1.35 | |
Distance from the rear axle | l2 | m | 1.25 | |
Velocity | v | m/s | 2 | |
Bridge | Length | L | m | 25 |
Young’s modulus | E | MPa | 2.75 × 104 | |
Moment of inertia | I | m4 | 0.20 | |
Mass per unit length | m | kg/m | 2400 |
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Liu, S.; Zhou, Z.; Zhang, Y.; Sun, Z.; Deng, J.; Zhou, J. Theoretical and Experimental Investigations of Identifying Bridge Damage Using Instantaneous Amplitude Squared Extracted from Vibration Responses of a Two-Axle Passing Vehicle. Buildings 2024, 14, 1428. https://doi.org/10.3390/buildings14051428
Liu S, Zhou Z, Zhang Y, Sun Z, Deng J, Zhou J. Theoretical and Experimental Investigations of Identifying Bridge Damage Using Instantaneous Amplitude Squared Extracted from Vibration Responses of a Two-Axle Passing Vehicle. Buildings. 2024; 14(5):1428. https://doi.org/10.3390/buildings14051428
Chicago/Turabian StyleLiu, Siying, Zunian Zhou, Yujie Zhang, Zhuo Sun, Jiangdong Deng, and Junyong Zhou. 2024. "Theoretical and Experimental Investigations of Identifying Bridge Damage Using Instantaneous Amplitude Squared Extracted from Vibration Responses of a Two-Axle Passing Vehicle" Buildings 14, no. 5: 1428. https://doi.org/10.3390/buildings14051428
APA StyleLiu, S., Zhou, Z., Zhang, Y., Sun, Z., Deng, J., & Zhou, J. (2024). Theoretical and Experimental Investigations of Identifying Bridge Damage Using Instantaneous Amplitude Squared Extracted from Vibration Responses of a Two-Axle Passing Vehicle. Buildings, 14(5), 1428. https://doi.org/10.3390/buildings14051428