Efficacy of Vehicle Scanning Methods in Estimating the Mode Shapes of Bridges Seated on Elastic Supports
Abstract
:1. Introduction
2. Vehicle Scanning Methods
2.1. Reference-Based SSI Method
2.2. Elliptic Filter Method
- Record the dynamic response of the vehicle as it is crossing the bridge of interest.
- Compute contact point (CP) response from the accelerations recorded on the vehicle.
- Compute the Fourier amplitude spectrum (FAS) of the CP response to determine the natural frequencies of the bridge.
- Decompose the CP response into its modal components using an elliptic filter, which is designed based on the natural frequencies of the bridge and the signal strength to obtain the narrow band signal.
- Calculate the analytic signal from the narrow band signal using the Hilbert transform (HT) and construct the mode shape of the bridge from the instantaneous amplitude of the HT.
2.3. Half-Car Method
3. Numerical Models
4. Numerical Analysis
4.1. Single-Span Bridge
4.1.1. Case I: Smooth Road Profile
4.1.2. Case II: Rough Profile
4.1.3. Case III: Rough Profile with Traffic
4.2. Two-Span Bridge
4.2.1. Case IV: Smooth Road Profile
4.2.2. Case V: Two-Span Bridge: Rough Profile
4.2.3. Case VI: Two-Span Bridge: Rough Profile with Traffic
5. Concluding Remarks
- The reference-based SSI method provides relatively accurate mode shape estimates whenever it succeeds in obtaining stable modes. However, for the majority of the cases we considered, it has failed to provide any mode shape estimates. Specifically, this method is susceptible to the negative effects of higher vehicle speeds and road roughness. Due to its sensitivity to the number of data points available at each bridge segment, segmentation of the bridge needs to be carefully conducted, considering the sampling rate and the vehicle speed.
- The half-car method is robust against the negative effects of vehicle speed and yields improved mode shape estimates, even at high speeds. It successfully alleviates the negative effects of road roughness. However, it may result in inaccurate mode shape estimates when the pitching frequency of the vehicle, which is not present in a quarter-car model, interferes with any bridge mode.
- The elastic supports and using a half-car model provide a combined effect that leads to a significant decrease in the mode shape estimates provided by the half-car method at the edges of the bridge. Due to a change in the total load carried by the bridge at the instant of an axle entering or leaving a bridge via an elastic support, the bridge displacement profile changes suddenly leading to amplifications in the CP accelerations. These amplifications then distort the modal components identified using variable decomposition method leading to inaccurate mode shape estimates at the bridge ends. Considering that the majority of the bridges are seated on elastic supports and the likelihood of using a vehicle with two or more axles in vehicle scanning applications, it is imperative to include this combined effect in future VSM studies.
- Elliptic method yields mode shape estimates that are relatively similar to the half-car method. However, it exhibits a shift in the identified mode shapes as the vehicle speed increases and is negatively affected by road roughness. Using a quarter-car provides this method with an advantage in numerical analysis as it avoids potential negative effects caused by the pitching frequency, which are experienced when a half-car model is used.
- The number of spans, despite the presence of an elastic support at the middle support, did not affect the efficacy of the VSMs because the results for the single-span bridge and the two-span bridge are comparable to each other with no significant impact from the middle support.
- Based on the presented results and the two previous items discussed in the conclusions, we can state that utilizing a quarter-car model can offer advantages. However, these observations only reinforce the need to accurately model the vehicle in the numerical models used to assess or develop VSMs. If a single car with two axles is used in the field applications, using a quarter-car model in numerical analysis can potentially hide the problems that can be encountered when the method is used in the field. Thus, it is imperative for any numerical study to accurately model the instrumented vehicle and the vehicle.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Bridge | Mass per length | t/m |
Young’s modulus | GPa | |
Moment of inertia | m | |
Spring coefficient | kN/m | |
Quarter-car | Mass | t |
Stiffness coefficient | kN/m | |
Damping coefficient | kN·s/m | |
Bounce frequency | Hz | |
Half-car | Mass | t |
Mass moment of Inertia | t·m | |
Stiffness coefficient (front) | kN/m | |
Stiffness coefficient (rear) | kN/m | |
Damping coefficient (front) | kN·s/m | |
Damping coefficient (rear) | kN·s/m | |
Axle distance to the mass | m | |
Bounce frequency | Hz | |
Pitching frequency | Hz | |
Truck (in traffic) | Mass | t |
Stiffness coefficient | kN/m | |
Damping coefficient | kN·s/m | |
Bounce frequency | Hz |
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Demirlioglu, K.; Gonen, S.; Erduran, E. Efficacy of Vehicle Scanning Methods in Estimating the Mode Shapes of Bridges Seated on Elastic Supports. Sensors 2023, 23, 6335. https://doi.org/10.3390/s23146335
Demirlioglu K, Gonen S, Erduran E. Efficacy of Vehicle Scanning Methods in Estimating the Mode Shapes of Bridges Seated on Elastic Supports. Sensors. 2023; 23(14):6335. https://doi.org/10.3390/s23146335
Chicago/Turabian StyleDemirlioglu, Kultigin, Semih Gonen, and Emrah Erduran. 2023. "Efficacy of Vehicle Scanning Methods in Estimating the Mode Shapes of Bridges Seated on Elastic Supports" Sensors 23, no. 14: 6335. https://doi.org/10.3390/s23146335
APA StyleDemirlioglu, K., Gonen, S., & Erduran, E. (2023). Efficacy of Vehicle Scanning Methods in Estimating the Mode Shapes of Bridges Seated on Elastic Supports. Sensors, 23(14), 6335. https://doi.org/10.3390/s23146335