Statistical Approach for Vibration-Based Damage Localization in Civil Infrastructures Using Smart Sensor Networks
Abstract
:1. Introduction
- The possibility of onboard computation of the damage index at selected nodes, which autonomously and timely send alarm messages, without requiring complex transmission/synchronization strategies to convey data to a central processing unit.
- A limited wireless transmission rate thanks to the onboard computation of the damage index and the implementation of adaptive downsampling of the structural responses before transmission. The aim is to extract and transmit only the frequency bands containing the relevant information.
- The data-driven nature of the approach, which does not involve any model of the structure (either analytical or numerical, e.g., finite element models), thereby reducing the computational effort.
2. Instantaneous Identification of Modal Parameters
3. Damage Identification Method
3.1. The Damage Sensitive Feature: Interpolation Error
3.2. The Decentralized Algorithm: Clamped-Clump Interpolation Method
3.3. The Damage Index: Modified Statistical Interpolation Damage Index
4. Numerical Benchmark
4.1. Description of the Structure
4.2. Subsets of Sensors and Data Processing
4.3. Results
5. S101 Bridge
5.1. Description of the Bridge and Monitoring System
5.2. Subsets of Sensors and Data Processing
5.3. Results
6. Discussion
- (1)
- Computation of instantaneous mode shapes using CFBs. The mode shapes are estimated using the responses over subsets of sensors organized according to different configurations.
- (2)
- Computation of instantaneous values of the damage feature, i.e., the interpolation error, at the inner sensors of each subset using the clamped-clump interpolation method.
- (3)
- Computation of a novel damage index, i.e., the MSIDI, from the statistical distributions of the interpolation error in the reference and the inspection state.
- In the damaged scenarios, the damage feature increases at the damage locations with respect to the reference condition. Conversely, the damage feature in the reference and the inspection state are similar at non-damaged locations. This is exemplified in Figure 5, Figure 10, and Figure 11, which display the histogram plot of the damage feature for different damage scenarios and at several sensor locations. It is noted, qualitatively, that the overlapping area between the distribution of the interpolation error in the reference and the damaged scenarios decreases as the magnitude of damage increases.
- For single damage scenarios, the values of the MSIDI in general increase according to the increasing severity of the damage. This is clearly shown by the comparison of DS1, DS3, and DS2 corresponding to increasing losses of stiffness at the same location (see the first row of Figure 6). This is directly linked to the definition of the damage indicator, see Equation (13).
- The same stiffness loss corresponds to different values of the damage index depending on the location of the damage. This is shown, for example, by the comparison of DS1 and DS4 or DS2 and DS5 corresponding to the same damage severity but different values of the damage feature.
- For multiple damage scenarios (e.g., DS9 in Figure 6), the detection of certain damages can be hindered by damages at other locations. This is not only due to the dependence of the damage index on the damage location (remarked at the previous point), but also on the dependence of the damage feature at a given location on damage at other locations. This is shown for example by the comparison between DS6 and DS9. In the second scenario, there is a further damaged section at midspan, but the value of the damage index at the central damage location is lower with respect to the others. This suggests that damage at midspan affects the values of the damage indexes at the other two locations.
- The comparison of the results obtained herein with those reported in Reference [28] using the SIDI show the higher sensitivity of the MSIDI with respect to the former version of the damage index.
- The threshold value used to compare the distribution of the interpolation error in the MSIDI is automatically determined, which simplifies the computation of the damage index.
- The evaluation of the damage features is carried out considering two different sensor subset configurations. This overcomes the difficulties related to the computation of the damage feature at the boundaries of the subsets.
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Damage Scenarios | Damage Type |
---|---|
DS1 | d1 |
DS2 | d2 |
DS3 | d3 |
DS4 | d4 |
DS5 | d5 |
DS6 | d4, d6 |
DS7 | d5, d6 |
DS8 | d5, d7 |
DS9 | d1, d4, d6 |
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Giordano, P.F.; Quqa, S.; Limongelli, M.P. Statistical Approach for Vibration-Based Damage Localization in Civil Infrastructures Using Smart Sensor Networks. Infrastructures 2021, 6, 22. https://doi.org/10.3390/infrastructures6020022
Giordano PF, Quqa S, Limongelli MP. Statistical Approach for Vibration-Based Damage Localization in Civil Infrastructures Using Smart Sensor Networks. Infrastructures. 2021; 6(2):22. https://doi.org/10.3390/infrastructures6020022
Chicago/Turabian StyleGiordano, Pier Francesco, Said Quqa, and Maria Pina Limongelli. 2021. "Statistical Approach for Vibration-Based Damage Localization in Civil Infrastructures Using Smart Sensor Networks" Infrastructures 6, no. 2: 22. https://doi.org/10.3390/infrastructures6020022
APA StyleGiordano, P. F., Quqa, S., & Limongelli, M. P. (2021). Statistical Approach for Vibration-Based Damage Localization in Civil Infrastructures Using Smart Sensor Networks. Infrastructures, 6(2), 22. https://doi.org/10.3390/infrastructures6020022