A Comparative Study of Damage-Sensitive Features for Rapid Data-Driven Seismic Structural Health Monitoring
Abstract
:1. Introduction
- We offer a systematic and thorough comparison on the capacity of DSFs to detect, localize, and quantify damage using highly transient vibration response data recorded during earthquakes.
- We compare the capacity of such established DSFs to distinguish between temporary nonlinearity and residual stiffness degradation.
- We offer a data-driven evaluation in terms of absolute and incremental damage occurrence during seismic sequences.
2. Materials and Methods
2.1. Damage-Sensitive Features
- The first class contains DSFs, whose primary ingredient is the characteristic quantity of transmissibility, which operates in the frequency domain (see Section 2.1.1). Thus, stiffness changes, which may be provoked by nonlinear behavior, are revealed by transmissibility-based DSFs through changes in the (amplitude of the) frequency response function of an input–output signal pair.
- The second class of DSFs derives from correlation and coherence as primary quantity (see Section 2.1.2). These DSFs track the similarity in behavior of two time-series in the time domain (correlation) and frequency domain (coherence). The onset of nonlinear behavior typically appears as loss of correlation/coherence for specific frequency bandwidths.
- Energy-based DSFs (see Section 2.1.3) rely on the time-frequency representation offered by the wavelet decomposition in order to detect changes in energy distribution in the frequency domain and potentially reveal shifts linked to stiffness and damping.
- DSFs that approximate the relationship between input accelerations and output displacements directly (see Section 2.1.4) are used as a representation of the stiffness that links the restoring force to displacement.
- In addition, DSFs that derive from OMA (see Section 2.1.5) can be used to indicate permanent (residual) damage, which alters modal properties, such as natural frequencies and mode shapes.
2.1.1. Transmissibility-Based Features
2.1.2. Coherence and Correlation
2.1.3. Energy-Based Indicators
2.1.4. Linear Stiffness Indicators
2.1.5. Features Originating from Operational Modal Analysis
2.1.6. Summary of DSFs
2.2. Extraction of Damage Indicators
3. Results
3.1. Simulated Case Study
3.1.1. Model Simulations
3.1.2. Damage Detection and Quantification
- The correlation between a DSF and an EDP, such as maximum transient roof displacement or the DI by Park&Ang [87], is defined using Equation (19):
- The capacity of a DSF to distinguish between building responses of linear buildings () and buildings that sustained significant nonlinearity (). This is quantified as the probability of exceeding the thresholds given a DSF value, , which is computed using the so-called IM-based method, as described by Iervolino [88] and illustrated in Figure 5a,b. The efficacy in distinguishing between separate damage states is evaluated as the probability of exceeding a of , for the DSF value that produces a probability of to exceed .
- The third PI evaluates the probability of erroneous damage detection. To this end, the number of GMs, for which the detection threshold (derived using reference AV data) is exceeded, is calculated. This procedure is described in Figure 5c.
- Finally, the fourth PI is related to the minimum value of EDP/, for which the DSF detects damage (see Figure 5d). This PI is evaluated as the mean EDP/ value, at which the DSF crosses the detection threshold. Similarly to the previous PI, this is defined using reference (“healthy”) AV data. In both cases, the detection threshold is set to the value corresponding to a cumulative probability of for the healthy reference distribution.
3.1.3. Damage Localization
3.1.4. Tracking DSFs in the Time Domain to Detect Nonlinearity
3.1.5. Sensitivity to Measurement Noise
3.2. Shake-Table Data
3.3. Limitations
4. Conclusions
- Damage-sensitive features derived in the frequency domain, using either transmissibility or wavelet decomposition, are promising for data-driven nonlinearity detection. However, reference linear data are required to detect the onset of nonlinearity.
- Damage-sensitive features do not only indicate presence of damage and evolution of nonlinearity but further carry the potential to localize damage and quantify its extent.
- Damage-sensitive features allow to identify the evolution of the structural state and the accumulation of damage over the course of multiple earthquake instances, in addition to picking up the severity of damage that is incrementally introduced by a specific earthquake in a sequence.
- DSFs calculated for short time windows are necessary to track nonlinearity over time, which enables differentiating between reversible and irreversible stiffness drops.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Earthquake | Year | Station | Fault Type | Database | ||
---|---|---|---|---|---|---|
L’Aquila (IT) | 2009 | Gran Sasso (Assergi) | Normal | 6.4 | 6.30 | PEER |
Montenegro (MG) | 1979 | Ulcinj—Hotel Albatros | Reverse | 4.35 | 7.10 | PEER |
Gilroy (US) | 2002 | Palo Alto (Fire Stat) | Strike slip | 72.49 | 4.90 | PEER |
Northridge (US) | 1994 | Bev. Hills 12520 Mulhol | Reverse | 18.36 | 6.69 | PEER |
Imperial Valley (US) | 1979 | Delta | Strike slip | 22.03 | 6.53 | PEER |
Christchurch (NZ) | 2011 | Riccarton High School | Rev. Obl. | 9.44 | 6.20 | PEER |
Umbra Marche (IT) | 1997 | Nocera Umbra | Normal | 8.92 | 6.00 | PEER |
Kozani (GR) | 1995 | Kozani | Normal | 19.54 | 6.40 | PEER |
Kobe (JP) | 1995 | Fukushima | Strike slip | 17.85 | 6.90 | PEER |
Chi-Chi (TW) | 1999 | CHY024 | Rev. Obl. | 9.62 | 7.62 | PEER |
Loma Prieta (US) | 1989 | Capitola Fire Station | Rev. Obl. | 12.53 | 6.93 | PEER |
Friuli (IT) | 1976 | Buia | Reverse | 11.03 | 5.91 | PEER |
Izmit (TK) | 1999 | AI_081_ IZN_KY | Strike slip | 40.3 | 7.60 | ESMD |
Erzincan (TK) | 1992 | 2402 | Strike slip | 0.9 | 6.60 | PEER |
Aigio (GR) | 1995 | AMIA | Normal | 16.6 | 6.50 | PEER |
Adriatic Sea (ALB) | 2019 | DURR | Thrust | 4.4 | 5.60 | ESMD |
Tirana (ALB) | 1988 | Strike slip | 7 | 5.90 | REXEL | |
Vallo di Nera (IT) | 1980 | NRC | Strike slip | 10 | 5.00 | ESMD |
Amatrice (IT) | 2017 | MSC | Normal | 8.2 | 5.60 | ESMD |
Colfionto (IT) | 1997 | CLC | Strike slip | 1.2 | 4.30 | ESMD |
Lytle Creek (US) | 1970 | Cedar Springs Pump. | Rev. Obl. | 22.94 | 5.33 | ESMD |
Appendix B
Appendix C
Property | Ref. | Dam | Dam | Dam | Dam | Dam |
---|---|---|---|---|---|---|
6.588 | 6.475 | 6.483 | 6.509 | 6.539 | 6.573 | |
−0.017 | −0.016 | −0.012 | −0.007 | −0.002 | ||
18.248 | 17.962 | 18.190 | 18.175 | 17.928 | 17.991 | |
−0.016 | −0.003 | −0.004 | −0.018 | −0.014 | ||
28.926 | 28.665 | 28.865 | 28.439 | 28.938 | 28.192 | |
−0.009 | −0.002 | −0.017 | 0.000 | −0.025 | ||
−231.227 | 224.273 | 3.818 | 2.364 | 0.773 | ||
−0.008 | −1.108 | 1.069 | 0.045 | 0.012 | ||
0.026 | 0.021 | −0.603 | 0.552 | 0.015 | ||
0.038 | 0.033 | 0.020 | −0.254 | 0.162 | ||
−0.227 | 0.130 | −0.006 | 0.052 | 0.060 | ||
0.037 | −0.051 | −0.070 | 0.036 | 0.048 | ||
0.070 | 0.006 | 0.128 | −0.207 | 0.009 | ||
−0.234 | −0.059 | −0.043 | −1.604 | 2.027 |
Appendix D
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DSF | Domain | Signal | Nonlineariy | Residual Damage | Localization | Equation |
---|---|---|---|---|---|---|
f | AV & GM | ✔ | ✔ | (✔) | (4) | |
f | AV & GM | ✔ | ✔ | (✔) | (2) | |
f | AV & GM | ✔ | ✔ | (✔) | (3) | |
tf | AV & GM | ✔ | ✔ | ✔ | (6) | |
f | GM | ✔ | (4) | |||
tf | GM | ✔ | ✔ | (9) | ||
tf | GM | ✔ | ✔ | (10) | ||
tf | AV & GM | ✔ | ✔ | (7) | ||
tf | AV & GM | ✔ | ✔ | ✔ | (8) | |
t | AV & GM | ✔ | ✔ | ✔ | (11) | |
t | GM | ✔ | ✔ | (12) | ||
f | AV | ✔ | ||||
f | AV | ✔ | ✔ | (15) | ||
f | AV | ✔ | ||||
f | AV | ✔ | ✔ | (14) |
Link | Stiffness (kN/mm) | Yield Force (kN) |
---|---|---|
0-1 | 270 | 500 |
1-2 | 250 | 433 |
2-3 | 230 | 350 |
3-4 | 210 | 300 |
4-5 | 190 | 225 |
Test # | PGA [g] | D.G. | Damage Description |
---|---|---|---|
1 | 0.05 | 1 | Single hairline crack one URM wall of first floor. |
2 | 0.1 | 1 | Haircracks in one wall of first two floors and in the construction joint between wall and foundation |
3 | 0.2 | 1 | Cracks in all masonry walls of first two floors |
4 | 0.3 | 2 | Several diagonal cracks over the entire wall height of one wall of the 1st floor with negligible residual crack width. Many flexural cracks in the concrete slab of the first floor; masonry spandrels and concrete wall remained undamaged. |
5 | 0.4 | 2 | Same as previous. |
6 | 0.6 | 2 | Significant increase in damage to the structure. All masonry walls with diagonal cracks at all floors. First and second floor walls present residual cracks of 0.8 mm. |
7 | 0.4 | 2 | This test, with a smaller amplitude than the previous EQK6, was intended to simulate a possible aftershock but led only to very minor additional dam-age to the structure. |
8 | 0.7 | 3 | Structure was severely damaged. Damage in the masonry walls started concentrating in one diagonal crack. Diagonal cracks passed through bricks. |
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Reuland, Y.; Martakis, P.; Chatzi, E. A Comparative Study of Damage-Sensitive Features for Rapid Data-Driven Seismic Structural Health Monitoring. Appl. Sci. 2023, 13, 2708. https://doi.org/10.3390/app13042708
Reuland Y, Martakis P, Chatzi E. A Comparative Study of Damage-Sensitive Features for Rapid Data-Driven Seismic Structural Health Monitoring. Applied Sciences. 2023; 13(4):2708. https://doi.org/10.3390/app13042708
Chicago/Turabian StyleReuland, Yves, Panagiotis Martakis, and Eleni Chatzi. 2023. "A Comparative Study of Damage-Sensitive Features for Rapid Data-Driven Seismic Structural Health Monitoring" Applied Sciences 13, no. 4: 2708. https://doi.org/10.3390/app13042708
APA StyleReuland, Y., Martakis, P., & Chatzi, E. (2023). A Comparative Study of Damage-Sensitive Features for Rapid Data-Driven Seismic Structural Health Monitoring. Applied Sciences, 13(4), 2708. https://doi.org/10.3390/app13042708