Detection of Partially Structural Collapse Using Long-Term Small Displacement Data from Satellite Images
Abstract
:1. Introduction
2. Proposed Methods
2.1. Data Augmentation by Markov Chain Monte Carlo
2.2. Feature Normalization of MCMC-ANN-MSD
2.2.1. Unsupervised Auto-Associative Neural Network
2.2.2. ANN Hyperparameter Selection
Algorithm 1. The main steps of the hyperparameter selection of the number of neurons of the hidden layers of an auto-associative neural network. |
Inputs: Input data X, and , where > |
For i = 1: Do |
For j = 1: Do |
1. Learn a network through the ith and jth number of neurons of the mapping/de-mapping and bottleneck layers. |
2. Determine the output of the network, that is . |
3. Calculate the residual . |
4. Apply the residual matrix to the MSD equation as a new training dataset |
5. Determine distance values using all samples in Ex. |
6. Calculate the variance of the calculated distance quantities regarding the ith and jth numbers. |
7. Save the calculate variance amount in a matrix, where the ith row and jth column belong to this amount. |
End |
End |
8. Select the smallest quantity of the stored variances from Step 7. |
9. Check the occurrence of overfitting by Equations (7) and (8). In the case of an occurring overfitting problem, go to Step 8 and choose the next smallest variance amount to make sure that the overfitting problem does not occur. |
10. Select the numbers associated with the stored matrix row and column with the smallest variance amount that pertains to the optimal number of neurons of the mapping/de-mapping (lm) and bottleneck (lb) layers, respectively. |
Outputs: The optimal number of neurons lm and lb |
2.3. Feature Normalization of MCMC-TSL-MSD
2.3.1. TSL Hyperparameter Selection
2.4. Novelty Detection by MSD
- If each of the distance values exceeds the threshold boundary, one should trigger the emergence of damage
- If the distance values are under the threshold boundary, one should ensure the safe condition of the structure.
3. Application: The Tadcaster Bridge
3.1. A brief Description of the Bridge
3.2. Data Augmentation and EOV Evaluation
3.3. Verification of the Proposed MCMC-ANN-MSD Method
3.4. Verification of the Proposed MCMC-TSL-MSD Method
4. Conclusions
- (1)
- In general, a long-term monitoring strategy contains the EOV conditions in measured data or features (i.e., displacement samples) extracted from raw measurements (i.e., SAR images). However, when there are inadequate or few data/feature samples, it is difficult to graphically observe their variations. The proposed strategy for augmenting the small data enabled us to better visualize the variations caused by the EOV conditions and any unknown variability sources.
- (2)
- The proposed MCMC-ANN-MSD could handle the problem of the variability attributable to the environmental/operational conditions by obtaining smoother novelty scores. It was observed that the ANN based on the auto-associative neural network significantly reduced the EOV effects so that the results became unreliable without this tool.
- (3)
- Due to some false alarms in the novelty scores of the training and validation samples, the MCMC-ANN-MSD method performed better via the EVT-based threshold estimator against the CLT.
- (4)
- The proposed MCMC-TSL-MSD method better decreased the effects of the EOV conditions via obtaining smaller rates of false positive and false negative against the previous proposed method.
- (5)
- Due to better performance of the MCMC-TSL-MSD method in terms of smaller rates of false positive and false negative, it was still successful in accurately making decisions via the classical CLT-based threshold estimator.
Author Contributions
Funding
Conflicts of Interest
References
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Entezami, A.; De Michele, C.; Arslan, A.N.; Behkamal, B. Detection of Partially Structural Collapse Using Long-Term Small Displacement Data from Satellite Images. Sensors 2022, 22, 4964. https://doi.org/10.3390/s22134964
Entezami A, De Michele C, Arslan AN, Behkamal B. Detection of Partially Structural Collapse Using Long-Term Small Displacement Data from Satellite Images. Sensors. 2022; 22(13):4964. https://doi.org/10.3390/s22134964
Chicago/Turabian StyleEntezami, Alireza, Carlo De Michele, Ali Nadir Arslan, and Bahareh Behkamal. 2022. "Detection of Partially Structural Collapse Using Long-Term Small Displacement Data from Satellite Images" Sensors 22, no. 13: 4964. https://doi.org/10.3390/s22134964
APA StyleEntezami, A., De Michele, C., Arslan, A. N., & Behkamal, B. (2022). Detection of Partially Structural Collapse Using Long-Term Small Displacement Data from Satellite Images. Sensors, 22(13), 4964. https://doi.org/10.3390/s22134964