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Assessment of Earthquake Destructive Power to Structures Based on Machine Learning Methods
Content Provider | MDPI |
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Author | Zheng, Ruihao Xiong, Chen Deng, Xiangbin Li, Qiangsheng Li, Yi |
Copyright Year | 2020 |
Description | This study presents a machine learning-based method for the destructive power assessment of earthquake to structures. First, the analysis procedure of the method is presented, and the backpropagation neural network (BPNN) and convolutional neural network (CNN) are used as the machine learning algorithms. Second, the optimized BPNN architecture is obtained by discussing the influence of a different number of hidden layers and nodes. Third, the CNN architecture is proposed based on several classical deep learning networks. To build the machine learning models, 50,570 time-history analysis results of a structural system subjected to different ground motions are used as training, validation, and test samples. The results of the BPNN indicate that the features extraction method based on the short-time Fourier transform (STFT) can well reflect the frequency-/time-domain characteristics of ground motions. The results of the CNN indicate that the CNN exhibits better accuracy (R2 = 0.8737) compared with that of the BPNN (R2 = 0.6784). Furthermore, the CNN model exhibits remarkable computational efficiency, the prediction of 1000 structures based on the CNN model takes 0.762 s, while 507.81 s are required for the conventional time-history analysis (THA)-based simulation. Feature visualization of different layers of the CNN reveals that the shallow to deep layers of the CNN can extract the high to low-frequency features of ground motions. The proposed method can assist in the fast prediction of engineering demand parameters of large-number structures, which facilitates the damage or loss assessments of regional structures for timely emergency response and disaster relief after earthquake. |
Starting Page | 6210 |
e-ISSN | 20763417 |
DOI | 10.3390/app10186210 |
Journal | Applied Sciences |
Issue Number | 18 |
Volume Number | 10 |
Language | English |
Publisher | MDPI |
Publisher Date | 2020-09-07 |
Access Restriction | Open |
Subject Keyword | Applied Sciences Civil Engineering Mechanical Engineering Machine Learning Backpropagation Neural Network Convolutional Neural Network Seismic Damage Simulation Time-history Analysis Earthquake Destructive Power |
Content Type | Text |
Resource Type | Article |