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Unsupervised Deep Neural Network for Near-real-time Damage Identification of Structures Subject to Earthquake Excitations

 Unsupervised Deep Neural Network for Near-real-time Damage Identification of Structures Subject to Earthquake Excitations
Auteur(s): ,
Présenté pendant IABSE Conference: Risk Intelligence of Infrastructures, Seoul, South Korea, 9-10 November 2020, publié dans , pp. 51-58
DOI: 10.2749/seoul.2020.051
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This paper presents a Deep Neural Network (DNN) framework for near-real-time damage identifi- cation using structural response data from an earthquake event. The proposed network is con- structed b...
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Détails bibliographiques

Auteur(s): (Seoul National University, Seoul, S. Korea)
(Seoul National University, Seoul, S. Korea)
Médium: papier de conférence
Langue(s): anglais
Conférence: IABSE Conference: Risk Intelligence of Infrastructures, Seoul, South Korea, 9-10 November 2020
Publié dans:
Page(s): 51-58 Nombre total de pages (du PDF): 8
Page(s): 51-58
Nombre total de pages (du PDF): 8
DOI: 10.2749/seoul.2020.051
Abstrait:

This paper presents a Deep Neural Network (DNN) framework for near-real-time damage identifi- cation using structural response data from an earthquake event. The proposed network is con- structed by Variational Autoencoder (VAE), which is a self-supervised DNN that can learn probabil- istic characteristics of the latent variables. The network is trained using the flexibility matrix of the target structure at a healthy state obtained by Operational Modal Analysis (OMA) using structural responses. Earthquake-induced damage is located and quantified by using the flexibility disassem- bly-based method in near-real-time. As a numerical example, structural analysis is performed for a 5-story, 5-bay steel frame structure under 20,000 artificial ground motions, which are pre-assigned to train and test datasets in the ratio of 9:1. After training the network, the near-real-time damage identification is performed for each of the simulated damage conditions using real ground motions.

Mots-clé:
tremblements de terre