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Frequency-based Data-driven Surrogate Model for Efficient Prediction of Irregular Structure’s Seismic Responses

Hoang Dang‐Vu, Quang Dang Nguyen, TaeChoong Chung, Jiuk Shin, Kihak Lee

2021Journal of Earthquake Engineering14 citationsDOI

Abstract

This research proposes a surrogate model to predict the seismic response of individual structural elements in structures whose inherent vertical and horizontal irregularities result in components with different seismic vulnerabilities. A frequency-based data-driven model was developed which predominantly uses the frequency spectrum of earthquakes as input data. The seismic responses of several structural components can be simultaneously generated as output using the proposed model. A comparison of structure fragility assessments obtained with a conventional approach, and the proposed Deep Learning-based approach, was conducted to verify the accuracy of the proposed method’s prediction capability.

Topics & Concepts

FragilityComputer scienceSeismologyGeologyStructural engineeringEngineeringChemistryPhysical chemistrySeismic Performance and AnalysisStructural Health Monitoring TechniquesStructural Response to Dynamic Loads
Frequency-based Data-driven Surrogate Model for Efficient Prediction of Irregular Structure’s Seismic Responses | Litcius