2022
DOI: 10.52547/nmce.6.3.28
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A swift neural network-based algorithm for demand estimation in concrete moment-resisting buildings

Abstract: Rapid evaluation of demand parameters of different types of buildings is crucial for social restoration after damaging earthquakes. Previous studies proposed numerous methodologies to measure the performance of buildings for assessing the potential risk under the seismic hazard. However, time-consuming Nonlinear Response History Analysis (NRHA) barricaded implementing a prompt loss estimation for emergency confronting actions. The present study proposes a swift framework for demand estimation in concrete momen… Show more

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Cited by 2 publications
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