Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic Assessment

The selection of a given method for the seismic vulnerability assessment of buildings is mostly dependent on the scale of the analysis. Results obtained in large-scale studies are usually less accurate than the ones obtained in small-scale studies. In this paper a study about the feasibility of usin...

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Main Author: João M. C. Estêvão
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Buildings
Subjects:
Online Access:https://www.mdpi.com/2075-5309/8/11/151
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spelling doaj-8c9ca3c145864cf18febc0a406912edd2020-11-25T02:24:34ZengMDPI AGBuildings2075-53092018-11-0181115110.3390/buildings8110151buildings8110151Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic AssessmentJoão M. C. Estêvão0DEC-ISE, University of Algarve, 8005-139 Faro, PortugalThe selection of a given method for the seismic vulnerability assessment of buildings is mostly dependent on the scale of the analysis. Results obtained in large-scale studies are usually less accurate than the ones obtained in small-scale studies. In this paper a study about the feasibility of using Artificial Neural Networks (ANNs) to carry out fast and accurate large-scale seismic vulnerability studies has been presented. In the proposed approach, an ANN was used to obtain a simplified capacity curve of a building typology, in order to use the N2 method to assess the structural seismic behaviour, as presented in the Annex B of the Eurocode 8. Aiming to study the accuracy of the proposed approach, two ANNs with equal architectures were trained with a different number of vectors, trying to evaluate the ANN capacity to achieve good results in domains of the problem which are not well represented by the training vectors. The case study presented in this work allowed the conclusion that the ANN precision is very dependent on the amount of data used to train the ANN and demonstrated that it is possible to use ANN to obtain simplified capacity curves for seismic assessment purposes with high precision.https://www.mdpi.com/2075-5309/8/11/151vulnerability assessmentcapacity curvesneural networksearthquakes
collection DOAJ
language English
format Article
sources DOAJ
author João M. C. Estêvão
spellingShingle João M. C. Estêvão
Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic Assessment
Buildings
vulnerability assessment
capacity curves
neural networks
earthquakes
author_facet João M. C. Estêvão
author_sort João M. C. Estêvão
title Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic Assessment
title_short Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic Assessment
title_full Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic Assessment
title_fullStr Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic Assessment
title_full_unstemmed Feasibility of Using Neural Networks to Obtain Simplified Capacity Curves for Seismic Assessment
title_sort feasibility of using neural networks to obtain simplified capacity curves for seismic assessment
publisher MDPI AG
series Buildings
issn 2075-5309
publishDate 2018-11-01
description The selection of a given method for the seismic vulnerability assessment of buildings is mostly dependent on the scale of the analysis. Results obtained in large-scale studies are usually less accurate than the ones obtained in small-scale studies. In this paper a study about the feasibility of using Artificial Neural Networks (ANNs) to carry out fast and accurate large-scale seismic vulnerability studies has been presented. In the proposed approach, an ANN was used to obtain a simplified capacity curve of a building typology, in order to use the N2 method to assess the structural seismic behaviour, as presented in the Annex B of the Eurocode 8. Aiming to study the accuracy of the proposed approach, two ANNs with equal architectures were trained with a different number of vectors, trying to evaluate the ANN capacity to achieve good results in domains of the problem which are not well represented by the training vectors. The case study presented in this work allowed the conclusion that the ANN precision is very dependent on the amount of data used to train the ANN and demonstrated that it is possible to use ANN to obtain simplified capacity curves for seismic assessment purposes with high precision.
topic vulnerability assessment
capacity curves
neural networks
earthquakes
url https://www.mdpi.com/2075-5309/8/11/151
work_keys_str_mv AT joaomcestevao feasibilityofusingneuralnetworkstoobtainsimplifiedcapacitycurvesforseismicassessment
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