Artificial earthquake record generation using cascade neural network

This paper presents the results of using artificial neural networks (ANN) in an inverse mapping problem for earthquake accelerograms generation. This study comprises of two parts: 1-D site response analysis; performed for Dubai Emirate at UAE, where eight earthquakes records are selected and spectra...

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Main Authors: Bani-Hani Khaldoon A., Abu Qamar Mu’ath I.
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201712001010
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spelling doaj-291e2963fad447138173c29d1aeb94342021-02-02T01:19:48ZengEDP SciencesMATEC Web of Conferences2261-236X2017-01-011200101010.1051/matecconf/201712001010matecconf_ascm2017_01010Artificial earthquake record generation using cascade neural networkBani-Hani Khaldoon A.0Abu Qamar Mu’ath I.1Civil Engineering, Jordan University of Science & TechnologyCivil Engineering, Yarmouk UniversityThis paper presents the results of using artificial neural networks (ANN) in an inverse mapping problem for earthquake accelerograms generation. This study comprises of two parts: 1-D site response analysis; performed for Dubai Emirate at UAE, where eight earthquakes records are selected and spectral matching are performed to match Dubai response spectrum using SeismoMatch software. Site classification of Dubai soil is being considered for two classes C and D based on shear wave velocity of soil profiles. Amplifications factors are estimated to quantify Dubai soil effect. Dubai’s design response spectra are developed for site classes C & D according to International Buildings Code (IBC -2012). In the second part, ANN is employed to solve inverse mapping problem to generate time history earthquake record. Thirty earthquakes records and their design response spectrum with 5% damping are used to train two cascade forward backward neural networks (ANN1, ANN2). ANN1 is trained to map the design response spectrum to time history and ANN2 is trained to map time history records to the design response spectrum. Generalized time history earthquake records are generated using ANN1 for Dubai’s site classes C and D, and ANN2 is used to evaluate the performance of ANN1.https://doi.org/10.1051/matecconf/201712001010
collection DOAJ
language English
format Article
sources DOAJ
author Bani-Hani Khaldoon A.
Abu Qamar Mu’ath I.
spellingShingle Bani-Hani Khaldoon A.
Abu Qamar Mu’ath I.
Artificial earthquake record generation using cascade neural network
MATEC Web of Conferences
author_facet Bani-Hani Khaldoon A.
Abu Qamar Mu’ath I.
author_sort Bani-Hani Khaldoon A.
title Artificial earthquake record generation using cascade neural network
title_short Artificial earthquake record generation using cascade neural network
title_full Artificial earthquake record generation using cascade neural network
title_fullStr Artificial earthquake record generation using cascade neural network
title_full_unstemmed Artificial earthquake record generation using cascade neural network
title_sort artificial earthquake record generation using cascade neural network
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2017-01-01
description This paper presents the results of using artificial neural networks (ANN) in an inverse mapping problem for earthquake accelerograms generation. This study comprises of two parts: 1-D site response analysis; performed for Dubai Emirate at UAE, where eight earthquakes records are selected and spectral matching are performed to match Dubai response spectrum using SeismoMatch software. Site classification of Dubai soil is being considered for two classes C and D based on shear wave velocity of soil profiles. Amplifications factors are estimated to quantify Dubai soil effect. Dubai’s design response spectra are developed for site classes C & D according to International Buildings Code (IBC -2012). In the second part, ANN is employed to solve inverse mapping problem to generate time history earthquake record. Thirty earthquakes records and their design response spectrum with 5% damping are used to train two cascade forward backward neural networks (ANN1, ANN2). ANN1 is trained to map the design response spectrum to time history and ANN2 is trained to map time history records to the design response spectrum. Generalized time history earthquake records are generated using ANN1 for Dubai’s site classes C and D, and ANN2 is used to evaluate the performance of ANN1.
url https://doi.org/10.1051/matecconf/201712001010
work_keys_str_mv AT banihanikhaldoona artificialearthquakerecordgenerationusingcascadeneuralnetwork
AT abuqamarmuathi artificialearthquakerecordgenerationusingcascadeneuralnetwork
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