Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence System

The estimation of seismic damage to buildings is complicated due to the many sources of uncertainties. This study aims to develop a new approach using an artificial intelligence system called adaptive neuro-fuzzy inference system (ANFIS) model to predict the damage of buildings at urban scale consid...

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Main Authors: Chayanon Hansapinyo, Panon Latcharote, Suchart Limkatanyu
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-10-01
Series:Frontiers in Built Environment
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fbuil.2020.576919/full
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spelling doaj-235fe85bab7f445e8a470820fb229b472020-11-25T01:53:34ZengFrontiers Media S.A.Frontiers in Built Environment2297-33622020-10-01610.3389/fbuil.2020.576919576919Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence SystemChayanon Hansapinyo0Panon Latcharote1Suchart Limkatanyu2Excellence Center in Infrastructure Technology and Transportation Engineering, Department of Civil Engineering, Chiang Mai University, Chiang Mai, ThailandDepartment of Civil and Environmental Engineering, Faculty of Engineering, Mahidol University, Nakhon Pathom, ThailandDepartment of Civil Engineering, Faculty of Engineering, Prince of Songkla University, Songkhla, ThailandThe estimation of seismic damage to buildings is complicated due to the many sources of uncertainties. This study aims to develop a new approach using an artificial intelligence system called adaptive neuro-fuzzy inference system (ANFIS) model to predict the damage of buildings at urban scale considering input uncertainties. First, the study performed seismic damage evaluation of buildings utilizing the capacity spectrum method (CSM) to obtain a set of 57,648 training data from a combination of three main parameters, i.e., 6 earthquake magnitudes, 8 structural types, and 1,201 distances. Next, the data was used to develop a practical ANFIS model for the seismic damage prediction. The variables of the fuzzy system are earthquake magnitudes, structural types, and distance between epicenter and building. To validate the applicability of the proposed model, analyses of spatial seismic building damage under five possible earthquakes in Chiang Mai Municipality were performed by using the proposed methodology. From the comparison of the damaged urban area, small discrepancies between the CSM and the ANFIS results could be observed. It should be noted that the proposed ANFIS model can predict the seismic building damage reasonably well compared with the CSM. Using the method proposed herein, it is possible to create damage scenarios for earthquake-prone areas where only a few seismic data are available, such as developing countries.https://www.frontiersin.org/article/10.3389/fbuil.2020.576919/fullearthquakebuilding damageneural networkfuzzyANFISuncertainty
collection DOAJ
language English
format Article
sources DOAJ
author Chayanon Hansapinyo
Panon Latcharote
Suchart Limkatanyu
spellingShingle Chayanon Hansapinyo
Panon Latcharote
Suchart Limkatanyu
Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence System
Frontiers in Built Environment
earthquake
building damage
neural network
fuzzy
ANFIS
uncertainty
author_facet Chayanon Hansapinyo
Panon Latcharote
Suchart Limkatanyu
author_sort Chayanon Hansapinyo
title Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence System
title_short Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence System
title_full Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence System
title_fullStr Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence System
title_full_unstemmed Seismic Building Damage Prediction From GIS-Based Building Data Using Artificial Intelligence System
title_sort seismic building damage prediction from gis-based building data using artificial intelligence system
publisher Frontiers Media S.A.
series Frontiers in Built Environment
issn 2297-3362
publishDate 2020-10-01
description The estimation of seismic damage to buildings is complicated due to the many sources of uncertainties. This study aims to develop a new approach using an artificial intelligence system called adaptive neuro-fuzzy inference system (ANFIS) model to predict the damage of buildings at urban scale considering input uncertainties. First, the study performed seismic damage evaluation of buildings utilizing the capacity spectrum method (CSM) to obtain a set of 57,648 training data from a combination of three main parameters, i.e., 6 earthquake magnitudes, 8 structural types, and 1,201 distances. Next, the data was used to develop a practical ANFIS model for the seismic damage prediction. The variables of the fuzzy system are earthquake magnitudes, structural types, and distance between epicenter and building. To validate the applicability of the proposed model, analyses of spatial seismic building damage under five possible earthquakes in Chiang Mai Municipality were performed by using the proposed methodology. From the comparison of the damaged urban area, small discrepancies between the CSM and the ANFIS results could be observed. It should be noted that the proposed ANFIS model can predict the seismic building damage reasonably well compared with the CSM. Using the method proposed herein, it is possible to create damage scenarios for earthquake-prone areas where only a few seismic data are available, such as developing countries.
topic earthquake
building damage
neural network
fuzzy
ANFIS
uncertainty
url https://www.frontiersin.org/article/10.3389/fbuil.2020.576919/full
work_keys_str_mv AT chayanonhansapinyo seismicbuildingdamagepredictionfromgisbasedbuildingdatausingartificialintelligencesystem
AT panonlatcharote seismicbuildingdamagepredictionfromgisbasedbuildingdatausingartificialintelligencesystem
AT suchartlimkatanyu seismicbuildingdamagepredictionfromgisbasedbuildingdatausingartificialintelligencesystem
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