AI-based system for quick seismic estimation of building structures on urban disaster-prevention in Taiwan

IF 1 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY
Jin-Biau Wei, Yu-Chi Sung, Chung-Min Chiu, Chia-Hsuan Li, Sheng-Wei Kuo, Zhi-Yuan Chen, Xiao-Qin Liu, Siao-Syun Ke, Chih-Hao Hsu
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引用次数: 0

Abstract

ABSTRACTAccording to a survey by the Ministry of the Interior (MOI) in Taiwan, around half of the 8.93 million buildings in the country, which are over 30 years old, have inadequate seismic capacity due to outdated design standards or aging materials. To evaluate seismic capacity, a preliminary seismic evaluation (PSE) system that involves site investigation and shop drawing review (if available) by professional engineers is typically used. However, given the significant financial and manpower resources required, performing PSE on all buildings in Taiwan is not practical. In order to overcome the challenge of evaluating the seismic capacity of buildings in a cost-effective and efficient manner, this study developed an enhanced PSE system called QSEBS, based on deep learning technology. By leveraging government property tax databases, QSEBS can rapidly estimate the seismic capacity of buildings, with results consistent with those of the PSERCB system. The key advantage of QSEBS is its ability to eliminate the need for human labors in PSE, saving significant amounts of money and manpower, particularly for a large number of buildings. Thus, QSEBS can serve as a valuable tool to support the government’s urban disaster-prevention strategy and can be widely implemented.CO EDITOR-IN-CHIEF: Ou, Yu-ChenASSOCIATE EDITOR: Ou, Yu-ChenKEYWORDS: Back-propagation neural network (BPNN)preliminary seismic evaluation of reinforced concrete building (PSERCB)quick seismic estimation of building structures (QSEBS)Kruskal-Wallis H testdata cleaning Nomenclature Ac2=seismic-capacity indexA2500=seismic demand for a 2500-year return period earthquakeAc2/IA2500=seismic capacity-demand ratio for seismic vulnerability assessmentC=ratio of spectral acceleration divided by ground acceleration for a specific structural period in elastic normalized response spectrum of accelerationD=diameter of the rebars and stirrupsE=convenient representation of 2μ−1E_TACW=equivalent total area of column-wallE_W/CW=equivalent width per column-wallE_D/CW=equivalent depth per column-wallH=value of Kruskal-Wallis H testH0=null hypotheses for correlation evaluationI=importance factorR=response reduction factorSa=parameter of elastic design spectral acceleration responseTn=structural periodVu, e=ultimate elastic base shear demandVy=yield base shear demandVS30=average shear wave velocity for a soil depth of 30 mW=sum of weight lumped at the ground floor’s ceiling levelμ=ductility level△u=ultimate or code-specified displacement△y=yield displacementχ2=Chi-square valueDisclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThis study was supported by the National Science and Technology Center for Disaster Reduction, Taiwan [Grant No. NCDR-S-111012].
基于人工智能的台湾城市防灾建筑结构快速地震估计系统
【摘要】根据台湾内政部的一项调查,在台湾893万幢楼龄超过30年的建筑物中,约有一半因设计标准过时或材料老化而抗震能力不足。为了评估地震能力,通常使用初步地震评估(PSE)系统,包括由专业工程师进行现场调查和车间图纸审查(如果有的话)。然而,考虑到需要大量的财政和人力资源,对台湾所有的建筑物进行PSE是不现实的。为了克服以经济高效的方式评估建筑物抗震能力的挑战,本研究开发了一种基于深度学习技术的增强型PSE系统,称为QSEBS。通过利用政府财产税数据库,QSEBS可以快速估计建筑物的抗震能力,其结果与PSERCB系统的结果一致。QSEBS的主要优点是它能够消除对PSE中人工劳动的需求,节省大量的金钱和人力,特别是对于大量的建筑物。因此,QSEBS可以作为支持政府城市防灾战略的宝贵工具,并可以广泛实施。副主编:欧宇晨【关键词】地震易损性评价;地震易损性评价;地震易损性评价;地震易损性评价;地震易损性评价;;地震易损性评价;;加速度响应谱ond =钢筋和箍筋直径se = 2μ−1E_TACW=柱等效总面积-墙体w /CW=每柱等效宽度-墙体d /CW=每柱等效深度-墙体H= Kruskal-Wallis H值testH0=相关性评价的零假设i =重要因子r =响应缩减因子sa =弹性设计谱加速度响应参数setn =结构周期dvu;e=极限弹性基础剪切需求y=屈服基础剪切需求dvs30 =土层深度为30mw时的平均剪切波速=地面层顶板的重量总和μ=延性水平△u=极限或规范规定的位移△y=屈服位移χ2=卡方值披露声明作者未报告潜在的利益冲突。本研究由台湾国家减灾科学技术中心资助[批准号:No. 5]。ncdr - s - 111012]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of the Chinese Institute of Engineers
Journal of the Chinese Institute of Engineers 工程技术-工程:综合
CiteScore
2.30
自引率
9.10%
发文量
57
审稿时长
6.8 months
期刊介绍: Encompassing a wide range of engineering disciplines and industrial applications, JCIE includes the following topics: 1.Chemical engineering 2.Civil engineering 3.Computer engineering 4.Electrical engineering 5.Electronics 6.Mechanical engineering and fields related to the above.
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