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Estimation of economic seismic loss of steel moment-frame buildings using a machine learning algorithm

Authors
Hwang, Seong-HoonMangalathu, SujithShin, JinwonJeon, Jong-Su
Issue Date
Mar-2022
Publisher
ELSEVIER SCI LTD
Keywords
Expected annual losses; Machine learning algorithm; Structural-modeling-related uncertainty; Steel moment-frame buildings; Seismic risk
Citation
Engineering Structures, v.254
Journal Title
Engineering Structures
Volume
254
URI
https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/21208
DOI
10.1016/j.engstruct.2022.113877
ISSN
0141-0296
1873-7323
Abstract
In this study, the effect of modeling-related uncertainties on the expected annual losses of modern code-compliant steel moment-frame buildings is analyzed. Probabilistic structural models are initially employed to account for all the critical sources of uncertainty. Then, these structural models are used to develop machine-learning-based prediction models to estimate the expected annual losses and the associated economic contrib-utors; the developed machine-learning-based prediction models exhibit an excellent performance in the pre-diction of the economic seismic losses of steel frame buildings. The effect of structural-modeling-related uncertainties on each loss contributor is also evaluated; the effect of uncertain modeling parameters is observed to be more pronounced on loss contributors such as demolition and structural collapse losses that are controlled primarily by ground motions with a low probability of earthquake occurrence.
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Hwang, Seong-Hoon
College of Engineering (School of Architecture)
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