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기계학습 기반 철근콘크리트 모멘트골조 축력허용범위 산정 방법Machine Learning-Based Allowable Axial Loading Estimation for RC Moment Frames

Other Titles
Machine Learning-Based Allowable Axial Loading Estimation for RC Moment Frames
Authors
황희진오근영이기학신지욱
Issue Date
May-2025
Publisher
한국지진공학회
Keywords
Machine-Learning; Reinforced concrete moment frames; Seismic performance assessment; Green retrofit; Vertical extension; Allowable axial loading
Citation
한국지진공학회논문집, v.29, no.3, pp 203 - 215
Pages
13
Indexed
KCI
Journal Title
한국지진공학회논문집
Volume
29
Number
3
Start Page
203
End Page
215
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/78239
DOI
10.5000/EESK.2025.29.3.203
ISSN
1226-525X
2234-1099
Abstract
Seismically deficient reinforced concrete(RC) structures experience reduced structural capacity and lateral resistance due to the increased axial loads resulting from green retrofitting and vertical extensions. To ensure structural safety, traditional performance assessment methods are commonly employed. However, the complexity of these evaluations can act as a barrier to the application of green retrofitting and vertical extensions. This study proposes a methodology for rapidly calculating the allowable axial force range of RC buildings by leveraging simplified structural details and seismic wave information. The methodology includes three machine-learning-based models: (1) predicting column failure modes, (2) assessing seismic performance under current conditions, and (3) evaluating seismic performance under amplified mass conditions. A machine learning model was specifically developed to predict the seismic performance of an RC moment frame building using structural details, gravity loads, failure modes, and seismic wave data as input variables, with dynamic response-based seismic performance evaluations as output data. Classifiers developed using various machine learning methodologies were compared, and two optimal ensemble models were selected to effectively predict seismic performance for both current and increased mass scenarios.
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Shin, Ji Uk
공과대학 (건축공학부)
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