기계학습 기반 지진 취약 철근콘크리트 골조에 대한 신속 내진성능 등급 예측모델 개발 연구Machine Learning-based Rapid Seismic Performance Evaluation for Seismically-deficient Reinforced Concrete Frame
- Other Titles
- Machine Learning-based Rapid Seismic Performance Evaluation for Seismically-deficient Reinforced Concrete Frame
- Authors
- 강태욱; 강재도; 오근영; 신지욱
- Issue Date
- Jul-2024
- Publisher
- 한국지진공학회
- Keywords
- Seismically-deficient RC frame; FRP jacketing system; Machine learning; Rapid seismic performance assessment
- Citation
- 한국지진공학회논문집, v.28, no.4, pp 193 - 203
- Pages
- 11
- Indexed
- KCI
- Journal Title
- 한국지진공학회논문집
- Volume
- 28
- Number
- 4
- Start Page
- 193
- End Page
- 203
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/71117
- DOI
- 10.5000/EESK.2024.28.4.193
- ISSN
- 1226-525X
2234-1099
- Abstract
- Existing reinforced concrete (RC) building frames constructed before the seismic design was applied have seismically deficient structural details, and buildings with such structural details show brittle behavior that is destroyed early due to low shear performance. Various reinforcement systems, such as fiber-reinforced polymer (FRP) jacketing systems, are being studied to reinforce the seismically deficient RC frames. Due to the step-by-step modeling and interpretation process, existing seismic performance assessment and reinforcement design of buildings consume an enormous amount of workforce and time. Various machine learning (ML) models were developed using input and output datasets for seismic loads and reinforcement details built through the finite element (FE) model developed in previous studies to overcome these shortcomings. To assess the performance of the seismic performance prediction models developed in this study, the mean squared error (MSE), R-square (R2), and residual of each model were compared. Overall, the applied ML was found to rapidly and effectively predict the seismic performance of buildings according to changes in load and reinforcement details without overfitting. In addition, the best-fit model for each seismic performance class was selected by analyzing the performance by class of the ML models.
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Collections - 공과대학 > School of Architectural Engineering > Journal Articles
- 공학계열 > 건축공학과 > Journal Articles

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