데이터 증강기법과 서포트 벡터 회귀를 활용한 초고층 건물 커튼월 공사 기간 예측Predicting Curtain Wall Works Duration in High-rise Building Projects Using Data Augmentation Techniques and Support Vector Machines
- Other Titles
- Predicting Curtain Wall Works Duration in High-rise Building Projects Using Data Augmentation Techniques and Support Vector Machines
- Authors
- 윤혜순; 백영건; 박상준; 장재호; 김주형
- Issue Date
- Dec-2024
- Publisher
- 대한건축학회
- Keywords
- Construction Duration; Data Augmentation Technique; Machine Learning; 데이터 증강 기법; 서포트 벡터 회귀; 공사 기간
- Citation
- 대한건축학회논문집, v.40, no.12, pp 87 - 96
- Pages
- 10
- Indexed
- SCOPUS
KCI
- Journal Title
- 대한건축학회논문집
- Volume
- 40
- Number
- 12
- Start Page
- 87
- End Page
- 96
- URI
- https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/211582
- DOI
- 10.5659/JAIK.2024.40.12.87
- ISSN
- 2733-6239
2733-6247
- Abstract
- Predicting the duration of high-rise building projects is essential for managing progress and identifying potential delays, especially for activities on the critical path that can disrupt schedules. Curtain wall installation is one of the key tasks that often cause delays. Although data-driven approaches show promise for accurate predictions, data scarcity in South Korea limits their application. To address this, exploring new data augmentation techniques and prediction methods is necessary. This study compares three Monte Carlo simulation (MCS) variants and the Synthetic Minority Over-Sampling Technique (SMOTE) for data augmentation, using data from 15 real projects. The augmented data is then analyzed with Support Vector Regression (SVR) using three different kernels. The model's accuracy is assessed using mean square error (MSE) and by comparing predicted durations with actual construction timelines. Results show that SMOTE combined with SVR linear yielded the lowest MSE at 0.047, while SMOTE with SVR radial basis function provided the most accurate prediction, with just a one-day error. These findings suggest that combining data augmentation techniques with machine learning can effectively address data limitations and improve forecasting of construction duration.
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