기계학습 적용을 위한 건물에너지 데이터의 생성 방법론 개발

Data Generation for Machine Learning Applications in Building Operation

초록

Utilizing the machin learning (ML) algorithm for the building cooling/heating operations requires the actual building data. The robustness of the ML-based controller depends on the amount and quality of the data. However, reserving actual building operation data is challenging because of the cost and time required. This study proposes the methodology for generating the synthetic simulation data the development of the ML (specifically, reinforcement learning) algorithm when the actual data are lacking or unavailable. As the first step toward investigating this methodology, we built two building models, an EnergyPlus simulation model and a grey-box model. The prediction performances of two models were quantified and evaluated.

키워드

모델기반 예측제어건물에너지 시뮬레이션그레이박스 간략 모델Model-based predictive controlBuilding energy simulationLumped grey-box model
제목
기계학습 적용을 위한 건물에너지 데이터의 생성 방법론 개발
제목 (타언어)
Data Generation for Machine Learning Applications in Building Operation
저자
박세미조재완박정규
DOI
10.7836/kses.2021.41.4.107
발행일
2021-08
유형
Y
저널명
한국태양에너지학회 논문집
41
4
페이지
107 ~ 114