콘텐츠 본문
논문 해외 국제전문학술지(SCI급) Data-driven model for predicting power consumption of heat-pump-driven liquid-desiccant systems in building applications
- 학술지 구분 국제전문학술지(SCI급)
- 게재년월 2025-07
- 저자명 Jae-Hee Lee, Soo-Jin Lee, Hansol Lim, Ki-Hyung Yu, Jae-Weon Jeong
- 학술지명 Energy & Buildings
- 발행처명 Elsevier
- 발행국가 해외
- 논문언어 외국어
- 전체저자수 5
- 연구분야 공학 > 건축공학
- 키워드 #Building application #Energy consumption prediction #Data-driven model development #Heat pump #Liquid desiccant system
논문 초록 (Abstract)
With the growing emphasis on indoor humidity control in energy-efficient buildings, heat-pump-driven liquid- desiccant (HPLD) systems have emerged for their ability to independently control air temperature and humidity. Previous studies have estimated their power consumption using theoretical models, which are often limited by structural complexity and challenges in physical interpretation. Additionally, theoretical models yield prediction inaccuracies when applied to buildings because they lack sensitivity to dynamic environmental variations typically observed in real-building conditions. This study develops a simplified data-driven model using real- building measurements to predict power consumption, capturing partial-load compressor performance under variable outdoor conditions and indoor thermal loads during the summer season. A polynomial regression method is used to develop the model in a simplified equation-based form. The developed model achieves R- squared, root mean squared error, and mean absolute percentage error (MAPE) values of 0.9583, 0.0668, and 8.37 %, respectively, in predicting the partial-load compressor power. Moreover, the model predicts the compressor energy consumption during summer operations with a percentage error of 0.36 %. Its adaptability is further validated against previous studies on HPLD systems with diverse features and specifications, within an acceptable error bound of ±20 % and a MAPE of 11.1 %. These results highlight the exceptional prediction accuracy and practical utility of the model developed in this study, supporting its adoption in various building application scenarios and replacement of theoretical models.