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Principles, research status, and prospects of feature engineering for data-driven building energy prediction: A comprehensive review

期刊

JOURNAL OF BUILDING ENGINEERING
卷 58, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.jobe.2022.105028

关键词

Feature engineering; Feature construction; Feature selection; Feature extraction; Building energy prediction; Machine learning

资金

  1. National Natural Science Foundation of China [72001051, 71904032]
  2. Guangdong Philosophical and Social Science Program [GD19YGL09]

向作者/读者索取更多资源

This study analyzes the current research status and future directions in feature engineering for building energy prediction. The concepts and methods of feature engineering are discussed, and 172 relevant articles are comprehensively reviewed to summarize the research status and characteristics. Critical issues in feature engineering for data-driven building energy prediction are also discussed, and promising research directions are identified. The results provide a better understanding of the state of the art and future research trends in feature engineering for data-driven building energy prediction.
With the rapid growth in the volume of relevant and available data, feature engineering is emerging as a popular research subject in data-driven building energy prediction owing to its essential role in improving data quality. Many studies have examined the feasibility of applying feature engineering methods to data-driven building energy prediction. However, a systematic review of this area's research status, characteristics, and limitations is lacking. Therefore, this study analyzes the current status of research and directions of future work in feature engineering for building energy prediction. In this article, we first discuss the concept of feature engineering and its main methods, including the construction, selection, and extraction of features. We, then, summarize the status and characteristics of feature engineering research in the building energy domain using a comprehensive study of 172 relevant articles. We also discuss critical issues in feature engineering in data-driven building energy prediction, including why feature engineering has recently received increasing attention, whether it is useful in this domain, and effective ways to apply it. Finally, we identify promising research directions in the area based on its current state and limitations. The results here provide researchers and the industry with a better understanding of the state of the art and future research trends in feature engineering for data-driven building energy prediction.

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