占用率
数据收集
能源消耗
领域(数学)
计算机科学
过程(计算)
持续性
消费(社会学)
预测建模
数据科学
系统工程
风险分析(工程)
工业工程
机器学习
工程类
建筑工程
医学
生态学
社会科学
统计
数学
电气工程
社会学
纯数学
生物
操作系统
作者
Tao Li,Xiangyu Liu,Guannan Li,Xing Wang,Jing Ma,Cheng Xu,Qianjun Mao
标识
DOI:10.1016/j.rser.2024.114284
摘要
Buildings account for a significant portion of the global energy consumption. Forecasting personnel occupancy is critical for reducing energy consumption in buildings. This study explored the general process of building occupancy prediction models, and specifically analyzed the evolution and application of various data collection methods and predictive algorithms. A comprehensive research framework is established. The main findings indicate that prediction accuracy can be substantially improved by leveraging the Internet of Things technology to enhance data collection and employing hybrid machine learning algorithms. These advancements are vital to optimize building operation strategies, reduce energy consumption, and minimize carbon dioxide emissions. Additionally, the assessment metrics for validating predictive models are discussed and a novel idea based on integrated selection methods is presented. Differing from existing research, this study explores data collection methods and predictive algorithms from a broader perspective, also examining their interplay. Finally, potential directions for further development and improvement in the field are identified. The findings emphasize the necessity to continually innovate in data collection and algorithm development to meet evolving environmental needs and sustainability goals. New insights for engineering design and energy system optimization are offered.
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