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A review of data-driven building energy consumption prediction studies

机译:数据驱动的建筑能耗预测研究综述

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摘要

Energy is the lifeblood of modern societies. In the past decades, the world's energy consumption and associated CO2 emissions increased rapidly due to the increases in population and comfort demands of people. Building energy consumption prediction is essential for energy planning, management, and conservation. Data-driven models provide a practical approach to energy consumption prediction. This paper offers a review of the studies that developed data-driven building energy consumption prediction models, with a particular focus on reviewing the scopes of prediction, the data properties and the data preprocessing methods used, the machine learning algorithms utilized for prediction, and the performance measures used for evaluation. Based on this review, existing research gaps are identified and future research directions in the area of data-driven building energy consumption prediction are highlighted.
机译:能源是现代社会的命脉。在过去的几十年中,由于人口的增长和人们的舒适需求,世界的能源消耗和相关的CO2排放量迅速增加。建筑能耗预测对于能源规划,管理和节约至关重要。数据驱动模型为能耗预测提供了一种实用的方法。本文对开发数据驱动的建筑能耗预测模型的研究进行了回顾,特别着重于回顾预测范围,所使用的数据属性和数据预处理方法,用于预测的机器学习算法以及用于评估的绩效指标。在此基础上,确定了现有的研究差距,并突出了数据驱动的建筑能耗预测领域的未来研究方向。

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