能源消耗
电势能
消费(社会学)
电能消耗
电
计算机科学
能量(信号处理)
人工智能
工程类
工业工程
电能
电气工程
数学
物理
社会学
功率(物理)
统计
量子力学
社会科学
作者
Mohammad Azhar Mat Daut,Mohammad Yusri Hassan,Hayati Abdullah,Hasimah Abdul Rahman,Md Pauzi Abdullah,Faridah Hussin
标识
DOI:10.1016/j.rser.2016.12.015
摘要
It is important for building owners and operators to manage the electrical energy consumption of their buildings. As electrical energy is the major form of energy consumed in a commercial building, the ability to forecast electrical energy consumption in a building will bring great benefits to the building owners and operators. This paper provides a review of the building electrical energy consumption forecasting methods which include the conventional and artificial intelligence (AI) methods. The significant goal of this study is to review, recognize, and analyse the performance of both methods for forecasting of electrical energy consumption. Compared to using a single method of forecasting, the hybrid of two forecasting methods can possibly be applied for more precise results. Regarding this potential, the swarm intelligence (SI) method has been reviewed to be hybridized with AI. Published literature presented in this paper shows that, the hybrid of SVM and SI methods has indeed presented superior performance for forecasting building electrical energy consumption.
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