论文标题

对智能建筑能源管理的深入强化学习的评论

A Review of Deep Reinforcement Learning for Smart Building Energy Management

论文作者

Yu, Liang, Qin, Shuqi, Zhang, Meng, Shen, Chao, Jiang, Tao, Guan, Xiaohong

论文摘要

全球建筑约占总能源消耗和碳排放的30%,这引起了严重的能源和环境问题。因此,开发新颖的智能建筑能源管理(SBEM)技术是重要而迫切的,以推动节能和绿色建筑的发展。但是,由于以下挑战,这是一项非平凡的任务。首先,通常很难开发出明确的建筑热动力学模型,该模型既准确又有效,足以建立控制。其次,有许多不确定的系统参数(例如,可再生生成输出,室外温度和乘员数量)。第三,有许多空间和时间耦合的操作约束。第四,当传统方法具有极大的解决方案空间时,无法实时解决构建能量优化问题。第五,传统的建筑能源管理方法具有相应的前提,这意味着在面对不同的建筑环境时,它们的多功能性较低。随着物联网技术和计算能力的快速发展,人工智能技术在控制和优化方面具有重要的能力。作为一般人工智能技术,深度加强学习(DRL)有望应对上述挑战。值得注意的是,近年来SBEM的DRL激增。但是,缺乏对SBEM不同DRL方法的系统概述。为了填补空白,本文从系统量表的角度对SBEM的DRL进行了全面审查。特别是,我们确定了现有的未解决的问题,并指出可能的未来研究方向。

Global buildings account for about 30% of the total energy consumption and carbon emission, raising severe energy and environmental concerns. Therefore, it is significant and urgent to develop novel smart building energy management (SBEM) technologies for the advance of energy-efficient and green buildings. However, it is a nontrivial task due to the following challenges. Firstly, it is generally difficult to develop an explicit building thermal dynamics model that is both accurate and efficient enough for building control. Secondly, there are many uncertain system parameters (e.g., renewable generation output, outdoor temperature, and the number of occupants). Thirdly, there are many spatially and temporally coupled operational constraints. Fourthly, building energy optimization problems can not be solved in real-time by traditional methods when they have extremely large solution spaces. Fifthly, traditional building energy management methods have respective applicable premises, which means that they have low versatility when confronted with varying building environments. With the rapid development of Internet of Things technology and computation capability, artificial intelligence technology find its significant competence in control and optimization. As a general artificial intelligence technology, deep reinforcement learning (DRL) is promising to address the above challenges. Notably, the recent years have seen the surge of DRL for SBEM. However, there lacks a systematic overview of different DRL methods for SBEM. To fill the gap, this paper provides a comprehensive review of DRL for SBEM from the perspective of system scale. In particular, we identify the existing unresolved issues and point out possible future research directions.

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