基于深度强化学习的商业建筑在线能源管理

Avisek Naug, Ibrahim Ahmed, G. Biswas
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引用次数: 16

摘要

本文提出了一种有效的在线方法,通过将数据驱动模型与深度强化学习技术相结合来降低大型建筑的能耗。我们使用数据驱动的方法对建筑的供暖和制冷能耗进行建模。这些模型被集成到Python中的一个“OpenAI Gym”类中,以创建用于研究建筑能耗的环境,作为控制动作的函数,例如在建筑物的不同位置设置排放温度设定点。我们讨论了一种基于策略梯度的actor-critic强化学习方法(Q actor-critic),该方法通过与上述环境交互来学习最优策略。最优策略作为控制器,实时调节除湿空气的排放温度设定点,在降低总能耗的同时保持建筑环境(温度和湿度)舒适。初步结果表明,该方法可以满足在线应用的要求,并且可以实现2 ~ 5%的节能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Energy Management in Commercial Buildings using Deep Reinforcement Learning
This paper proposes an efficient online approach for reducing energy consumption in large buildings by combining data driven models with deep reinforcement learning techniques. We use data driven methods for modeling the heating and cooling energy consumption in the building. These models are integrated into a single "OpenAI Gym" class in Python to create the environment for studying building energy consumption as a function of control actions, such as setting the discharge temperature set points at different locations in the building. We discuss a policy gradient based actor-critic reinforcement learning approach (Q Actor-Critic) that learns the optimal policy by interacting with the above environment. The optimal policy acts as a controller for adjusting the discharge temperature set point of the dehumidified air in real time so that the total energy consumption can be reduced but the building conditions (temperature and humidity) remain comfortable. Preliminary results show that the method %is fast enough for online application and achieves an energy savings of 2 to 5%.
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