论文标题

热泵控制的深度加固学习

Deep Reinforcement Learning for Heat Pump Control

论文作者

Rohrer, Tobias, Frison, Lilli, Kaupenjohann, Lukas, Scharf, Katrin, Hergenrother, Elke

论文摘要

在私人家庭中供暖是今天产生的排放的主要贡献者。热泵是热量产生的有前途的替代方法,是实现德国能量转化目标并减少对化石燃料的依赖的关键技术。如今,该场中的大多数热泵都由简单的加热曲线控制,这是将当前室外温度幼稚的映射到控制作用。更高级的控制方法是模型预测控制(MPC),该控制方法是在多个研究工作中应用于热泵控制的。但是,MPC在很大程度上取决于建筑模型,该模型有几个缺点。这项工作是在这种情况下和最近的突破性的动机上,将深入的加固学习(DRL)应用于模拟环境中的热泵控制。通过与MPC的比较,可以证明可以以无模型的方式应用DRL以实现类似MPC的性能。这项工作扩展了已经将DRL应用于供暖操作的其他作品通过对学习控制策略进行深入分析,并通过对两种最先进的控制方法进行详细比较来建立加热操作。

Heating in private households is a major contributor to the emissions generated today. Heat pumps are a promising alternative for heat generation and are a key technology in achieving our goals of the German energy transformation and to become less dependent on fossil fuels. Today, the majority of heat pumps in the field are controlled by a simple heating curve, which is a naive mapping of the current outdoor temperature to a control action. A more advanced control approach is model predictive control (MPC) which was applied in multiple research works to heat pump control. However, MPC is heavily dependent on the building model, which has several disadvantages. Motivated by this and by recent breakthroughs in the field, this work applies deep reinforcement learning (DRL) to heat pump control in a simulated environment. Through a comparison to MPC, it could be shown that it is possible to apply DRL in a model-free manner to achieve MPC-like performance. This work extends other works which have already applied DRL to building heating operation by performing an in-depth analysis of the learned control strategies and by giving a detailed comparison of the two state-of-the-art control methods.

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