LGAIDec 24, 2022

Deep Reinforcement Learning for Heat Pump Control

arXiv:2212.12716v116 citationsh-index: 6
Originality Incremental advance
AI Analysis

This work addresses energy efficiency in private households by improving heat pump control, but it is incremental as it builds on prior DRL applications in building heating.

The paper tackled heat pump control by applying deep reinforcement learning (DRL) in a simulated environment, achieving performance similar to model predictive control (MPC) without requiring a building model.

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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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