SOTAVerified

Deep Reinforcement Learning for Optimal Control of Space Heating

2018-05-10Unverified0· sign in to hype

Adam Nagy, Hussain Kazmi, Farah Cheaib, Johan Driesen

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Classical methods to control heating systems are often marred by suboptimal performance, inability to adapt to dynamic conditions and unreasonable assumptions e.g. existence of building models. This paper presents a novel deep reinforcement learning algorithm which can control space heating in buildings in a computationally efficient manner, and benchmarks it against other known techniques. The proposed algorithm outperforms rule based control by between 5-10% in a simulation environment for a number of price signals. We conclude that, while not optimal, the proposed algorithm offers additional practical advantages such as faster computation times and increased robustness to non-stationarities in building dynamics.

Tasks

Reproductions