作者
Javier Arroyo, Carlo Manna, Fred Spiessens, Lieve Helsen
发表日期
2021/9/1
研讨会论文
Building Simulation 2021
卷号
17
页码范围
175-182
出版商
IBPSA
简介
The conventional controllers for building energy management have shown significant room for improvement, and disagree with the superb developments in state-of-the-art technologies like machine learning. This paper describes an OpenAI-Gym environment for the BOPTEST framework to rigorously benchmark different reinforcement learning algorithms among themselves and against other controllers (e.g. model predictive control) by building simulation. The design philosophy of the environment and its different features are introduced. Finally, the environment is demonstrated in one emulator building model to train a reinforcement learning algorithm and compare it against a classical control logic.
引用总数
学术搜索中的文章