基于强化学习的暖通空调控制应用的数据驱动方法

C. Falk, Tarek El Ghayed, Ron van de Sand, J. Reiff-Stephan
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引用次数: 0

摘要

制冷应用消耗了总电力需求的很大一部分,通过温室气体排放对全球变暖产生了很大的间接影响。现代技术可以帮助降低高功耗和优化冷却控制。本文介绍了一个应用机器学习控制商用制冷系统的案例研究。特别地,一种强化学习的方法被实施,训练和验证利用一个真实的冷水机组的模型。强化学习控制器根据其与建模环境的相互作用来学习操作对象。验证证明了该方法的功能性,节省了参考控制约7%的能量需求。该方法在真实环境的离散化和进一步的基于模型的简化方面存在局限性,应在未来的研究中加以解决。
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A Data-Driven Approach Towards the Application of Reinforcement Learning Based HVAC Control
Refrigeration applications consume a significant share of total electricity demand, with a high indirect impact on global warming through greenhouse gas emissions. Modern technology can help reduce the high power consumption and optimize the cooling control. This paper presents a case study of machine-learning for controlling a commercial refrigeration system. In particular, an approach to reinforcement learning is implemented, trained and validated utilizing a model of a real chiller plant. The reinforcement-learning controller learns to operate the plant based on its interactions with the modeled environment. The validation demonstrates the functionality of the approach, saving around 7% of the energy demand of the reference control. Limitations of the approach were identified in the discretization of the real environment and further model-based simplifications and should be addressed in future research.
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