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Deep Reinforcement Learning for Residential HVAC Control with Consideration of Human Occupancy

机译:考虑人类占用的住宅储备控制深增强学习

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The Artificial Intelligence (AI) development described herein uses model-free Deep Reinforcement Learning (DRL) to minimize energy cost during residential heating, ventilation, and air conditioning (HVAC) operation. Building cooling loads and HVAC operation are difficult to accurately model due to complexity, lack of measurements and data, and model specific performance, so online machine learning is used to allow for real-time readjustment in performance. Energy costs for the multi-zone cooling unit shown in this work are minimized by scheduling on/off commands around dynamic prices. By taking advantage of precooling events that take place when the price is low, the agent is able to reduce operational cost without violating user comfort. The DRL controller was tested in simulation where the learner achieved a 43.89% cost reduction when compared to traditional, fixed-setpoint operation. The system is now ready for the next phase of testing in a live, real-time home environment.
机译:这里描述的人工智能(AI)开发使用无模型的深度增强学习(DRL)来最小化住宅加热,通风和空调(HVAC)操作期间的能量成本。由于复杂性,缺乏测量和数据,以及型号特定性能,建筑冷却负载和HVAC操作难以准确模型,因此在线机器学习用于允许在性能中进行实时重新调整。通过在动态价格周围调度/关闭命令来最小化该工作中所示的多区域冷却单元的能源成本。通过利用当价格低时发生的预冷事件,代理能够在不违反用户舒适的情况下降低运营成本。 DRL控制器在模拟中进行了测试,其中学习者与传统固定设定点操作相比,学习者的成本降低了43.89%。该系统现在已准备好在实时,实时家庭环境中的下一阶段进行测试。

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