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Multi-task deep reinforcement learning for intelligent multi-zone residential HVAC control

机译:智能多区住宅HVAC控制多任务深度加固学习

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摘要

In this short communication, a data-driven deep reinforcement learning (deep RL) method is applied to minimize HVAC users' energy consumption costs while maintaining users' comfort. The applied deep RL method's efficiency is enhanced by conducting multi-task learning that can achieve an economic control strategy for a multizone residential HVAC system in both cooling and heating scenarios. The applied multi-task deep RL method is compared with a rule-based benchmark case and a single-task deep deterministic policy gradient algorithm to verify its effective and generalized application in optimizing HVAC operation.
机译:在这种短期通信中,应用数据驱动的深度增强学习(深RL)方法以最小化HVAC用户的能量消耗成本,同时保持用户的舒适度。 通过开展多任务学习,通过进行多次任务学习来增强所施加的深度RL方法的效率,可以在冷却和加热方案中实现多态住宅HVAC系统的经济控制策略。 将应用的多任务深rl方法与基于规则的基准案例进行比较,单个任务深度确定性策略梯度算法,以验证其在优化HVAC操作方面的有效和广义应用。

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