Heating ventilation air‐conditioner system for multi‐regional commercial buildings based on deep reinforcement learning

Juan Yang, Jing Yu, Shijing Wang
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Abstract

In an era of significant energy consumption by commercial building HVAC systems, this study introduces a Deep Reinforcement Learning (DRL) approach to optimize these systems in multi‐zone commercial buildings, targeting reduced energy usage and enhanced user comfort. The research begins with the development of an energy consumption model for multi‐zone HVAC systems, considering the complexity and uncertainty of system parameters. This model informs the creation of a novel DRL‐based optimization algorithm, which incorporates multi‐stage training and a multi‐agent attention mechanism, enhancing stability and scalability. Comparative analysis against traditional control methods shows the proposed algorithm's effectiveness in reducing energy consumption while maintaining indoor comfort. The study presents an innovative DRL strategy for energy management in commercial HVAC systems, offering substantial potential for sustainable practices in building management.
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基于深度强化学习的多区域商业建筑供暖通风空调系统
在商业建筑暖通空调系统能源消耗巨大的时代,本研究引入了一种深度强化学习(DRL)方法来优化多区商业建筑中的这些系统,以减少能源消耗和提高用户舒适度为目标。考虑到系统参数的复杂性和不确定性,研究首先开发了多区暖通空调系统的能耗模型。该模型为创建基于 DRL 的新型优化算法提供了依据,该算法结合了多阶段训练和多代理关注机制,增强了稳定性和可扩展性。与传统控制方法的对比分析表明,所提出的算法在降低能耗、保持室内舒适度方面非常有效。该研究为商业暖通空调系统的能源管理提出了一种创新的 DRL 策略,为楼宇管理的可持续实践提供了巨大潜力。
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Heating ventilation air‐conditioner system for multi‐regional commercial buildings based on deep reinforcement learning
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