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Privacy-Preserving Energy Management of a Shared Energy Storage System for Smart Buildings: A Federated Deep Reinforcement Learning Approach

机译:智能建筑共享能源存储系统的隐私保存能源管理:联合深度加强学习方法

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摘要

This paper proposes a privacy-preserving energy management of a shared energy storage system (SESS) for multiple smart buildings using federated reinforcement learning (FRL). To preserve the privacy of energy scheduling of buildings connected to the SESS, we present a distributed deep reinforcement learning (DRL) framework using the FRL method, which consists of a global server (GS) and local building energy management systems (LBEMSs). In the framework, the LBEMS DRL agents share only a randomly selected part of their trained neural network for energy consumption models with the GS without consumer’s energy consumption data. Using the shared models, the GS executes two processes: (i) construction and broadcast of a global model of energy consumption to the LBEMS agents for retraining their local models and (ii) training of the SESS DRL agent’s energy charging and discharging from and to the utility and buildings. Simulation studies are conducted using one SESS and three smart buildings with solar photovoltaic systems. The results demonstrate that the proposed approach can schedule the charging and discharging of the SESS and an optimal energy consumption of heating, ventilation, and air conditioning systems in smart buildings under heterogeneous building environments while preserving the privacy of buildings’ energy consumption.
机译:本文提出了使用联合强化学习(FRL)的多个智能建筑的共享能量存储系统(Sess)的隐私保留能源管理。为了保留连接到SES的建筑物的能源调度隐私,我们使用FRL方法提出了一种分布式的深度强化学习(DRL)框架,该方法包括全球服务器(GS)和本地建筑能源管理系统(LBEMS)。在框架中,LBEMS DRL代理仅为随机选择的部分培训的神经网络用于与GS的能量消耗模型,没有消费者的能量消耗数据。使用共享模型,GS执行两个进程:(i)对LBEMS代理的全球能耗模型的构造和广播,用于再培训其本地模型和(ii)培训Sess DRL代理的能量充电和排出公用事业和建筑物。仿真研究是使用一个带有太阳能光伏系统的一叶和三个智能建筑进行的。结果表明,该方法可以安排在异构建筑环境下的智能建筑中的智能大厦的加热,通风和空调系统的充电和放电以及在维护建筑物能耗的隐私范围内的加热,通风和空调系统的充值和放电。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2021(21),14
  • 年度 2021
  • 页码 4898
  • 总页数 21
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:建筑能源管理系统;共用储能系统;联邦加固学习;深增强学习;智能建筑;

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