分布式智能微电网能量控制的联邦DRL方法

Farhad Rezazadeh, N. Bartzoudis
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引用次数: 3

摘要

物联网(IoT)和智能电表设备在智能电网中的普及为测量和分析电力消耗模式提供了关键支持。这种方法使最终用户能够在市场中扮演产消者的角色,从而有助于减少碳足迹和公用事业电网的负担。房屋可再生能源产生的能源交易盈余与外部网络(主电网)供应短缺之间的协调是必要的。本文提出了一种基于分布式动态负载的联邦深度强化学习(FDRL)的多层次智能建筑能源管理体系结构。在开发的基于fdrl的框架的背景下,托管在本地建筑能源管理系统(BEMS)中的每个代理都训练一个本地深度强化学习(DRL)模型,并以模型超参数的形式将其经验分享给能源管理系统(EMS)中的联邦层。模拟研究使用一台EMS和多达20个配备光伏(PV)系统和电池的智能住宅进行。这种迭代训练方法使所提出的离散软行为者-评论家(SAC)代理能够聚合收集到的知识,以加快整个学习过程,降低成本和二氧化碳排放,而联合方法可以减轻隐私泄露。数值结果证实了该框架在不同白天时段、荷载和温度下的性能。
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A Federated DRL Approach for Smart Micro-Grid Energy Control with Distributed Energy Resources
The prevalence of the Internet of things (IoT) and smart meters devices in smart grids is providing key support for measuring and analyzing the power consumption patterns. This approach enables end-user to play the role of prosumers in the market and subsequently contributes to diminish the carbon footprint and the burden on utility grids. The coordination of trading surpluses of energy that is generated by house renewable energy resources (RERs) and the supply of shortages by external networks (main grid) is a necessity. This paper proposes a hierarchical architecture to manage energy in multiple smart buildings leveraging federated deep reinforcement learning (FDRL) with dynamic load in a distributed manner. Within the context of the developed FDRL-based framework, each agent that is hosted in local building energy management systems (BEMS) trains a local deep reinforcement learning (DRL) model and shares its experience in the form of model hyperparameters to the federation layer in the energy management system (EMS). Simulation studies are conducted using one EMS and up to twenty smart houses that are equipped with photovoltaic (PV) systems and batteries. This iterative training approach enables the proposed discretized soft actor-critic (SAC) agents to aggregate the collected knowledge to expedite the overall learning procedure and reduce costs and CO2 emissions, while the federation approach can mitigate privacy breaches. The numerical results confirm the performance of the proposed framework under different daytime periods, loads, and temperatures.
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