Integrating variable renewable energy into the grid has posed challenges to system operators in achieving optimal trade-offs among energy availability, cost affordability, and pollution controllability. This paper proposes a multi-agent reinforcement learning framework for managing energy transactions in microgrids. The framework addresses the challenges above: it seeks to optimize the usage of available resources by minimizing the carbon footprint while benefiting all stakeholders. The proposed architecture consists of three layers of agents, each pursuing different objectives. The first layer, comprised of prosumers and consumers, minimizes the total energy cost. The other two layers control the energy price to decrease the carbon impact while balancing the consumption and production of both renewable and conventional energy. This framework also takes into account fluctuations in energy demand and supply.
翻译:将可变可再生能源纳入电网,对系统操作者实现能源供应、成本可承受性和污染控制之间的最佳取舍提出了挑战。本文件提出了管理微电网能源交易的多剂强化学习框架。该框架应对了上述挑战:它力求通过最大限度地减少碳足迹,使现有资源得到最佳利用,同时使所有利益攸关方受益。拟议的结构由三层物剂组成,每一层都追求不同的目标。第一层由代理商和消费者组成,将能源总成本降至最低。另外两层控制能源价格,以减少碳影响,同时平衡可再生能源和常规能源的消费和生产。这一框架还考虑到能源需求和供应的波动。</s>