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Multi-Agent Safe Policy Learning for Power Management of Networked Microgrids

机译:网络化微普林电力管理的多智能经验安全策略学习

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摘要

This article presents a supervised multi-agent safe policy learning (SMAS-PL) method for optimal power management of networked microgrids (MGs) in distribution systems. While unconstrained reinforcement learning (RL) algorithms are black-box decision models that could fail to satisfy grid operational constraints, our proposed method considers AC power flow equations and other operational limits. Accordingly, the training process employs the gradient information of operational constraints to ensure that the optimal control policy functions generate safe and feasible decisions. Furthermore, we have developed a distributed consensus-based optimization approach to train the agents' policy functions while maintaining MGs' privacy and data ownership boundaries. After training, the learned optimal policy functions can be safely used by the MGs to dispatch their local resources, without the need to solve a complex optimization problem from scratch. Numerical experiments have been devised to verify the performance of the proposed method.
机译:本文提出了一个监督的多代理安全策略学习(SMA-PL)方法,用于在分配系统中的网络微电网(MGS)的最佳电力管理。虽然不受约束的加强学习(RL)算法是可能未能满足网格运行约束的黑匣子决策模型,但我们提出的方法考虑交流电流方程和其他操作限制。因此,训练过程采用操作约束的梯度信息,以确保最佳控制策略函数产生安全和可行的决策。此外,我们开发了一种基于分布式共识的优化方法,可以培训代理商的政策职能,同时保持MGS的隐私和数据所有权界限。在培训之后,MGS可以安全地使用所学习的最佳策略函数来分配当地资源,而无需从头开始解决复杂的优化问题。已经设计了数值实验来验证所提出的方法的性能。

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