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Hierarchically correlated equilibrium Q-learning for multi-area decentralized collaborative reactive power optimization

机译:分层相关的均衡Q学习用于多区域分散协作无功优化

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摘要

A hierarchically correlated equilibrium Q-learning (HCEQ) algorithm for reactive power optimization that considers carbon emission on the grid-side as an optimization objective, is proposed here. Based on the multi-area decentralized collaborative framework, the controllable variables in each region are divided into several optimization layers, which is an effective method for solving the limitations posed by dimensionality. The HCEQ provides constant information on the interaction between the state-action value function matrices, as well as on the cooperative game equilibrium among agents in each region. After acquiring the optimal value function matrix in the pre-learning process, HCEQ is able to quickly achieve an optimal solution online. Simulation of the IEEE 57-bus system is performed, which demonstrates that the proposed algorithm can effectively solve multi-area decentralized collaborative reactive power optimization, with the desired global search capabilities and convergence speed.
机译:在此提出一种用于无功优化的层次相关均衡Q学习(HCEQ)算法,该算法将电网侧的碳排放作为优化目标。基于多区域分散协作框架,将每个区域中的可控变量分为几个优化层,这是解决维数限制的有效方法。 HCEQ提供有关状态-作用值函数矩阵之间的相互作用以及每个区域中代理之间的合作博弈均衡的恒定信息。在预学习过程中获取最优值函数矩阵后,HCEQ能够快速在线实现最优解决方案。对IEEE 57总线系统进行了仿真,结果表明,该算法可以有效地解决多区域分散协作无功优化问题,并具有所需的全局搜索能力和收敛速度。

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