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Bacteria Foraging Reinforcement Learning for Risk-Based Economic Dispatch via Knowledge Transfer

机译:通过知识转移进行细菌觅食强化学习以实现基于风险的经济调度

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This paper proposes a novel bacteria foraging reinforcement learning with knowledge transfer method for risk-based economic dispatch, in which the economic dispatch is integrated with risk assessment theory to represent the uncertainties of active power demand and contingencies during power system operations. Moreover, a multi-agent collaboration is employed to accelerate the convergence of knowledge matrix, which is decomposed into several lower dimension sub-matrices via a knowledge extension, thus the curse of dimension can be effectively avoided. Besides, the convergence rate of bacteria foraging reinforcement learning is increased dramatically through a knowledge transfer after obtaining the optimal knowledge matrices of source tasks in pre-learning. The performance of bacteria foraging reinforcement learning has been thoroughly evaluated on IEEE RTS-79 system. Simulation results demonstrate that it can outperform conventional artificial intelligence algorithms in terms of global convergence and convergence rate.
机译:本文提出了一种基于知识转移方法的新型细菌觅食强化学习方法,用于基于风险的经济调度,其中经济调度与风险评估理论相结合,代表了电力系统运行中有功电能需求和突发事件的不确定性。此外,利用多主体协作来加速知识矩阵的收敛,该知识矩阵通过知识扩展分解为几个较低维的子矩阵,从而可以有效避免维数的诅咒。此外,在预学习中获得源任务的最优知识矩阵后,通过知识转移可以大大提高细菌觅食强化学习的收敛速度。细菌觅食强化学习的性能已在IEEE RTS-79系统上进行了全面评估。仿真结果表明,该算法在全局收敛性和收敛速度方面均优于传统的人工智能算法。

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