Reinforcement Learning-Based Differential Evolution for Solving Economic Dispatch Problems

Thammarsat Visutarrom, T. Chiang, A. Konak, S. Kulturel-Konak
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引用次数: 7

Abstract

In power systems, economic dispatch (ED) deals with the power allocation of power generation units to meet the power demand and minimize the cost. Many metaheuristics have been proposed to solve the ED problem with promising results. However, the performance of these algorithms might be sensitive to their parameter settings, and parameter tuning requires considerable effort. In this paper, a reinforcement learning (RL)-based differential evolution (DE) is proposed to solve the ED problem. We develop an RL mechanism to adaptively set two critical parameters, crossover rate (CR) and scaling factor (F), of DE. The performance of the proposed RLDE is compared with the canonical DE and several algorithms in the literature using three test systems. Our algorithm shows good solution quality and strong robustness.
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基于强化学习的差分进化求解经济调度问题
在电力系统中,经济调度(ED)是指发电机组为满足电力需求和使成本最小化而进行的功率分配。人们提出了许多元启发式方法来解决ED问题,并取得了可喜的结果。然而,这些算法的性能可能对它们的参数设置很敏感,并且参数调优需要相当大的努力。本文提出了一种基于强化学习(RL)的差分进化(DE)方法来解决ED问题。我们开发了一种RL机制来自适应设置DE的两个关键参数,交叉率(CR)和缩放因子(F)。使用三个测试系统,将所提出的RLDE的性能与规范DE和文献中的几种算法进行了比较。该算法具有较好的解质量和较强的鲁棒性。
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