A Hyper-Heuristic for the Environmental/Economic Dispatch Optimization Problem

Richard A. Gonçalves, C. Almeida, Sandra M. Venske, J. Kuk, L. M. Pavelski, M. Delgado
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引用次数: 1

Abstract

Hyper-Heuristics are high-level methodologies developed to select or generate heuristics for solving complex problems. Despite their success, there is a lack of multi-objective hyper-heuristics. In the multi-objective optimization context, MOEA/D decomposes a problem into a number of sub problems handled by individuals in a collaborative manner. Our approach, named MOEA/D-HHSW, expands the MOEA/D framework with a multi-objective selection hyper-heuristic. It uses the proposed adaptive choice function with sliding window to determine which low-level heuristic (differential evolution operators) should be applied by each individual during MOEA/D execution. The proposed approach is tested in three known instances of the multi-objective environmental/economic dispatch problem, formulated as a non-linear constrained optimization problem with competing and non-commensurable objectives. MOEA/D-HHSW outperforms state-of-the-art algorithms reported in the literature for all considered instances.
环境/经济调度优化问题的超启发式算法
超启发式是为解决复杂问题而选择或生成启发式的高级方法。尽管它们取得了成功,但缺乏多目标超启发式。在多目标优化环境下,MOEA/D将一个问题分解为若干子问题,由个体以协作的方式处理。我们的方法,命名为MOEA/D- hhsw,通过多目标选择超启发式扩展了MOEA/D框架。它使用提出的带滑动窗口的自适应选择函数来确定在MOEA/D执行过程中每个个体应该应用哪些低级启发式(差分进化算子)。提出的方法在三个已知的多目标环境/经济调度问题实例中进行了测试,该问题被表述为具有竞争和不可通约目标的非线性约束优化问题。MOEA/D-HHSW在所有考虑的实例中都优于文献中报道的最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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