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首页> 外文期刊>Complexity >A Multiobjective Genetic Algorithm for the Localization of Optimal and Nearly Optimal Solutions Which Are Potentially Useful: nevMOGA
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A Multiobjective Genetic Algorithm for the Localization of Optimal and Nearly Optimal Solutions Which Are Potentially Useful: nevMOGA

机译:一种多目标遗传算法,用于定位最优近最优的解决方案,这些遗传算法可能有用:Nevmoga

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摘要

Traditionally, in a multiobjective optimization problem, the aim is to find the set of optimal solutions, the Pareto front, which provides the decision-maker with a better understanding of the problem. This results in a more knowledgeable decision. However, multimodal solutions and nearly optimal solutions are ignored, although their consideration may be useful for the decision-maker. In particular, there are some of these solutions which we consider specially interesting, namely, the ones that have distinct characteristics from those which dominate them (i.e., the solutions that are not dominated in their neighborhood). We call these solutions potentially useful solutions. In this work, a new genetic algorithm called nevMOGA is presented, which provides not only the optimal solutions but also the multimodal and nearly optimal solutions nondominated in their neighborhood. This means that nevMOGA is able to supply additional and potentially useful solutions for the decision-making stage. This is its main advantage. In order to assess its performance, nevMOGA is tested on two benchmarks and compared with two other optimization algorithms (random and exhaustive searches). Finally, as an example of application, nevMOGA is used in an engineering problem to optimally adjust the parameters of two PI controllers that operate a plant.
机译:传统上,在多目标优化问题中,目的是找到一套最佳解决方案,帕累托前线,为决策者提供更好的解决问题。这导致更知识渊博的决定。然而,忽略多模式解决方案和近最佳解决方案,尽管它们的考虑可能对决策者有用。特别是,我们认为一些这些解决方案是特别有趣的,即具有与之统治它们的那些具有不同特征的解决方案(即,除了在其邻域中没有主导的解决方案)。我们称这些解决方案可能是有用的解决方案。在这项工作中,提出了一种名为Nevmoga的新的遗传算法,这不仅提供了最佳解决方案,还提供了在其邻域内未完成的多模式和近最佳解决方案。这意味着Nevmoga能够为决策阶段提供额外的和潜在有用的解决方案。这是它的主要优势。为了评估其性能,Nevmoga在两个基准测试中测试,并与另外两个优化算法(随机和详尽的搜索)进行比较。最后,作为应用的示例,Nevmoga用于工程问题以最佳地调整操作工厂的两个PI控制器的参数。

著录项

  • 来源
    《Complexity》 |2018年第11期|共22页
  • 作者单位

    Instituto Universitario de Automática e Informática Industrial Universitat Politecnica de Valencia Valencia Spain;

    Instituto Universitario de Automática e Informática Industrial Universitat Politecnica de Valencia Valencia Spain;

    Instituto Universitario de Automática e Informática Industrial Universitat Politecnica de Valencia Valencia Spain;

    Industrial and Systems Engineering Graduate Program-PPGEPS Polytechnic School Pontifical Catholic University of Paraná (PUCPR) Curitiba PR Brazil;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大系统理论;
  • 关键词

    A Multiobjective; Genetic Algorithm; Localization;

    机译:多目标;遗传算法;本地化;

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