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Experimental study on population-based incremental learning algorithms for dynamic optimization problems

机译:基于种群的动态优化问题增量学习算法的实验研究

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摘要

Evolutionary algorithms have been widely used for stationary optimization problems. However, the environments of real world problems are often dynamic. This seriously challenges traditional evolutionary algorithms. In this paper, the application of population-based incremental learning (PBIL) algorithms, a class of evolutionary algorithms, for dynamic problems is investigated. Inspired by the complementarity mechanism in nature a Dual PBIL is proposed, which operates on two probability vectors that are dual to each other with respect to the central point in the genotype space. A diversity maintaining technique of combining the central probability vector into PBIL is also proposed to improve PBIL’s adaptability in dynamic environments. In this paper, a new dynamic problem generator that can create required dynamics from any binary-encoded stationary problem is also formalized. Using this generator, a series of dynamic problems were systematically constructed from several benchmark stationary problems and an experimental study was carried out to compare the performance of several PBIL algorithms and two variants of standard genetic algorithm. Based on the experimental results, we carried out algorithm performance analysis regarding the weakness and strength of studied PBIL algorithms and identified several potential improvements to PBIL for dynamic optimization problems.
机译:进化算法已广泛用于平稳优化问题。但是,现实问题的环境通常是动态的。这严重挑战了传统的进化算法。在本文中,研究了基于种群的增量学习(PBIL)算法(一类进化算法)在动态问题中的应用。受自然界中互补机制的启发,提出了双重PBIL,它对两个相对于基因型空间中心点成对的概率矢量进行运算。还提出了一种将中心概率向量结合到PBIL中的多样性保持技术,以提高PBIL在动态环境中的适应性。在本文中,新的动态问题生成器也可以形式化,该生成器可以从任何二进制编码的平稳问题中创建所需的动力学。使用该生成器,从几个基准平稳问题系统地构造了一系列动态问题,并进行了实验研究,以比较几种PBIL算法和标准遗传算法的两个变体的性能。根据实验结果,我们针对研究的PBIL算法的弱点和强度进行了算法性能分析,并针对动态优化问题确定了PBIL的一些潜在改进。

著录项

  • 作者

    Yang, Shengxiang; Yao, Xin;

  • 作者单位
  • 年度 2005
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  • 原文格式 PDF
  • 正文语种 en_US
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