Learning the local search range for genetic optimisation in nonstationary environments

Frank Vavak, Ken Jukes, Terence C. Fogarty
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引用次数: 57

Abstract

We examine a modification to the genetic algorithm. The variable local search (VLS) operator was designed to enable the genetic algorithm based online optimisers to track optima of time-varying dynamic systems. This feature is not to the detriment of its ability to provide sound results for the stationary environments. The operator matches the level of diversity introduced into the population with the "degree" of the environmental change by increasing population diversity only gradually. The paper also shows that the performance of the designed tracking method can be further enhanced by integrating it with a simple exemplar-based incremental learning technique. It is believed that the designed technique will prove beneficial in the application of the genetic algorithm based approaches to industrial control problems.
学习非平稳环境下遗传优化的局部搜索范围
我们研究对遗传算法的修改。设计了可变局部搜索算子,使基于遗传算法的在线优化器能够跟踪时变动态系统的最优点。这一特性并不会损害它为静止环境提供声音效果的能力。通过逐渐增加种群多样性,使引入种群的多样性水平与环境变化的“程度”相匹配。本文还表明,通过将所设计的跟踪方法与简单的基于样例的增量学习技术相结合,可以进一步提高跟踪方法的性能。相信所设计的方法将有助于基于遗传算法的方法在工业控制问题中的应用。
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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