Genetic algorithms with dynamic niche sharing for multimodal function optimization 论文

2002引用 313
Machine Learning and AlgorithmsMetaheuristic Optimization Algorithms ResearchMachine Learning and Data Classification

摘要

Genetic algorithms utilize populations of individual hypotheses that converge over time to a single optimum, even within a multimodal domain. This paper examines methods that enable genetic algorithms to identify multiple optima within multimodal domains by maintaining population members within the niches defined by the multiple optima. A new mechanism, dynamic niche sharing, is developed that is able to efficiently identify and search multiple niches (peaks) in a multimodal domain. Dynamic niche sharing is shown to perform better than two other methods for multiple optima identification, standard sharing and deterministic crowding.