Variable mesh optimization for the 2013 CEC Special Session Niching Methods for Multimodal Optimization

D. Molina, Amilkar Puris, Rafael Bello, F. Herrera
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引用次数: 29

Abstract

Many real-world problems have several optima, and the aim of niching optimisation algorithms is to obtain the different global optima, and not only the best solution. One common technique to create niches is the clearing method that removes solutions too close to better ones. Unfortunately, clearing is very sensitive to the niche radius, and its right value depends on the problem (in real-world problems the minimum distance between optima is unknown). In this work we propose a niching algorithm that uses clearing with an adaptive niche radius, that decreases during the run. The proposal uses an external memory that stores current global optima to avoid losing found optima during the clearing process, allowing a non-elitist search. This algorithm applies this clearing method to a mesh of solutions, expanded by the generation of nodes using combination methods between the nodes, their best neighbour, and their nearest current global optima in the population (current global optima are nodes with fitness very similar to current best fitness). The proposal is tested on the competition benchmark proposed in the Special Session Niching Methods for Multimodal Optimization, and compared with other algorithms. The proposal obtains very good results detecting global optima. In comparisons with other algorithm, this proposal obtains the best results, proving to be a very competitive niching algorithm.
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2013 CEC专题会议的可变网格优化
许多现实世界的问题都有多个最优解,而小生境优化算法的目标是获得不同的全局最优解,而不仅仅是最优解。创建利基的一种常用技术是清除方法,即删除过于接近更好的解决方案。不幸的是,清除对生态位半径非常敏感,其正确值取决于问题(在现实问题中,最优点之间的最小距离是未知的)。在这项工作中,我们提出了一种小生境算法,该算法使用具有自适应小生境半径的清除,该半径在运行过程中减小。该方案使用存储当前全局最优的外部存储器,以避免在清理过程中丢失已找到的最优,从而允许非精英搜索。该算法将这种清除方法应用于解决方案网格,通过使用节点之间的组合方法生成节点,它们的最佳邻居,以及它们在种群中最近的当前全局最优值(当前全局最优值是适应度与当前最佳适应度非常相似的节点)。在多模态优化的特殊时段小生境方法中提出的竞争基准上对该算法进行了测试,并与其他算法进行了比较。该方法取得了很好的全局最优检测效果。通过与其他算法的比较,该算法得到了最好的结果,证明了它是一种极具竞争力的小生境算法。
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