粒子群优化中搜索空间尺度的识别与开发

Yasser González-Fernández, Stephen Y. Chen
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引用次数: 9

摘要

多模态优化包括两个不同的任务:识别有潜力的吸引盆地和在这些盆地中寻找局部最优。不幸的是,如果同时执行第二个任务,第二个任务可能会干扰第一个任务。具体来说,吸引力盆地的前景通常是通过单个样本解的适应度来估计的,因此由随机样本解表示的吸引力盆地可能比由其局部最优表示的吸引力盆地看起来更没有希望。阈值收敛的目标是通过在全局搜索仍在进行时禁止局部搜索来防止这些有偏差的比较。理想情况下,阈值收敛通过使用与搜索空间中吸引盆地大小相关的距离阈值来实现这一目标。本文提出了一种基于聚类的方法来确定阈值收敛可以利用的搜索空间的规模。在多起点粒子群优化算法的背景下,所提出的方法在广泛的多模态问题上得到了很大的改进。
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Identifying and exploiting the scale of a search space in particle swarm optimization
Multi-modal optimization involves two distinct tasks: identifying promising attraction basins and finding the local optima in these basins. Unfortunately, the second task can interfere with the first task if they are performed simultaneously. Specifically, the promise of an attraction basin is often estimated by the fitness of a single sample solution, so an attraction basin represented by a random sample solution can appear to be less promising than an attraction basin represented by its local optimum. The goal of thresheld convergence is to prevent these biased comparisons by disallowing local search while global search is still in progress. Ideally, thresheld convergence achieves this goal by using a distance threshold that is correlated to the size of the attraction basins in the search space. In this paper, a clustering-based method is developed to identify the scale of the search space which thresheld convergence can then exploit. The proposed method employed in the context of a multi-start particle swarm optimization algorithm has led to large improvements across a broad range of multi-modal problems.
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