A Landscape-Aware Differential Evolution for Multimodal Optimization Problems

Guo-Yun Lin, Zong-Gan Chen, Yuncheng Jiang, Zhi-Hui Zhan, Jun Zhang
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Abstract

How to simultaneously locate multiple global peaks and achieve certain accuracy on the found peaks are two key challenges in solving multimodal optimization problems (MMOPs). In this paper, a landscape-aware differential evolution (LADE) algorithm is proposed for MMOPs, which utilizes landscape knowledge to maintain sufficient diversity and provide efficient search guidance. In detail, the landscape knowledge is efficiently utilized in the following three aspects. First, a landscape-aware peak exploration helps each individual evolve adaptively to locate a peak and simulates the regions of the found peaks according to search history to avoid an individual locating a found peak. Second, a landscape-aware peak distinction distinguishes whether an individual locates a new global peak, a new local peak, or a found peak. Accuracy refinement can thus only be conducted on the global peaks to enhance the search efficiency. Third, a landscape-aware reinitialization specifies the initial position of an individual adaptively according to the distribution of the found peaks, which helps explore more peaks. The experiments are conducted on 20 widely-used benchmark MMOPs. Experimental results show that LADE obtains generally better or competitive performance compared with seven well-performed algorithms proposed recently and four winner algorithms in the IEEE CEC competitions for multimodal optimization.
多模式优化问题的景观感知差分进化论
如何同时定位多个全局峰值并使找到的峰值达到一定的精度,是解决多模态优化问题(MMOPs)的两个关键挑战。本文提出了一种针对多模态优化问题的景观感知差分进化(LADE)算法,该算法利用景观知识来保持足够的多样性并提供高效的搜索指导。具体来说,景观知识在以下三个方面得到了有效利用。首先,景观感知峰值探索帮助每个个体自适应地进化定位峰值,并根据搜索历史模拟发现峰值的区域,避免个体定位到已发现的峰值。其次,景观感知峰值区分可以区分个体定位的是新的全局峰值、新的局部峰值还是已发现的峰值,因此只能对全局峰值进行精度改进,以提高搜索效率。第三,景观感知重初始化根据发现峰的分布自适应地指定个体的初始位置,这有助于探索更多的峰。实验在 20 个广泛使用的基准 MMOP 上进行。实验结果表明,与最近提出的七种性能良好的算法和 IEEE CEC 多模态优化竞赛中的四种优胜算法相比,LADE 获得了普遍较好或具有竞争力的性能。
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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