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Self-adaptive randomized and rank-based differential evolution for multimodal problems

机译:多模式问题的自适应随机和基于秩的差分演化

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Differential Evolution (DE) is a widely used successful evolutionary algorithm (EA) based on a population of individuals, which is especially well suited to solve problems that have non-linear, multimodal cost functions. However, for a given population, the set of possible new populations is finite and a true subset of the cost function domain. Furthermore, the update formula of DE does not use any information about the fitness of the population. This paper presents a novel extension of DE called Randomized and Rank-based Differential Evolution (R2DE) and its self-adaptive version SAR2DE to improve robustness and global convergence speed on multimodal problems by introducing two multiplicative terms in the DE update formula. The first term is based on a random variate of a Cauchy distribution, which leads to a randomization. The second term is based on ranking of individuals, so that R2DE exploits additional information provided by the population fitness. In extensive experiments conducted with a wide range of complexity settings, we show that the proposed heuristics lead to an overall improvement in robustness and speed of convergence compared to several global optimization techniques, including DE, Opposition based Differential Evolution (ODE), DE with Random Scale Factor (DERSF) and the self-adaptive Cauchy distribution based DE (NSDE).
机译:差异进化(DE)是一种广泛使用的基于个体种群的成功进化算法(EA),特别适合解决具有非线性,多峰成本函数的问题。但是,对于给定的总体,可能的新总体的集合是有限的,并且是成本函数域的真实子集。此外,DE的更新公式不使用有关人口适应性的任何信息。本文介绍了DE的一种新扩展,称为随机和基于秩的差分进化(R2DE)及其自适应版本SAR2DE,以通过在DE更新公式中引入两个乘法项来提高多模态问题的鲁棒性和全局收敛速度。第一项基于柯西分布的随机变量,从而导致随机化。第二项基于个人排名,因此R2DE利用人口适应性提供的其他信息。在使用各种复杂度设置进行的广泛实验中,我们表明,与几种全局优化技术(包括DE,基于对立的差分进化(ODE),具有随机性的DE)相比,所提出的启发式方法在鲁棒性和收敛速度方面带来了整体改善。比例因子(DERSF)和基于柯西分布的自适应DE(NSDE)。

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