SHADE with Iterative Local Search for Large-Scale Global Optimization

D. Molina, A. Latorre, F. Herrera
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引用次数: 60

Abstract

Global optimization is a very important topic in research due to its wide applications in many real-world problems in science and engineering. Among optimization problems, dimensionality is one of the most crucial issues that increases the difficulty of the optimization process. Thus, Large-Scale Global Optimization, optimization with a great number of variables, arises as a field that is getting an increasing interest. In this paper, we propose a new hybrid algorithm especially designed to tackle this type of optimization problems. The proposal combines, in a iterative way, a modern Differential Evolution algorithm with one local search method chosen from a set of different search methods. The selection of the local search method is dynamic and takes into account the improvement obtained by each of them in the previous intensification phase, to identify the most adequate in each case for the problem. Experiments are carried out using the CEC'2013 Large-Scale Global Optimization benchmark, and the proposal is compared with other state-of-the-art algorithms, showing that the synergy among the different components of our proposal leads to better and more robust results than more complex algorithms. In particular, it improves the results of the current winner of previous Large-Scale Global Optimization competitions, Multiple Offspring Sampling, MOS, obtaining very good results, especially in the most difficult problems.
基于迭代局部搜索的大规模全局优化
全局优化在现实科学和工程问题中有着广泛的应用,是一个非常重要的研究课题。在优化问题中,维数问题是最关键的问题之一,它增加了优化过程的难度。因此,大规模全局优化,具有大量变量的优化,成为一个越来越受关注的领域。在本文中,我们提出了一种新的混合算法,专门用于解决这类优化问题。该算法以迭代的方式将一种现代差分进化算法与从一组不同搜索方法中选择的一种局部搜索方法相结合。局部搜索方法的选择是动态的,并且考虑了每一种方法在前一强化阶段所获得的改进,以确定在每种情况下对问题最适当的方法。实验使用CEC'2013大规模全局优化基准进行,并与其他最先进的算法进行了比较,表明我们的提议的不同组件之间的协同作用导致比更复杂的算法更好,更稳健的结果。特别是,它改进了以往大规模全局优化竞赛(Multiple Offspring Sampling, MOS)的结果,获得了非常好的结果,特别是在最困难的问题上。
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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