具有正交局部搜索的差分进化

Zhenzhen Dai, Aimin Zhou, Guixu Zhang, Sanyi Jiang
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引用次数: 17

摘要

差分进化算法是一种基于种群的启发式全局优化算法。与传统的优化方法相比,ea(包括DE)通常因收敛速度慢而受到批评。如何在保持其全局搜索能力的同时加快EA的收敛速度仍然是EA社区面临的挑战。本文提出了一种基于正交局部搜索(OLSDE)的差分进化方法,该方法将正交设计(OD)和EA结合起来进行全局优化。在每一代OLSDE中,首先使用通用DE过程,然后使用基于OD的局部搜索来提高部分解的质量。将该方法应用于多种测试实例,并与基本DE方法和基于正交DE方法进行了比较。实验结果表明,该方法能够很好地处理给定的连续测试实例。
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A differential evolution with an orthogonal local search
Differential evolution (DE) is a kind of evolutionary algorithms (EAs), which are population based heuristic global optimization methods. EAs, including DE, are usually criticized for their slow convergence comparing to traditional optimization methods. How to speed up the EA convergence while keeping its global search ability is still a challenge in the EA community. In this paper, we propose a differential evolution method with an orthogonal local search (OLSDE), which combines orthogonal design (OD) and EA for global optimization. In each generation of OLSDE, a general DE process is used firstly, and then an OD based local search is utilized to improve the quality of some solutions. The proposed OLSDE is applied to a variety of test instances and compared with a basic DE method and an orthogonal based DE method. The experimental results show that OLSDE is promising for dealing with the given continuous test instances.
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