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Global Evolution Commended by Localized Search for Unconstrained Single Objective Optimization

机译:全球演变由本地化搜索无限制的单身客观优化

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摘要

Differential Evolution (DE) is one of the prevailing search techniques in the present era to solve global optimization problems. However, it shows weakness in performing a localized search, since it is based on mutation strategies that take large steps while searching a local area. Thus, DE is not a good option for solving local optimization problems. On the other hand, there are traditional local search (LS) methods, such as Steepest Decent and Davidon–Fletcher–Powell (DFP) that are good at local searching, but poor in searching global regions. Hence, motivated by the short comings of existing search techniques, we propose a hybrid algorithm of a DE version, reflected adaptive differential evolution with two external archives (RJADE/TA) with DFP to benefit from both search techniques and to alleviate their search disadvantages. In the novel hybrid design, the initial population is explored by global optimizer, RJADE/TA, and then a few comparatively best solutions are shifted to the archive and refined there by DFP. Thus, both kinds of searches, global and local, are incorporated alternatively. Furthermore, a population minimization approach is also proposed. At each call of DFP, the population is decreased. The algorithm starts with a maximum population and ends up with a minimum. The proposed technique was tested on a test suite of 28 complex functions selected from literature to evaluate its merit. The results achieved demonstrate that DE complemented with LS can further enhance the performance of RJADE/TA.
机译:差分演进(de)是本时解决全球优化问题的现行搜索技术之一。然而,它显示了执行本地化搜索的弱点,因为它基于在搜索局域搜索时采取大步骤的突变策略。因此,de不是解决局部优化问题的良好选择。另一方面,存在传统的本地搜索(LS)方法,例如陡峭的体面和Davidon-Fletcher-Powell(DFP),擅长本地搜索,但在寻找全球区域方面较差。因此,由于现有搜索技术的短暂作用,我们提出了一种混合版本的混合算法,反映了具有两个外部档案(RJADE / TA)的自适应差分演进,其中DFP从两个搜索技术中受益,并减轻他们的搜索缺点。在新型混合设计中,全球优化器,RJADE / TA探索初始群体,然后几个比较最佳解决方案转移到存档并通过DFP在那里改进。因此,两种搜索,全局和局部都被交替结合在一起。此外,还提出了一种最小化方法。在每个DFP的召唤时,人口减少了。该算法从最大种群开始,最终最终。在选自文献中的28个复杂功能的测试套件上测试了所提出的技术,以评估其优点。实现的结果表明,与LS相辅相成的DE可以进一步增强RJADE / TA的性能。

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