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Memetic Algorithm with Constrained Local Search for Large-Scale Global Optimization

机译:具有大规模全局优化的受限本地搜索的膜算法

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摘要

Nature-inspired algorithms are seen as potential tools to solve large-scale global optimization problems. Memetic algorithms (MAs) are nature-inspired techniques based on evolutionary computation. MAs are considered as modified genetic algorithms integrated with a local search mechanism. Conventional MAs perform well for small dimensions; however, their performance starts declining with the increase in dimensions. It is popularly known as the "curse of dimensionality" problem. In order to solve this problem, MA with constrained local search (MACLS) is proposed for single-objective optimization problems. MACLS restricts the local search to be performed after every generation. Controlled local search enhances the optimization capability of the MA. MACLS has been evaluated with respect to GS-MPSO (the latest modification of MA) and MLCC, EPUS-PSO, JDEdynNP-F, MTS, DewSAcc, DMS-PSO, LSEDA-gl, UEP, ALPSEA, classical DE (differential evolution), and real-coded CHC algorithms that participated in the Congress on Evolutionary Computation 2008 competition. The results establish that MACLS significantly outperforms these algorithms in attaining global optima for unimodal and multimodal single-objective optimization problems for small as well as large dimensions.
机译:自然启发算法被视为解决大规模全球优化问题的潜在工具。膜算法(MAS)是基于进化计算的自然启发技术。 MAS被认为是与本地搜索机制集成的修改遗传算法。传统的MAS对小尺寸表现出色;但是,它们的性能随着尺寸的增加而开始下降。它普遍称为“维度诅咒”问题。为了解决这个问题,提出了具有受约束的本地搜索(MACL)的MA进行单目标优化问题。 MACL限制在每一代之后要执行本地搜索。受控本地搜索增强了MA的优化能力。已在GS-MPSO(MA的最新修改)和MLCC,EPUS-PSO,JdedynnP-F,MTS,DEWSACC,DMS-PSO,LSEDA-GL,UEP,Alpsea,古典de(差分演进)进行了评估了Macls。 ,并参加大会关于进化计算2008年竞争的实际编码的CHC算法。结果表明,MACLS显着优于这些算法,以获得全球最佳的单峰和多模式单目标优化问题,以及大尺寸。

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