连续全局优化问题的帝国策略方法

George Anescu
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引用次数: 3

摘要

本文介绍了应用于连续全局优化问题的一种新的全局优化策略——帝国主义策略(is)的原理。受现有多种群策略的启发,如并行进化算法(EA)和帝国主义竞争算法(ICA)的岛屿模型(IM)方法,所提出的IS方法被认为是一种优化策略,因为它可以整合其他已知的优化方法,这些方法在上下文中被视为子方法(尽管在其他上下文中它们是突出的全局优化方法)。采用遗传算法(GA)、差分进化(DE)、量子粒子群优化(QPSO)和人工蜂群优化(ABC)四种子方法分别对四种优化方法进行了实现和测试。在9个已知多模态优化问题的实验台上,采用适当的测试方法对所提优化方法的优化性能进行了比较。与单独运行的优化子方法的成功率相比,所获得的IS多种群变体的成功率增加了,结合并行和分布式实现可能感知到的计算效率的提高,表明IS是一种有前途的CGOP方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Imperialistic Strategy Approach to Continuous Global Optimization Problem
The paper is introducing the principles of a new global optimization strategy, Imperialistic Strategy (IS), applied to the Continuous Global Optimization Problem (CGOP). Inspired from existing multi-population strategies, like the Island Model (IM) approaches to parallel Evolutionary Algorithms (EA) and the Imperialistic Competitive Algorithm (ICA), the proposed IS method is considered an optimization strategy for the reason that it can integrate other well-known optimization methods, which in the context are regarded as sub-methods (although in other contexts they are prominent global optimization methods). Four optimization methods were implemented and tested in the roles of sub-methods: Genetic Algorithm (GA) (a floating-point representation variant), Differential Evolution (DE), Quantum Particle Swarm Optimization (QPSO) and Artificial Bee Colony (ABC). The optimization performances of the proposed optimization methods were compared on a test bed of 9 known multimodal optimization problems by applying an appropriate testing methodology. The obtained increased success rates of IS multi-population variants compared to the success rates of the optimization sub-methods run separately, combined with the increased computing efficiencies possible to be perceived for parallel and distributed implementations, demonstrated that IS is a promising approach to CGOP.
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