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A genetic algorithm and a particle swarm optimizer hybridized with Nelder-Mead simplex search

机译:Nelder-Mead单纯形搜索相结合的遗传算法和粒子群优化算法

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This paper integrates Nelder-Mead simplex search method (NM) with genetic algorithm (GA) and particle swarm optimization (PSO), respectively, in an attempt to locate the global optimal solutions for the nonlinear continuous variable functions mainly focusing on response surface methodology (RSM). Both the hybrid NM-GA and NM-PSO algorithms incorporate concepts from the NM, GA or PSO, which are readily to implement in practice and the computation of functional derivatives is not necessary. The hybrid methods were first illustrated through four test functions from the RSM literature and were compared with original NM, GA and PSO algorithms. In each test scheme, the effectiveness, efficiency and robustness of these methods were evaluated via associated performance statistics, and the proposed hybrid approaches prove to be very suitable for solving the optimization problems of RSM-type. The hybrid methods were then tested by ten difficult nonlinear continuous functions and were compared with the best known heuristics in the literature. The results show that both hybrid algorithms were able to reach the global optimum in all runs within a comparably computational expense.
机译:本文分别将Nelder-Mead单纯形搜索方法(NM)与遗传算法(GA)和粒子群优化(PSO)集成在一起,以期主要针对响应面方法来定位非线性连续变量函数的全局最优解( RSM)。混合NM-GA和NM-PSO算法都结合了NM,GA或PSO的概念,这些概念很容易在实践中实现,并且不需要计算功能导数。首先通过RSM文献中的四个测试功能说明了混合方法,并将其与原始NM,GA和PSO算法进行了比较。在每个测试方案中,通过相关的性能统计数据评估了这些方法的有效性,效率和鲁棒性,并且所提出的混合方法被证明非常适合解决RSM型优化问题。然后通过十个困难的非线性连续函数对混合方法进行了测试,并与文献中最著名的启发式方法进行了比较。结果表明,两种混合算法都能够在相当的计算费用内在所有运行中达到全局最优。

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