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首页> 外文期刊>Journal of Global Optimization >Dynamic analysis for the selection of parameters and initial population, in particle swarm optimization
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Dynamic analysis for the selection of parameters and initial population, in particle swarm optimization

机译:粒子群优化中参数选择和初始种群的动态分析

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In this paper we consider the evolutionary Particle Swarm Optimization (PSO) algorithm, for the minimization of a computationally costly nonlinear function, in global optimization frameworks. We study a reformulation of the standard iteration of PSO (Clerc and Kennedy in IEEE Trans Evol Comput 6(1) 2002), (Kennedy and Eberhart in IEEE Service Center, Piscataway, IV: 1942-1948, 1995) into a linear dynamic system. We carry out our analysis on a generalized PSO iteration, which includes the standard one proposed in the literature. We analyze three issues for the resulting generalized PSO: first, for any particle we give both theoretical and numerical evidence on an efficient choice of the starting point. Then, we study the cases in which either deterministic and uniformly randomly distributed coefficients are considered in the scheme. Finally, some convergence analysis is also provided, along with some necessary conditions to avoid diverging trajectories. The results proved in the paper can be immediately applied to the standard PSO iteration.
机译:在本文中,我们考虑在全局优化框架中使用进化粒子群优化(PSO)算法,以最小化计算成本高昂的非线性函数。我们研究了PSO(IEEE Trans Evol Comput 6(1)2002中的Clerc和Kennedy),(Piscataway,IV:1942-1948,1995)的IEEE服务中心的Kennedy和Eberhart的重构形式。我们对广义的PSO迭代进行分析,其中包括文献中提出的标准PSO迭代。我们分析了生成的广义PSO的三个问题:首先,对于任何粒子,我们都提供了有效选择起点的理论和数值证据。然后,我们研究在方案中考虑确定性和均匀随机分布系数的情况。最后,还提供了一些收敛性分析,以及避免偏离轨迹的一些必要条件。本文证明的结果可立即应用于标准PSO迭代。

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