首页> 外文会议>Genetic and Evolutionary Computation Conference Pt.1 Jul 12-16, 2003 Chicago, IL, USA >Optimization Using Particle Swarms with Near Neighbor Interactions
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Optimization Using Particle Swarms with Near Neighbor Interactions

机译:使用具有近邻交互作用的粒子群优化

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This paper presents a modification of the particle swarm optimization algorithm (PSO) intended to combat the problem of premature convergence observed in many applications of PSO. In the new algorithm, each particle is attracted towards the best previous positions visited by its neighbors, in addition to the other aspects of particle dynamics in PSO. This is accomplished by using the ratio of the relative fitness and the distance of other particles to determine the direction in which each component of the particle position needs to be changed. The resulting algorithm, known as Fitness-Distance-Ratio based PSO (FDR-PSO), is shown to perform significantly better than the original PSO algorithm and several of its variants, on many different benchmark optimization problems. Avoiding premature convergence allows FDR-PSO to continue search for global optima in difficult multimodal optimization problems, reaching better solutions than PSO and several of its variants.
机译:本文提出了一种改进的粒子群优化算法(PSO),以解决在PSO的许多应用中观察到的过早收敛的问题。在新算法中,除了PSO中粒子动力学的其他方面之外,每个粒子都被吸引到其邻居访问的最佳先前位置。这是通过使用相对适应度与其他粒子的距离之比来确定需要更改粒子位置的每个分量的方向来实现的。结果表明,在许多不同的基准优化问题上,该算法被称为基于适应度-距离-比率的PSO(FDR-PSO),其性能明显优于原始PSO算法及其几种变体。避免过早收敛,FDR-PSO可以继续在棘手的多峰优化问题中寻找全局最优值,从而获得比PSO及其多个变体更好的解决方案。

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