首页> 外文会议>International Conference on Information and Computing Science;ICIC '09 >Particle Swarm Optimization Algorithm with Exponent Decreasing Inertia Weight and Stochastic Mutation
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Particle Swarm Optimization Algorithm with Exponent Decreasing Inertia Weight and Stochastic Mutation

机译:具有减小惯性权重和随机突变的粒子群优化算法

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The paper gives an improved particle swarm optimal algorithm in which a kind of exponent decreasing inertia weights is given to improve the convergence speed and a kind of stochastic mutations is used to improve the diversity of the swarm in order to overcome the disadvantage of premature convergence and later period oscillatory occurrences. It is shown by five representative benchmarks functionpsilas test that the improved algorithm is better than both a particle swarm optimization with linear decreasing inertia weight and a particle swarm optimization with exponent decreasing inertia weight in global searching and performance.
机译:本文提出了一种改进的粒子群优化算法,该算法给出了一种指数递减的惯性权重,以提高收敛速度,并利用一种随机突变来提高群体的多样性,以克服过早收敛和收敛的缺点。后期发生振荡。通过五个代表性基准测试函数psilaslas测试表明,在全局搜索和性能方面,改进的算法优于具有线性减小的惯性权重的粒子群优化和具有减小惯性权重的指数减小的粒子群优化。

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