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Analysis of Adaptive Mutation in Crazy Particle Swarm Optimization

机译:粒子群优化算法中的自适应变异分析

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This paper contributes an investigation in the utilization of adaptive mutation in a very prominent edition of particle swarm optimization technique i.e, crazy particle swarm optimization for the betterment of finding out the global best solution. In the field of swarm intelligence, particle swarm optimization is recognized as one of the popular techniques, which have shown an accepted performance in various real world engineering problems. Simultaneously, it has some cons which inspire the researchers for further modifications to get a better output with the improvement of its convergence quality. Here we proposed one enhanced version of Crazy PSO i.e. Adaptive mutated Crazy PSO. After the results of simulating experiment, it has been observed that Adaptive mutated Crazy PSO has exhibited improved results as compared to the basic Crazy PSO. The addition of Adaptive mutation helps in the achievement of better performance in Crazy PSO which has been tested on various benchmark functions
机译:本文有助于在一个非常突出版本的粒子群优化技术中利用自适应突变的调查,即疯狂的粒子群优化,以提高寻找全球最佳解决方案。在群体智能领域,粒子群优化被认为是一种流行的技术之一,它在各种现实世界工程问题中显示出了接受的性能。同时,它有一些缺点,它激发了研究人员,以便进一步修改,以提高其收敛质量的更好的产出。在这里,我们提出了一个增强版的疯狂PSO,即适应性突变的疯狂PSO。在模拟实验结果之后,已经观察到,与基本疯狂PSO相比,自适应突变的疯狂PSO表现出改善的结果。自适应突变的增加有助于在疯狂的PSO中实现更好的性能,这已经在各种基准函数上进行了测试

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