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Improvisation of particle swarm optimization algorithm

机译:粒子群优化算法的改进

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The improvised Particle Swarm Optimization (PSO) Algorithm offers better search efficiency than conventional PSO algorithm. It provides an efficient technique to obtain the best optimized result in the search space. This algorithm ensures a faster rate of convergence to the desired solution whose precision can be preset by the user. The inertia parameter is varied linearly with iteration number, which results in more accurate solution for unimodal functions. The control over the precision value acts as a trade-off between the convergence time and precision of the desired solution, and it can be viewed as a performance parameter. Swarm convergence is followed by a mutation process, which further improves the obtained result by enhancing the local search ability of some particles. The results show that the solution with predefined precision level can be obtained with the minimum number of iterations.
机译:改进的粒子群算法(PSO)比传统的粒子群算法具有更好的搜索效率。它提供了一种有效的技术,可在搜索空间中获得最佳的优化结果。该算法可确保达到所需解决方案的更快收敛速度​​,而所需解决方案的精度可以由用户预先设置。惯性参数随迭代次数线性变化,从而为单峰函数提供更准确的解决方案。对精度值的控制充当了收敛时间与所需解决方案的精度之间的折衷,并且可以将其视为性能参数。群体收敛之后是突变过程,该过程通过增强某些粒子的局部搜索能力进一步改善了获得的结果。结果表明,可以以最少的迭代次数获得具有预定义精度级别的解决方案。

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