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首页> 外文期刊>International journal of metaheuristics >Particle swarm optimisation with population size and acceleration coefficients adaptation using hidden Markov model state classification
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Particle swarm optimisation with population size and acceleration coefficients adaptation using hidden Markov model state classification

机译:基于隐马尔可夫模型状态分类的具有种群大小和自适应加速系数的粒子群优化算法。

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Particle swarm optimisation (PSO) is a metaheuristic algorithm based on population, it succeeded in solving a large number of optimisation problems. Several adaptive PSO algorithms have been proposed to enhance the performance of the original one. In particular, parameter adaptation has become a promising issue of PSO. In this paper, we propose an adaptive control of two PSO parameters using hidden Markov model (HMM) classification to enhance PSO performance, called HMM adaptive control of PSO (HMM-ACPSO). That is, we integrate HMM to have a stochastic control of states at each iteration. Then, the classified state by HMM is used to adapt PSO with both acceleration parameters and population size. Furthermore, several strategies varying the swarm are adopted according to the classified state. We performed evaluations on several benchmark functions to test the HMM-ACPSO algorithm. Experimental results reveal that our suggested scheme gives competitive results comparing with PSO variants regarding both solution accuracy and convergence speed.
机译:粒子群优化算法(PSO)是一种基于种群的元启发式算法,成功解决了许多优化问题。已经提出了几种自适应PSO算法来增强原始算法的性能。特别地,参数自适应已成为PSO的一个有前途的问题。在本文中,我们提出了使用隐马尔可夫模型(HMM)分类来提高PSO性能的两个PSO参数的自适应控制,称为PSO的HMM自适应控制(HMM-ACPSO)。也就是说,我们集成了HMM以在每次迭代时对状态进行随机控制。然后,使用HMM的分类状态来使PSO具有加速参数和总体大小。此外,根据分类状态,采用了几种改变群体的策略。我们对几个基准功能进行了评估,以测试HMM-ACPSO算法。实验结果表明,与PSO变体相比,我们提出的方案在解决方案精度和收敛速度上均具有竞争优势。

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