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Multi swarm bare bones particle swarm optimization with distribution adaption

机译:具有分布自适应的多群裸骨头粒子群优化

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Bare bones PSO is a simple swarm optimization approach that uses a probability distribution like Gaussian distribution in the position update rules. However, due to its nature, Bare bones PSO is highly prone to premature convergence and stagnation. The characteristics of the probability distribution functions used in the update rule have a tense impact on the performance of the bare bones PSO. As a result, this paper investigates the use of different methods for estimating the probability distributions used in the update rule. Four methods or strategies are developed that are using Gaussian or multivariate Gaussian distributions. The choice of an appropriate updating strategy for each particle greatly depends on the characteristics of the fitness landscape that surrounds the swarm. To deal with issue, the cellular learning automata model is incorporated with the proposed bare bones PSO, which is able to adaptively learn suitable updating strategies for the particles. Through the interactions among its elements and the learning capabilities of its learning automata, cellular learning automata gradually learns to select the best updating rules for the particles based on their surrounding fitness landscape. This paper also, investigates a new and simple method for adaptively refining the covariance matrices of multivariate Gaussian distributions used in the proposed updating strategies. The proposed method is compared with some other well-known particle swarm approaches. The results indicate the superiority of the proposed approach in terms of the accuracy of the achieved results and the speed in finding appropriate solutions. (C) 2016 Elsevier B.V. All rights reserved.
机译:裸露骨骼PSO是一种简单的群体优化方法,在位置更新规则中使用诸如高斯分布的概率分布。但是,由于其性质,裸露的骨骼PSO非常容易过早收敛和停滞。更新规则中使用的概率分布函数的特性对裸露的PSO性能有紧张的影响。结果,本文研究了使用不同的方法来估计更新规则中使用的概率分布。开发了四种使用高斯分布或多元高斯分布的方法或策略。为每个粒子选择合适的更新策略在很大程度上取决于围绕群体的健身环境的特征。为了解决这个问题,将蜂窝学习自动机模型与所提出的裸露的骨骼PSO结合在一起,该模型能够自适应地学习粒子的合适更新策略。通过其元素之间的相互作用以及其学习自动机的学习能力,细胞学习自动机逐渐学习根据粒子的周围适应度为粒子选择最佳更新规则。本文还研究了一种新的简单方法,用于自适应地改进提出的更新策略中使用的多元高斯分布的协方差矩阵。将该方法与其他一些著名的粒子群方法进行了比较。结果表明,在实现结果的准确性和寻找合适解决方案的速度方面,该方法具有优势。 (C)2016 Elsevier B.V.保留所有权利。

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