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PSO Based on Cartesian Coordinate System

机译:PSO基于笛卡尔坐标系

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In order to deal with the problems of the slow convergence and easily converging to local optima, a classification learning PSO is proposed based on hyperspherical coordinates. The method of determination of poor performance particle is presented, and the swarm is divided into three parts where three learning strategies are introduced to improve the swarm to escape from local optima. Additionally, to decrease outside disturbance, the particle positions and velocities are updated in hyperspherical coordinate system, which improve the probability flying to the optimal solution. The simulation experiments of three typical functions are conducted, and the results show the effectiveness of the proposed algorithm. Consequently, CLPSO-HC can be used as an effective algorithm to solve complex multimodal problems.
机译:为了应对缓慢收敛的问题,并且容易地融合到局部最优,基于超球坐标提出了一种分类学习PSO。介绍了测定性能粒子的测定方法,并且群体分为三个部分,其中引入了三个学习策略,以改善群体逃离当地最佳。另外,为了减少外部干扰,粒子位置和速度在高度球形坐标系中更新,这改善了飞向最佳解决方案的概率。进行三种典型功能的仿真实验,结果表明了该算法的有效性。因此,CLPSO-HC可以用作解决复杂多数制问题的有效算法。

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