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The Beta distributed PSO, β-PSO, with application to Inverse Kinematics

机译:Beta分布式PSO,β-PSO,应用于反向运动学

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this paper introduced a new Particle swarm optimization, PSO, variant where Beta profiles are used to manage exploration and exploitation behaviors of the swarm. A key issue in PSO is that it is missing a clear separation between the exploration behavior and the exploitation behavior of the swarm. In Beta-PSO exploration/ exploitations phases are clearly identified and particles evolve differently in each phase. A couple of beta distributions are used to control both phases. In the exploration phase, particles evolve based on a pseudo-normal beta profile, while in the exploitation phase a decreasing exponential beta distribution is used. The proposed method is applied to solve the inverse kinematic problem of a 6 axes generic robot arm. Results showed that the quadratic error of Beta-PSO was about 5.5 e-17, while QPSO solutions were at the level of 5.6e-l0; SSA returned 6.6 e-8 error and classical PSO was at about 1.7 e-3. Those results were confirmed with the Wilcoxon non parametric comparison which clearly showed that Beta-PSO is better than the classical PSO, quantum PSO, and SSA for this application.
机译:本文介绍了一种新的粒子群优化,PSO,变体,用于管理群体的探索和利用行为。 PSO中的一个关键问题是它缺少探索行为与群体的开发行为之间的清晰分离。在Beta-PSO探索/利用阶段,清楚地鉴定相位,并且在每个阶段中颗粒在不同的情况下进化。使用几个测试版分布来控制两个阶段。在勘探阶段,颗粒基于伪正常β谱而发展,而在开发阶段中使用降低指数β分布。应用了所提出的方法来解决6轴通用机器人臂的反向运动问题。结果表明,β-PSO的二次误差约为5.5 e-17,而QPSO溶液的水平为5.6e-L0; SSA返回6.6 E-8错误和经典PSO约为1.7 E-3。用Wilcoxon非参数比较证实了这些结果,该比较清楚地表明β-PSO优于该应用的典型PSO,量子PSO和SSA。

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