基于 CMOSPBO 的机械手多目标最优轨迹规划

Tingting Bao, Zhijun Wu, Jianliang Chen
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引用次数: 0

摘要

对于生产过程中使用的机械手而言,可行、平滑且时间紧迫的最优轨迹至关重要。本文提出了一种基于五次 B 样条和受约束多目标学生心理优化(CMOSPBO)的机器人机械手关节空间轨迹生成新技术。为了获得最佳轨迹,考虑了两个目标函数,包括总行程时间和整个轨迹上的运动平方积分。通过五次 B-样条对整个轨迹进行插值,然后利用 CMOSPBO 进行优化,同时考虑到速度、加速度和颠簸的运动学约束。CMOSPBO 主要包括基于学生心理的改进优化、档案管理和自适应ε约束处理方法。采用莱维飞行和差分突变来增强改进型 SPBO 的全局探索能力。ε值随迭代次数和可行解而变化,以防止 CMOSPBO 过早收敛。提出了与决策空间和目标空间的解分布相对应的解密度估计,以增加解的多样性。实验结果表明,CMOSPBO 在运动效率和抽动方面优于 SQP 和 NSGA-II。对比结果表明,所提出的方法能有效地为机械手生成时间颠簸最优和颠簸连续的轨迹。
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Multi-objective optimal trajectory planning for manipulators based on CMOSPBO

Feasible, smooth, and time-jerk optimal trajectory is essential for manipulators utilized in manufacturing process. A novel technique to generate trajectories in the joint space for robotic manipulators based on quintic B-spline and constrained multi-objective student psychology based optimization (CMOSPBO) is proposed in this paper. In order to obtain the optimal trajectories, two objective functions including the total travelling time and the integral of the squared jerk along the whole trajectories are considered. The whole trajectories are interpolated by quintic B-spline and then optimized by CMOSPBO, while taking into account kinematic constraints of velocity, acceleration, and jerk. CMOSPBO mainly includes improved student psychology based optimization, archive management, and an adaptive ε-constraint handling method. Lévy flights and differential mutation are adopted to enhance the global exploration capacity of the improved SPBO. The ε value is varied with iterations and feasible solutions to prevent the premature convergence of CMOSPBO. Solution density estimation corresponding to the solution distribution in decision space and objective space is proposed to increase the diversity of solutions. The experimental results show that CMOSPBO outperforms than SQP, and NSGA-II in terms of the motion efficiency and jerk. The comparison results demonstrate the effectiveness of the proposed method to generate time-jerk optimal and jerk-continuous trajectories for manipulators.

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