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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Evolutionary collision-free optimal trajectory planning for intelligent robots
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Evolutionary collision-free optimal trajectory planning for intelligent robots

机译:智能机器人的无进化无碰撞最优轨迹规划

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This paper presents optimization procedures based on evolutionary algorithms such as the elitist non-dominated sorting genetic algorithm (NSGA-II) and differential evolution (DE) for solving the trajectory planning problem of intelligent robot manipulators with the prevalence of fixed, moving, and oscillating obstacles. The aim is the minimization of a combined objective function, with the constraints being actuator constraints, joint limits, and the obstacle avoidance constraint by considering dynamic equations of motion. Trajectories are defined by B-spline functions. This is a non-linear constrained optimization problem with six objective functions, 31 constraints, and 42 variables. The combined objective function is a weighted balance of transfer time, the mean average of actuator efforts and power, penalty for collision-free motion, singularity avoidance, joint jerks, and joint accelerations. The obstacles are present in the workspace of the robot. The distance between potentially colliding parts is expressed as obstacle avoidance. Further, the motion is represented using translational and rotational matrices. The proposed optimization techniques are explained by applying them to an industrial robot (PUMA 560 robot). Also, the results obtained from NSGA-II and DE are compared and analyzed. This is the first research work which considers all the decision criteria for the trajectory planning of industrial robots with obstacle avoidance. A comprehensive user-friendly general-purpose software package has been developed using VC++ to obtain the optimal solutions using the proposed DE algorithm.
机译:本文提出了基于进化算法的优化程序,例如精英非支配排序遗传算法(NSGA-II)和微分进化(DE),以解决固定,移动和振动普遍存在的智能机器人操纵器的轨迹规划问题。障碍。目的是通过考虑运动的动态方程,使组合的目标函数最小化,其中的约束是执行器约束,关节极限和避障约束。轨迹由B样条函数定义。这是一个非线性约束优化问题,具有六个目标函数,31个约束和42个变量。组合的目标函数是传递时间,执行器作用力和功率的平均平均值,无碰撞运动的损失,避免奇点,关节晃动和关节加速度的加权平衡。障碍物存在于机器人的工作空间中。潜在碰撞部分之间的距离表示为避障。此外,使用平移和旋转矩阵表示运动。通过将所建议的优化技术应用于工业机器人(PUMA 560机器人)进行解释。此外,比较并分析了从NSGA-II和DE获得的结果。这是第一项研究工作,考虑了具有避障功能的工业机器人轨迹规划的所有决策标准。使用VC ++开发了一个全面的用户友好型通用软件包,以使用提出的DE算法获得最佳解决方案。

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