Trajectory planning for robot arm based on the Improved Mixture of Motors Primitives

Shuo Wang, Yinlong Yuan, Hongyu Shi, Y. Zhong
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Abstract

In order to reduce the dependence of the dynamic motion primitive model’s trajectory planning on data sets and improve its generalization ability on small data sets, we propose an improved Mixture of Motors Primitives (MoMP) algorithm. MoMP uses a new motion primitive model to achieve the same direction as the taught trajectory and the learned trajectory by using less teaching information as components to build the original motion primitive information base. Additionally, MoMP uses the gating unit to develop an optimal weighting strategy to learn new motion primitives and form the motion trajectory. Using MATLAB software combined with the Robotics Toolbox to build a simulation platform, the iiwa robotic arm was utilized to plan the grasping path of a given object. As a result, the endpoint error in the planned motion was reduced by 48%.
基于改进混合马达原语的机械臂轨迹规划
为了降低动态运动原语模型的轨迹规划对数据集的依赖性,提高其在小数据集上的泛化能力,提出了一种改进的混合运动原语(MoMP)算法。MoMP使用一种新的运动原语模型,通过使用较少的教学信息作为组件来构建原始的运动原语信息库,实现与教轨迹和学轨迹方向一致。此外,MoMP使用门控单元来开发最优加权策略,以学习新的运动原语并形成运动轨迹。利用MATLAB软件结合Robotics Toolbox搭建仿真平台,利用iiwa机械臂规划给定物体的抓取路径。结果,计划运动中的端点误差减少了48%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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