基于雅可比逆运动学的双足机器人快速平滑行走模式生成器

Jiu-Lou Yan, Han-Pang Huang
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引用次数: 9

摘要

为了求解多自由度机构的运动学逆解,利用雅可比线性化方法提出了许多求解方法。在求解运动学逆问题时,由于需要更新雅可比矩阵以求解不同末端执行器轨迹结点的构型,需要较长的计算时间。在本研究中,生成两个平滑轨迹作为目标位置,一个为摆动腿的脚踝,另一个为质心。利用生成的任务空间中彼此距离适当的节点,采用改进的雅可比矩阵法——固定腿雅可比矩阵求解运动学逆解。它可以保证在远离奇异点时只需要一次迭代求解构型,且位置误差很小(腿长的0.0712%)。提出了一种包含奇异避免和关节极限避免的实时步态生成算法。并进行了仿真。结果表明,该方法能够实时生成机器人行走时的光滑步态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast and smooth walking pattern generator of biped robot using Jacobian inverse kinematics
In order to solve inverse kinematics of a multi- DOF (degree of freedom) mechanism, many methods have been proposed with the Jacobian linearization method. When solving inverse kinematics problems with this method, long computation time is needed because the Jacobian matrix should be updated in order to solve the configuration for each different end-effector trajectory knot. In this study, two smooth trajectories are generated as target positions, one for swing leg's ankle, and the other for center of mass. These generated knot points in the task space with appropriate distance to each other are used to solve inverse kinematics by the proposed modified Jacobian method-Fixed leg Jacobian. It can guarantee that only one iteration is needed to solve the configuration when it is away from singularity with a small position error (0.0712% of leg length). We propose an algorithm that can generate the gait in real time including singularity avoidance and joint limit avoidance. Simulations have been carried out. The results showed that the proposed method can generate a smooth gait for robot walking on real time implementation.
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