Brain Embodiment Lab, Department of Biomedical Engineering, School of Biological Sciences, University of Reading, Reading, RG6 6AH, United Kingdom.
Sci Rep. 2017 Jan 19;7:40869. doi: 10.1038/srep40869.
A new dynamics-driven control law was developed for a robot arm, based on the feedback control law which uses the linear transformation directly from work space to joint space. This was validated using a simulation of a two-joint planar robot arm and an optimisation algorithm was used to find the optimum matrix to generate straight trajectories of the end-effector in the work space. We found that this linear matrix can be decomposed into the rotation matrix representing the orientation of the goal direction and the joint relation matrix (M) representing the joint response to errors in the Cartesian work space. The decomposition of the linear matrix indicates the separation of path planning in terms of the direction of the reaching motion and the synergies of joint coordination. Once the M is numerically obtained, the feedfoward planning of reaching direction allows us to provide asymptotically stable, linear trajectories in the entire work space through rotational transformation, completely avoiding the use of inverse kinematics. Our dynamics-driven control law suggests an interesting framework for interpreting human reaching motion control alternative to the dominant inverse method based explanations, avoiding expensive computation of the inverse kinematics and the point-to-point control along the desired trajectories.
一种新的基于动力学的控制律被开发出来,用于控制机械臂,该控制律基于反馈控制律,它直接将线性变换从工作空间应用到关节空间。通过对一个两关节平面机械臂的模拟进行验证,并使用优化算法找到了生成工作空间中末端执行器直线轨迹的最优矩阵。我们发现,这个线性矩阵可以分解为代表目标方向的旋转矩阵和代表关节对笛卡尔工作空间中误差响应的关节关系矩阵(M)。线性矩阵的分解表明,在到达运动的方向和关节协调的协同作用方面,可以将路径规划分离。一旦数值上得到了 M,我们就可以通过旋转变换为到达方向提供渐近稳定的线性轨迹,完全避免使用逆运动学。我们的动力学驱动控制律为解释人类的到达运动控制提供了一个有趣的框架,替代了基于主导逆方法的解释,避免了昂贵的逆运动学计算和沿期望轨迹的点对点控制。