首页> 外文会议>ASME annual dynamic systems and control conference >A TASK-LEVEL ITERATIVE LEARNING CONTROL ALGORITHM FOR ACCURATE TRACKING IN MANIPULATORS WITH MODELING ERRORS AND STRINGENT JOINT POSITION LIMITS
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A TASK-LEVEL ITERATIVE LEARNING CONTROL ALGORITHM FOR ACCURATE TRACKING IN MANIPULATORS WITH MODELING ERRORS AND STRINGENT JOINT POSITION LIMITS

机译:具有建模误差和严格关节位置限制的机械臂精确跟踪的任务级迭代学习控制算法

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We present an iterative learning control algorithm for accurate task space tracking of kinematically redundant robots with stringent joint position limits and kinematic modeling errors. The iterative learning control update rule is in the task space and consists of adding a correction to the desired end-effector pose based on the tracking error. The new desired end-effector pose is then fed to an inverse kinematics solver that uses the redundancy of the robot to compute feasible joint positions. We discuss the stability, the rate of convergence and the sensitivity to learning gain for our algorithm using quasi-static motion examples. The efficacy of the algorithm is demonstrated on a simulated four link manipulator with joint position limits that learns the modeling error to draw the figure eight in 4 trials.
机译:我们提出了一种迭代学习控制算法,用于对运动冗余的机器人进行精确的任务空间跟踪,这些机器人具有严格的关节位置限制和运动学建模错误。迭代学习控制更新规则位于任务空间中,包括根据跟踪误差对所需的末端执行器姿势进行校正。然后将新的所需末端执行器姿势馈入逆运动学求解器,该求解器使用机器人的冗余来计算可行的关节位置。我们使用准静态运动示例讨论了我们算法的稳定性,收敛速度和对学习增益的敏感性。该算法的有效性在具有关节位置限制的模拟四连杆操纵器上得到了证明,该操纵器学习了建模误差,在4次试验中得出了8个数字。

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