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Iterative learning control for accurate task-space tracking with humanoid robots

机译:仿人机器人的迭代学习控制可精确跟踪任务空间

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Precise task-space tracking with manipulator-type systems requires accurate kinematics models. In contrast to traditional manipulators, it is difficult to obtain an accurate kinematic model of humanoid robots due to complex structure and link flexibility. Also, prolonged use of the robot will lead to some parts wearing out or being replaced with a slightly different alignment, thus throwing off the initial calibration. Therefore, there is a need to develop a control algorithm that can compensate for the modeling errors and quickly retune itself, if needed, taking into account the controller bandwidth limitations and high dimensionality of the system. In this paper, we develop an iterative learning control algorithm that can work with existing inverse kinematics solver to refine the joint-level control commands to enable precise tracking in the task space. We demonstrate the efficacy of the algorithm on a theme-park type humanoid that learns to track the figure eight in 18 trials and to serve a drink without spilling in 9 trials.
机译:使用机械手类型的系统进行精确的任务空间跟踪需要精确的运动学模型。与传统机械手相比,由于复杂的结构和链接的灵活性,很难获得人形机器人的精确运动学模型。同样,长时间使用机器人会导致某些零件磨损或以稍有不同的对齐方式替换,从而导致初始校准失败。因此,需要开发一种控制算法,该算法可以补偿建模误差并在需要时考虑到控制器带宽限制和系统的高维度而快速重新调整自身。在本文中,我们开发了一种迭代学习控制算法,该算法可与现有的逆运动学求解器一起使用,以细化关节级控制命令,从而能够在任务空间中进行精确跟踪。我们在主题公园类型的类人动物上演示了该算法的有效性,该类人动物在18次试验中学会了追踪8位人物,并且在9次试验中不漏酒。

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