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Neural network learning control of robot manipulators using gradually increasing task difficulty

机译:逐步增加任务难度的机器人机械手神经网络学习控制

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Trajectory extension learning is an incremental method for training an artificial neural network to approximate the inverse dynamics of a robot manipulator. Training data near a desired trajectory is obtained by slowly varying a parameter of the trajectory from a region of easy solvability of the inverse dynamics toward the desired behavior. The parameter can be average speed, path shape, feedback gain, or any other controllable variable. As learning proceeds, an approximate solution to the local inverse dynamics for each value of the parameter is used to guide learning for the next value of the parameter. Convergence conditions are given for two variations on the algorithm. Examples are shown of application to a real 2-joint direct drive robot arm and a simulated 3-joint redundant arm, both using simulated equilibrium point control.
机译:轨迹扩展学习是一种用于训练人工神经网络以逼近机器人操纵器逆动力学的增量方法。通过从逆动力学的容易解算的区域向期望行为缓慢地改变轨迹的参数,来获得接近期望轨迹的训练数据。该参数可以是平均速度,路径形状,反馈增益或任何其他可控变量。随着学习的进行,针对参数的每个值的局部逆动力学的近似解被用于指导针对参数的下一个值的学习。给出了算法的两个变体的收敛条件。给出了应用到真实的2关节直接驱动机器人手臂和模拟的3关节冗余手臂上的示例,它们均使用模拟平衡点控制。

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