Backpropagation through links: a new approach to kinematic control of serial manipulators

R. Gazit, B. Widrow
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引用次数: 5

Abstract

We present a new approach to neural control of serial manipulators, based on the sequential nature of the forward kinematics equations. A neural network is trained to compute the angle between two adjacent links, using the location error of the connecting joint as an input. This angle is then used to derive the location of the next joint, according to a single link kinematic equation. The procedure is repeated until all the links angles are computed. When embedded in a closed loop controller, this algorithm provides smooth operation of a serial manipulator with any number of links. The neural network is trained by backpropagating the end-effector location error through the links equations, in a similar way to backpropagation through time. The training procedure does not involve known solutions of the inverse kinematics problem. Moreover, no retraining of the network is required when adding or removing links. Several examples demonstrate the manipulator performance for three, four and six link robot arms.
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链接反向传播:串联机械臂运动控制的新方法
基于正运动学方程的序列性质,提出了一种新的神经控制方法。利用连接关节的位置误差作为输入,训练神经网络来计算两个相邻连杆之间的角度。然后根据单个连杆的运动学方程,利用这个角度推导出下一个关节的位置。重复这个过程,直到计算出所有的连杆角度。当嵌入闭环控制器时,该算法提供了具有任意数量链路的串行机械手的平滑操作。神经网络通过链路方程反向传播末端执行器位置误差,以类似于时间反向传播的方式进行训练。训练过程不涉及已知的逆运动学问题的解。此外,在添加或删除链接时不需要对网络进行再训练。通过实例验证了三连杆、四连杆和六连杆机械臂的操纵性能。
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