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Two recurrent neural networks for local joint torque optimization of kinematically redundant manipulators

机译:用于运动学冗余机械手局部关节扭矩优化的两个递归神经网络

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This paper presents two neural network approaches to real-time joint torque optimization for kinematically redundant manipulators. Two recurrent neural networks are proposed for determining the minimum driving joint torques of redundant manipulators for the eases without and with taking the joint torque limits into consideration, respectively. The first neural network is called the Lagrangian network and the second one is called the primal-dual network. In both neural-network-based computation schemes, while the desired accelerations of the end-effector for a specific task are given to the neural networks as their inputs, the signals of the minimum driving joint torques are generated as their outputs to drive the manipulator arm. Both proposed recurrent neural networks are shown to be capable of generating minimum stable driving joint torques. In addition, the driving joint torques computed by the primal-dual network are shown never exceeding the joint torque limits.
机译:本文提出了两种神经网络方法,用于运动学冗余机械手的实时联合扭矩优化。提出了两个递归神经网络来轻松确定冗余机械手的最小驱动关节扭矩,而无需考虑关节扭矩极限。第一个神经网络称为拉格朗日网络,第二个神经网络称为原始对偶网络。在两种基于神经网络的计算方案中,将特定任务所需的末端执行器加速作为神经网络的输入,同时将产生最小驱动关节扭矩的信号作为其输出来驱动机械手。臂。两种提议的递归神经网络都显示出能够产生最小的稳定驱动关节扭矩。此外,显示的是由原始-双重网络计算得出的驱动关节扭矩从未超过关节扭矩极限。

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