Bi-criteria torque optimization of redundant manipulators based on a simplified dual neural network

Shubao Liu, Jun Wang
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引用次数: 11

Abstract

The bi-criteria joint torque optimization of kinematically redundant manipulators balances between the energy consumption and the torque distribution among the joints. In this paper, a simplified dual neural network is proposed to solve this problem. Joint torque limits are incorporated simultaneously into the proposed optimization scheme. The simplified dual network has less numbers of neurons compared with other recurrent neural networks and is proved to be globally convergent to optimal solutions. The control scheme based on the recurrent neural network is simulated with the PUMA 560 robot manipulator to demonstrate effectiveness.
基于简化对偶神经网络的冗余机械臂双准则转矩优化
运动冗余度机械臂的双准则关节力矩优化在能量消耗和关节间力矩分配之间取得了平衡。本文提出了一种简化的对偶神经网络来解决这一问题。同时将关节扭矩限制纳入优化方案。与其他递归神经网络相比,简化的对偶网络具有较少的神经元数量,并被证明是全局收敛到最优解的。以PUMA 560机器人为例,对基于递归神经网络的控制方案进行了仿真,验证了该控制方案的有效性。
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