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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A >Recurrent neural networks for minimum infinity-norm kinematic control of redundant manipulators
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Recurrent neural networks for minimum infinity-norm kinematic control of redundant manipulators

机译:递归神经网络用于冗余机械手的最小无穷范数运动学控制

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摘要

This paper presents two neural network approaches to minimum infinity-norm solution of the velocity inverse kinematics problem for redundant robots. Three recurrent neural networks are applied for determining a joint velocity vector with its maximum absolute value component being minimal among all possible joint velocity vectors corresponding to the desired end-effector velocity. In each proposed neural network approach, two cooperating recurrent neural networks are used. The first approach employs two Tank-Hopfield networks for linear programming. The second approach employs two two-layer recurrent neural networks for quadratic programming and linear programming, respectively. Both the minimal 2-norm and infinity-norm of joint velocity vector can be obtained from the output of the recurrent neural networks. Simulation results demonstrate that the proposed approaches are effective with the second approach being better in terms of accuracy and optimality.
机译:本文提出了两种神经网络方法来解决冗余机器人速度逆运动学问题的最小无穷范数解。应用三个循环神经网络来确定关节速度矢量,其中最大绝对值分量在与所需的末端执行器速度相对应的所有可能的关节速度矢量中最小。在每种提出的神经网络方法中,都使用两个协作的递归神经网络。第一种方法采用两个Tank-Hopfield网络进行线性编程。第二种方法分别采用两个两层递归神经网络进行二次编程和线性编程。联合速度矢量的最小2-范数和无穷范数都可以从递归神经网络的输出中获得。仿真结果表明,所提出的方法是有效的,而第二种方法在准确性和最优性方面更好。

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