Wang J, Hu Q, Jiang D
Department of Mechanical and Automation Engineering, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong.
IEEE Trans Neural Netw. 1999;10(5):1123-32. doi: 10.1109/72.788651.
A recurrent neural network, called the Lagrangian network, is presented for the kinematic control of redundant robot manipulators. The optimal redundancy resolution is determined by the Lagrangian network through real-time solution to the inverse kinematics problem formulated as a quadratic optimization problem. While the signal for a desired velocity of the end-effector is fed into the inputs of the Lagrangian network, it generates the joint velocity vector of the manipulator in its outputs along with the associated Lagrange multipliers. The proposed Lagrangian network is shown to be capable of asymptotic tracking for the motion control of kinematically redundant manipulators.
提出了一种用于冗余机器人操纵器运动控制的递归神经网络,称为拉格朗日网络。拉格朗日网络通过实时求解表述为二次优化问题的逆运动学问题来确定最优冗余分解。当将期望的末端执行器速度信号输入到拉格朗日网络的输入端时,它会在其输出端生成操纵器的关节速度矢量以及相关的拉格朗日乘子。所提出的拉格朗日网络被证明能够对运动学冗余操纵器的运动控制进行渐近跟踪。