A Primal-Dual Neural Network for Joint Torque Optimization of Redundant Manipulators Subject to Torque Limit Constraints
نویسندگان
چکیده
In this paper, a primal-dual neural network is proposed for the joint torque optimization of redundant manipulators subject to torque limit constraints. The neural network generates the minimum driving joint torques which never exceed the hardware limits and keep the end-effector to track a desired trajectory. The consideration of physical limits prevents the manipulator from torque saturation and hence ensuring a good tracking accuracy. The neural network is proven to be globally convergent to the optimal solution. The simulation results show that the neural network is capable of effectively computing the optimal redundancy resolution.
منابع مشابه
Two recurrent neural networks for local joint torque optimization of kinematically redundant manipulators
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 n...
متن کاملA Dual Neural Network for Bi-criteria Torque Optimization of Redundant Robot Manipulators
A dual neural network is presented for the bi-criteria joint torque optimization of kinematically redundant manipulators, which balances between the total energy consumption and the torque distribution among the joints. Joint torque limits are also incorporated simultaneously into the proposed optimization scheme. The dual neural network has a simple structure with only one layer of neurons and...
متن کاملRedundant Manipulator Infinity-Norm Joint Torque Optimization with Actuator Constraints Using a Recurrent Neural Network
In this paper, a neural network based on the projection and contraction method is employed to compute the minimum in nity-norm joint torques of redundant manipulators, which explicitly takes into account the joint torque limits. While the desired accelerations of the end-e ector for a speci ed task are fed into the network, a driving joint torque vector which has the maximum component in magnit...
متن کاملA dual neural network for constrained joint torque optimization of kinematically redundant manipulators
A dual neural network is presented for the real-time joint torque optimization of kinematically redundant manipulators, which corresponds to global kinetic energy minimization of robot mechanisms. Compared to other computational strategies on inverse kinematics, the dual network is developed at the acceleration level to resolve redundancy of limited-joint-range manipulators. The dual network ha...
متن کاملInfinity-norm acceleration minimization of robotic redundant manipulators using the LVI-based primal–dual neural network
Kinematically redundant manipulators admit an infinite number of inverse kinematic solutions and hence the optimization of different performance measures corresponding to various task requirements must be considered. Joint accelerations of these mechanisms are usually computed by optimizing various criteria defined using the two-norm of acceleration vectors in the joint space. However, in formu...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 1999