Abstruct-lmpedance control is one of the most effective control methods for the manipulators in contact with their environments. The characteristics of force and motion control, however, is determined by a desired impedance parameter of a manipulator's end-effector that should be carefully designed according to a given task and an environment. The present paper proposes a new method to regulate the impedance parameter of the end-effector through learning of neural networks. Three kinds of the feed-forward networks are prepared corresponding to position, velocity and force control loops of the end-effector before learning. First, the neural networks for position and velocity control are trained using iterative learning of the manipulato...
Learning variable impedance control is a powerful method to improve the performance of force control...
This paper presents a neural networks based admittance control scheme for robotic manipulators when ...
Modern robotic systems are increasingly expected to interact with unstructured and unpredictable env...
lmpedance control is one of the most effective controlmethods for the manipulators in contact with t...
Impedance control is one of the most effective control methods for interaction between a manipulator...
Abstract — Impedance control is one of the most effective methods for controlling the interaction be...
Abstract—Impedance control is one of the most effective methods for controlling the interaction betw...
Impedance control is one of the most effective con-trol methods for interaction between a robotic ma...
In this paper, neural network force control is present-ed. Under the framework of impedance control,...
Robots are becoming standard collaborators not only in factories, hospitals, and offices, but also i...
Abstract. In recent years a lot of versatile robots have been developed to work in environments with...
The robot manipulators must have capability of controlling mechanical interaction with objects which...
This article presents a novel biomimetic force and impedance adaption framework based on the broad l...
Dynamic movement primitives (DMPs) allow complex position trajectories to be efficiently demonstrate...
Learning variable impedance control is a powerful method to improve the performance of force control...
This paper presents a neural networks based admittance control scheme for robotic manipulators when ...
Modern robotic systems are increasingly expected to interact with unstructured and unpredictable env...
lmpedance control is one of the most effective controlmethods for the manipulators in contact with t...
Impedance control is one of the most effective control methods for interaction between a manipulator...
Abstract — Impedance control is one of the most effective methods for controlling the interaction be...
Abstract—Impedance control is one of the most effective methods for controlling the interaction betw...
Impedance control is one of the most effective con-trol methods for interaction between a robotic ma...
In this paper, neural network force control is present-ed. Under the framework of impedance control,...
Robots are becoming standard collaborators not only in factories, hospitals, and offices, but also i...
Abstract. In recent years a lot of versatile robots have been developed to work in environments with...
The robot manipulators must have capability of controlling mechanical interaction with objects which...
This article presents a novel biomimetic force and impedance adaption framework based on the broad l...
Dynamic movement primitives (DMPs) allow complex position trajectories to be efficiently demonstrate...
Learning variable impedance control is a powerful method to improve the performance of force control...
This paper presents a neural networks based admittance control scheme for robotic manipulators when ...
Modern robotic systems are increasingly expected to interact with unstructured and unpredictable env...