Title :
A neural network-based classification of environment dynamics models for compliant control of manipulation robots
Author :
D. Katic;M. Vukobratovic
Author_Institution :
Mihajlo Pupin Inst., Belgrade, Serbia
Abstract :
In this paper, a new method for selecting the appropriate compliance control parameters for robot machining tasks based on connectionist classification of unknown dynamic environments, is proposed. The method classifies the type of environment by using multilayer perceptron, and then, determines the control parameters for compliance control using the estimated characteristics. An important feature is that the process of pattern association can work in an on-line mode as a part of selected compliance control algorithm. Convergence process is improved by using evolutionary approach (genetic algorithms) in order to choose the optimal topology of the proposed multilayer perceptron. Compliant motion simulation experiments with robotic arm placed in contact with dynamic environment, described by the stiffness model and by the general impedance model, have been performed in order to verify the proposed approach.
Keywords :
"Neural networks","Service robots","Manipulator dynamics","Robot control","Uncertainty","Stability","Multilayer perceptrons","Impedance","Linear feedback control systems","Torque control"
Journal_Title :
IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics)
DOI :
10.1109/3477.658578