Title of article :
Adaptive RBF network control for robot manipulators
Author/Authors :
Fateh، M. M نويسنده Department of Electrical Engineering and Robotics, University of Shahrood, Iran Fateh, M. M , Ahmadi، S. M نويسنده Department of Mechanical Engineering, University of Shahrood, Shahrood, Iran Ahmadi, S.M , Khorashadizadeh، S نويسنده Department of Electrical Engineering, University of Shahrood, Shahrood, Iran Khorashadizadeh, S
Issue Information :
دوفصلنامه با شماره پیاپی 0 سال 2014
Abstract :
The uncertainty estimation and compensation are challenging problems for the robust control of robot
manipulators which are complex systems. This paper presents a novel decentralized model-free robust
controller for electrically driven robot manipulators. As a novelty, the proposed controller employs a simple
Gaussian Radial-Basis-Function network (RBF network) as an uncertainty estimator. The proposed network
includes a hidden layer with one node, two inputs and a single output. In comparison with other model-free
estimators such as multilayer neural networks and fuzzy systems, the proposed estimator is simpler, less
computational and more effective. The weights of the RBF network are tuned online using an adaptation law
derived by stability analysis. Despite the majority of previous control approaches which are the torque-based
control, the proposed control design is the voltage-based control. Simulations and comparisons with a robust
neural network control approach show the efficiency of the proposed control approach applied on the
articulated robot manipulator driven by permanent magnet DC motors.
Journal title :
Journal of Artificial Intelligence and Data Mining
Journal title :
Journal of Artificial Intelligence and Data Mining