Robot manipulators have become increasingly important in the field of flexible automation. So modeling and control of robots in automation will be very important. But Robots, as complex systems, must detect and isolate faults with high probabilities while doing their tasks with humans or other robots with high precision and they should tolerate the fault with the controller.This paper introduces a Neuro-Fuzzy Controller (NFC) for position control of robot arm. A five layer neural network is used to adjust input and output parameters of membership function in a fuzzy logic controller. The hybrid learning algorithm is used for training this network. In this algorithm, the least square estimation method is applied for the tuning of linear outp...
In this paper, a multivariable control of a two-link robot is performed by fuzzy-sliding mode contro...
This paper presents a robust Adaptive Fuzzy Neural Controller (AFNC) suitable for trajectory control...
The goal of this work is to compare fuzzy, neural network and neuro-fuzzy approaches to the control ...
Robot arm control is a dicult problem. Fuzzy controllers have been applied succesfully to this contr...
5th International Conference on Mechatronics and Control Engineering, ICMCE 2016 -- 14 December 2016...
The work reported in this thesis aims to design and develop a new neuro-fuzzy control system for rob...
In this study, trajectory control of robotic arm which has two degrees of freedom (DOF) is conducted...
A Neural integrated Fuzzy conTroller (NiF-T) which integrates the fuzzy logic representation of huma...
Includes bibliographical references (pages [109]-110).This thesis provides an original design idea f...
In this paper, to solve the problem of control of a robotic manipulator’s movement with holonomical ...
Robot arm control is a difficult problem. Fuzzy controllers have been applied succesfully to this co...
This paper presents a stable neuro-fuzzy (NF) adaptive control approach for the trajectory tracking ...
The strong dependence of the computed torque control of dynamic model of the robot manipulator makes...
The dynamics of robot manipulators are highly nonlinear with strong couplings existing between joint...
Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accura...
In this paper, a multivariable control of a two-link robot is performed by fuzzy-sliding mode contro...
This paper presents a robust Adaptive Fuzzy Neural Controller (AFNC) suitable for trajectory control...
The goal of this work is to compare fuzzy, neural network and neuro-fuzzy approaches to the control ...
Robot arm control is a dicult problem. Fuzzy controllers have been applied succesfully to this contr...
5th International Conference on Mechatronics and Control Engineering, ICMCE 2016 -- 14 December 2016...
The work reported in this thesis aims to design and develop a new neuro-fuzzy control system for rob...
In this study, trajectory control of robotic arm which has two degrees of freedom (DOF) is conducted...
A Neural integrated Fuzzy conTroller (NiF-T) which integrates the fuzzy logic representation of huma...
Includes bibliographical references (pages [109]-110).This thesis provides an original design idea f...
In this paper, to solve the problem of control of a robotic manipulator’s movement with holonomical ...
Robot arm control is a difficult problem. Fuzzy controllers have been applied succesfully to this co...
This paper presents a stable neuro-fuzzy (NF) adaptive control approach for the trajectory tracking ...
The strong dependence of the computed torque control of dynamic model of the robot manipulator makes...
The dynamics of robot manipulators are highly nonlinear with strong couplings existing between joint...
Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accura...
In this paper, a multivariable control of a two-link robot is performed by fuzzy-sliding mode contro...
This paper presents a robust Adaptive Fuzzy Neural Controller (AFNC) suitable for trajectory control...
The goal of this work is to compare fuzzy, neural network and neuro-fuzzy approaches to the control ...