AbstractThis paper presents a new neuro-fuzzy controller for robot manipulators. First, an inductive learning technique is applied to generate the required inverse modeling rules from input/output data recorded in the off-line structure learning phase. Second, a fully differentiable fuzzy neural network is developed to construct the inverse dynamics part of the controller for the online parameter learning phase. Finally, a fuzzy-PID-like incremental controller was employed as Feedback servo controller. The proposed control system was tested using dynamic model of a six-axis industrial robot. The control system showed good results compared to the conventional PID individual joint controller
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
Tracking a desired trajectory in joint space has been favored in several robot manipulators a...
This paper reports the effective control mechanism of the discrete state manipulators (DSMs) with si...
AbstractThis paper presents a new neuro-fuzzy controller for robot manipulators. First, an inductive...
This paper presents a new neuro-fuzzy controller for robot manipulators. First, an inductive learnin...
The work reported in this thesis aims to design and develop a new neuro-fuzzy control system for rob...
This paper presents a new systematic adaptive fuzzy neural network for inverse modelling of robot ma...
This dissertation presents a new approach to the control of nonlinear dynamic systems with applicati...
This paper presents a neurofuzzy controller that is applied to robotic manipulators. Robotic manipul...
The dynamics of robot manipulators are highly nonlinear with strong couplings existing between joint...
This paper presents a stable neuro-fuzzy (NF) adaptive control approach for the trajectory tracking ...
Abstract: Obtaining the joint variables that result in a desired position of the robot end-effector ...
Robot manipulators have been extensively used in complex environments to complete diverse tasks. The...
There is a great diversity of ways to use fuzzy inference in robot control systems, either in the pl...
Tez (Doktora) -- İstanbul Teknik Üniversitesi, Fen Bilimleri Enstitüsü, 2000Thesis (PhD) -- İstanbul...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
Tracking a desired trajectory in joint space has been favored in several robot manipulators a...
This paper reports the effective control mechanism of the discrete state manipulators (DSMs) with si...
AbstractThis paper presents a new neuro-fuzzy controller for robot manipulators. First, an inductive...
This paper presents a new neuro-fuzzy controller for robot manipulators. First, an inductive learnin...
The work reported in this thesis aims to design and develop a new neuro-fuzzy control system for rob...
This paper presents a new systematic adaptive fuzzy neural network for inverse modelling of robot ma...
This dissertation presents a new approach to the control of nonlinear dynamic systems with applicati...
This paper presents a neurofuzzy controller that is applied to robotic manipulators. Robotic manipul...
The dynamics of robot manipulators are highly nonlinear with strong couplings existing between joint...
This paper presents a stable neuro-fuzzy (NF) adaptive control approach for the trajectory tracking ...
Abstract: Obtaining the joint variables that result in a desired position of the robot end-effector ...
Robot manipulators have been extensively used in complex environments to complete diverse tasks. The...
There is a great diversity of ways to use fuzzy inference in robot control systems, either in the pl...
Tez (Doktora) -- İstanbul Teknik Üniversitesi, Fen Bilimleri Enstitüsü, 2000Thesis (PhD) -- İstanbul...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
Tracking a desired trajectory in joint space has been favored in several robot manipulators a...
This paper reports the effective control mechanism of the discrete state manipulators (DSMs) with si...