The robust periodic trajectory tracking problem is tackled by employing acceleration feedback in a hybrid learning-adaptive controller for n-rigid link robotic manipulators subject to parameter uncertainties and unknown periodic dynamics with a known period. Learning and adaptive feedforward terms are designed to compensate for periodic and aperiodic disturbances. The acceleration feedback is incorporated into both learning and adaptive controllers to provide higher stiffness to the system against unknown periodic disturbances and robustness to parameter uncertainties. A cascaded high gain observer is used to obtain reliable position, velocity and acceleration signals from noisy encoder measurements. A closed-loop stability proof is provi...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
This paper addresses the problem of designing a global, output error feedback based, adaptive learni...
This paper addresses the problem of designing a global adaptive learning control for robotic manipul...
The robust periodic trajectory tracking problem is tackled by employing acceleration feedback in a h...
A new acceleration based learning control approach is developed to tackle the robust periodic trajec...
High precision stabilization is one of the fundamental problems in the control of robotic manipulato...
This paper describes a practical approach to design and develop a hybrid learning with acceleration ...
This chapter proposes the development of a hybrid iterative learning control scheme with acceleratio...
This paper aims at the trajectory tracking problem of robot manipulators performing repetitive tasks...
In this paper, a learning controller for robot manipulators is developed. The controller is proven t...
We address the problem of robust tracking control using a PD-plus-feedforward controller and an inte...
A new class of non-linear learning control laws is introduced for a robot manipulator to track a giv...
A new iterative learning control scheme is applied to the trajectory tracking of robot manipulators....
In this paper, a learning-based feedforward term is developed to solve a general control problem in ...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
This paper addresses the problem of designing a global, output error feedback based, adaptive learni...
This paper addresses the problem of designing a global adaptive learning control for robotic manipul...
The robust periodic trajectory tracking problem is tackled by employing acceleration feedback in a h...
A new acceleration based learning control approach is developed to tackle the robust periodic trajec...
High precision stabilization is one of the fundamental problems in the control of robotic manipulato...
This paper describes a practical approach to design and develop a hybrid learning with acceleration ...
This chapter proposes the development of a hybrid iterative learning control scheme with acceleratio...
This paper aims at the trajectory tracking problem of robot manipulators performing repetitive tasks...
In this paper, a learning controller for robot manipulators is developed. The controller is proven t...
We address the problem of robust tracking control using a PD-plus-feedforward controller and an inte...
A new class of non-linear learning control laws is introduced for a robot manipulator to track a giv...
A new iterative learning control scheme is applied to the trajectory tracking of robot manipulators....
In this paper, a learning-based feedforward term is developed to solve a general control problem in ...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
This paper addresses the problem of designing a global, output error feedback based, adaptive learni...
This paper addresses the problem of designing a global adaptive learning control for robotic manipul...