Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accurate system models and the practical difficulty of defining uncertain system bounds. To facilitate such challenges, this paper proposes a control system consisting of a novel type of fuzzy neural network and a robust compensator controller. The new fuzzy neural network is implemented by integrating a number of key components embedded in a Type-2 fuzzy cerebellar model articulation controller (CMAC) and a brain emotional learning controller (BELC) network, thereby mimicking an ideal sliding mode controller. The system inputs are fed into the neural network through a Type-2 fuzzy inference system (T2FIS), with the results subsequently piped into ...
[[abstract]]This paper proposes an intelligent complementary sliding-mode control (ICSMC) system whi...
The goal of this work is to compare fuzzy, neural network and neuro-fuzzy approaches to the control ...
This paper studies the H∞ tracking control for uncertain nonlinear multivariable systems. We propose...
Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accura...
The trajectory tracking ability of mobile robots suffers from uncertain disturbances. This paper pro...
Includes bibliographical references (pages [109]-110).This thesis provides an original design idea f...
The brain emotional learning (BEL) system was inspired by the biological amygdala-orbitofrontal mode...
Parallel robotic systems have shown their advantages over the traditional serial robots such as high...
This paper develops a fuzzy adaptive control system consisting of a new type of fuzzy neural network...
Industrial arms should be able to perform their duties in environments where unpredictable condition...
Vision-based mobile robots often suffer from the difficulties of high nonlinear dynamics and precise...
Robot manipulators have become increasingly important in the field of flexible automation. So modeli...
Industrial arms should be able to perform their duties in environments where unpredictable condition...
A novel interval type-2 intuition fuzzy brain emotional learning network model (IT2IFBELC) which dep...
This paper presents a robust adaptive neural-fuzzy network control (RANFNC) system for an n-link rob...
[[abstract]]This paper proposes an intelligent complementary sliding-mode control (ICSMC) system whi...
The goal of this work is to compare fuzzy, neural network and neuro-fuzzy approaches to the control ...
This paper studies the H∞ tracking control for uncertain nonlinear multivariable systems. We propose...
Dynamic control, including robotic control, faces both the theoretical challenge of obtaining accura...
The trajectory tracking ability of mobile robots suffers from uncertain disturbances. This paper pro...
Includes bibliographical references (pages [109]-110).This thesis provides an original design idea f...
The brain emotional learning (BEL) system was inspired by the biological amygdala-orbitofrontal mode...
Parallel robotic systems have shown their advantages over the traditional serial robots such as high...
This paper develops a fuzzy adaptive control system consisting of a new type of fuzzy neural network...
Industrial arms should be able to perform their duties in environments where unpredictable condition...
Vision-based mobile robots often suffer from the difficulties of high nonlinear dynamics and precise...
Robot manipulators have become increasingly important in the field of flexible automation. So modeli...
Industrial arms should be able to perform their duties in environments where unpredictable condition...
A novel interval type-2 intuition fuzzy brain emotional learning network model (IT2IFBELC) which dep...
This paper presents a robust adaptive neural-fuzzy network control (RANFNC) system for an n-link rob...
[[abstract]]This paper proposes an intelligent complementary sliding-mode control (ICSMC) system whi...
The goal of this work is to compare fuzzy, neural network and neuro-fuzzy approaches to the control ...
This paper studies the H∞ tracking control for uncertain nonlinear multivariable systems. We propose...