[[abstract]]This paper proposes an adaptive self-organizing Hermite-polynomial-based neural control (ASHNC) system which is composed of a neural controller and a supervisor compensator. The neural controller uses a self-organizing Hermite-polynomial-based neural network (SHNN) to approximate an ideal feedback controller. For the SHNN, the developed self-organizing approach is clearly and easily used for real-time systems and the parameter learning ability is effective with high convergence precision and fast convergence time. The supervisor compensator is designed to eliminate the approximation error between the neural controller and ideal feedback controller without chattering phenomena. Moreover, a proportional–integral (PI) type adaptati...
Signal processing is an important topic in technological research today. In the areas of nonlinear d...
[[abstract]]Purpose – A chaotic system is a nonlinear deterministic system that displays complex, no...
This paper investigates the stability and tracking performance of discrete-time chaotic systems in t...
[[abstract]]A TSK-type Hermite neural network (THNN) is studied in this paper. Since the output weig...
[[abstract]]An adaptive Hermite-polynomial-based CMAC neural control (AHCNC) system which is compose...
[[abstract]]This study proposes an indirect adaptive self-organizing RBF neural control (IASRNC) sys...
The broad-learning systems (BLS) with advance control theories have been studied, but found to have ...
[[abstract]]This paper presents an adaptive PI Hermite neural control (APIHNC) system for multi-inpu...
[[abstract]]Though the control performances of the fuzzy neural network controller are acceptable in...
This paper proposes a self-organizing control system for uncertain nonlinear systems. The proposed n...
[[abstract]]This study presents a self-organizing functional-linked neuro-fuzzy network (SFNN) for a...
This paper proposes a self-organizing control system for uncertain nonlinear systems. The proposed n...
An endeavor is made in this paper to describe a self-regulating constructive multi-model neural netw...
[[abstract]]This paper proposes an Elman-based self-organizing RBF neural network (ESRNN) which is a...
[[abstract]]In this paper, a real-time approximator using a TSK-type self-evolving neural network (T...
Signal processing is an important topic in technological research today. In the areas of nonlinear d...
[[abstract]]Purpose – A chaotic system is a nonlinear deterministic system that displays complex, no...
This paper investigates the stability and tracking performance of discrete-time chaotic systems in t...
[[abstract]]A TSK-type Hermite neural network (THNN) is studied in this paper. Since the output weig...
[[abstract]]An adaptive Hermite-polynomial-based CMAC neural control (AHCNC) system which is compose...
[[abstract]]This study proposes an indirect adaptive self-organizing RBF neural control (IASRNC) sys...
The broad-learning systems (BLS) with advance control theories have been studied, but found to have ...
[[abstract]]This paper presents an adaptive PI Hermite neural control (APIHNC) system for multi-inpu...
[[abstract]]Though the control performances of the fuzzy neural network controller are acceptable in...
This paper proposes a self-organizing control system for uncertain nonlinear systems. The proposed n...
[[abstract]]This study presents a self-organizing functional-linked neuro-fuzzy network (SFNN) for a...
This paper proposes a self-organizing control system for uncertain nonlinear systems. The proposed n...
An endeavor is made in this paper to describe a self-regulating constructive multi-model neural netw...
[[abstract]]This paper proposes an Elman-based self-organizing RBF neural network (ESRNN) which is a...
[[abstract]]In this paper, a real-time approximator using a TSK-type self-evolving neural network (T...
Signal processing is an important topic in technological research today. In the areas of nonlinear d...
[[abstract]]Purpose – A chaotic system is a nonlinear deterministic system that displays complex, no...
This paper investigates the stability and tracking performance of discrete-time chaotic systems in t...