[[abstract]]This paper proposes an Elman-based self-organizing RBF neural network (ESRNN) which is a recurrent multilayered neural network, thus the ESRNN can handle the dynamic response. The ESRNN starts without any hidden neurons and all the hidden neurons are generated and learning online through a simultaneous structure and parameter learning via the Mahalanobis distance approach. Furthermore, an adaptive backstepping Elman-based neural control (ABENC) system which is composed of a computation controller and a switching controller is proposed. In this approach, the ESRNN is used to online approximate the unknown nonlinear system dynamics based on a Lyapunov function, so that system stability can be guaranteed. The switching controller i...
This paper presents an adaptive neural control approach for nonstrict-feedback nonlinear systems in ...
This chapter deals with adaptive tracking for a class of MIMO discrete-time nonlinear systems in pre...
The utilization of conventional modeling strategies in the identification and control of a nonlinear ...
There are many control methods for nonlinear systems, but some of them can not control nonlinear mis...
[[abstract]]This study proposes an indirect adaptive self-organizing RBF neural control (IASRNC) sys...
International Multiconference on Computer Science and Information Technology, IMCSIT '09 -- 12 Octob...
This paper is concerned with adaptive neural control of nonlinear strict-feedback systems with nonli...
This paper deals with adaptive tracking for discrete-time multiple-input-multiple-output (MIMO) nonl...
In this work, we introduce an adaptive neural network controller for a class of nonlinear systems...
In this paper, an adaptive neural sliding mode controller (ANSMC) is proposed as an asymptotically s...
[[abstract]]Many published papers show that a TSK-type fuzzy system provides more powerful represent...
[[abstract]]In this paper, a real-time approximator using a TSK-type self-evolving neural network (T...
An adaptive neural network backstepping control for a class of uncertain nonlinear systems is presen...
This paper deals with adaptive tracking for discrete-time MIMO nonlinear systems in presence of boun...
This research is concerned with the design of radial basis function neural networks to implement a c...
This paper presents an adaptive neural control approach for nonstrict-feedback nonlinear systems in ...
This chapter deals with adaptive tracking for a class of MIMO discrete-time nonlinear systems in pre...
The utilization of conventional modeling strategies in the identification and control of a nonlinear ...
There are many control methods for nonlinear systems, but some of them can not control nonlinear mis...
[[abstract]]This study proposes an indirect adaptive self-organizing RBF neural control (IASRNC) sys...
International Multiconference on Computer Science and Information Technology, IMCSIT '09 -- 12 Octob...
This paper is concerned with adaptive neural control of nonlinear strict-feedback systems with nonli...
This paper deals with adaptive tracking for discrete-time multiple-input-multiple-output (MIMO) nonl...
In this work, we introduce an adaptive neural network controller for a class of nonlinear systems...
In this paper, an adaptive neural sliding mode controller (ANSMC) is proposed as an asymptotically s...
[[abstract]]Many published papers show that a TSK-type fuzzy system provides more powerful represent...
[[abstract]]In this paper, a real-time approximator using a TSK-type self-evolving neural network (T...
An adaptive neural network backstepping control for a class of uncertain nonlinear systems is presen...
This paper deals with adaptive tracking for discrete-time MIMO nonlinear systems in presence of boun...
This research is concerned with the design of radial basis function neural networks to implement a c...
This paper presents an adaptive neural control approach for nonstrict-feedback nonlinear systems in ...
This chapter deals with adaptive tracking for a class of MIMO discrete-time nonlinear systems in pre...
The utilization of conventional modeling strategies in the identification and control of a nonlinear ...