This article concentrates on adaptive tracking control of strict-feedback uncertain nonlinear systems with an event-based learning scheme. A novel neural network (NN) learning law is proposed to design the adaptive control scheme. The NN weights information driven by the prediction-error-based control process is intermittently transmitted in the event-triggered context to the NN learning law mainly for signal tracking. The online stored sampled data of NN driven by the tracking error are utilized in the event context to update the learning law. With the adaptive control and NN learning law updated via the event-triggered communication, the improvements of NN learning capability, tracking performance, and system computing resource saving are...
In this paper, six new event-triggered neuro-adaptive control (ETNAC) schemes are presented for unce...
This paper investigates the problem of output feedback neural network (NN) learning tracking control...
This paper presents a novel approximation-based event-triggered control of multi-input multi-output ...
This paper addresses the problem of composite tracking control and adaptive learning for discrete-ti...
This paper presents a novel adaptive neural network (NN) control of single-input and single-output u...
This paper presents a novel adaptive neural network (NN) control of single-input and single-output u...
This paper presents a novel event-based adaptive control of uncertain nonlinear continuous-time syst...
This paper addresses the problem of composite adaptive learning and tracking control for discrete-ti...
In this paper, a novel event-triggered implementation of a tracking controller for an uncertain stri...
We present a novel approximation-based event-triggered control of multiinput-multioutput uncertain n...
In this paper, we construct an event-driven adaptive robust control approach for continuous-time unc...
The optimal event-triggered control of nonlinear continuous-time systems by using input and output d...
In this paper, Neural networks (NNs) and adaptive robust control (ARC) design philosophy are integra...
In this paper, an event-triggered adaptive controller, consisting of a basic adaptive neural network...
In this paper a novel event triggered neural network (NN) based adaptive controller is presented for...
In this paper, six new event-triggered neuro-adaptive control (ETNAC) schemes are presented for unce...
This paper investigates the problem of output feedback neural network (NN) learning tracking control...
This paper presents a novel approximation-based event-triggered control of multi-input multi-output ...
This paper addresses the problem of composite tracking control and adaptive learning for discrete-ti...
This paper presents a novel adaptive neural network (NN) control of single-input and single-output u...
This paper presents a novel adaptive neural network (NN) control of single-input and single-output u...
This paper presents a novel event-based adaptive control of uncertain nonlinear continuous-time syst...
This paper addresses the problem of composite adaptive learning and tracking control for discrete-ti...
In this paper, a novel event-triggered implementation of a tracking controller for an uncertain stri...
We present a novel approximation-based event-triggered control of multiinput-multioutput uncertain n...
In this paper, we construct an event-driven adaptive robust control approach for continuous-time unc...
The optimal event-triggered control of nonlinear continuous-time systems by using input and output d...
In this paper, Neural networks (NNs) and adaptive robust control (ARC) design philosophy are integra...
In this paper, an event-triggered adaptive controller, consisting of a basic adaptive neural network...
In this paper a novel event triggered neural network (NN) based adaptive controller is presented for...
In this paper, six new event-triggered neuro-adaptive control (ETNAC) schemes are presented for unce...
This paper investigates the problem of output feedback neural network (NN) learning tracking control...
This paper presents a novel approximation-based event-triggered control of multi-input multi-output ...