This paper presents an online policy iteration (PI) algorithm to learn the continuous-time optimal control solution for unknown constrained-input systems. The proposed PI algorithm is implemented on an actor-critic structure where two neural networks (NNs) are tuned online and simultaneously to generate the optimal bounded control policy. The requirement of complete knowledge of the system dynamics is obviated by employing a novel NN identifier in conjunction with the actor and critic NNs. It is shown how the identifier weights estimation error affects the convergence of the critic NN. A novel learning rule is developed to guarantee that the identifier weights converge to small neighborhoods of their ideal values exponentially fast. To prov...
In this paper, an integral reinforcement learning (IRL) algorithm on an actor-critic structure is de...
The design of robust controllers for continuous-time (CT) non-linear systems with completely unknown...
In this paper, a multi-layer neural network (MNN) based online optimal adaptive regulation of a clas...
This paper is an effort towards developing an online learning algorithm to find the optimal control ...
A policy-iteration-based algorithm is presented in this article for optimal control of unknown conti...
Abstract — In this paper we introduce an online algorithm that uses integral reinforcement knowledge...
Event-triggered control has been an effective tool in dealing with problems with finite communicatio...
IEEE Catalog Number: CFP15SIP-USBA new policy-iteration algorithm based on neural networks (NNs) is ...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
Online adaptive optimal control methods based on reinforcement learning algorithms typically need to...
Abstract — This paper is concerned with a new discrete-time policy iteration adaptive dynamic progra...
In this article, an actor-critic neural network (NN)-based online optimal adaptive regulation of a c...
Published online: 11 Aug 2019.This study proposes a modified value-function-approximation (MVFA) and ...
This paper develops an optimal control scheme for continuous-time unknown nonlinear systems using th...
Abstract — In this paper, using a neural-network-based online learning optimal control approach, a n...
In this paper, an integral reinforcement learning (IRL) algorithm on an actor-critic structure is de...
The design of robust controllers for continuous-time (CT) non-linear systems with completely unknown...
In this paper, a multi-layer neural network (MNN) based online optimal adaptive regulation of a clas...
This paper is an effort towards developing an online learning algorithm to find the optimal control ...
A policy-iteration-based algorithm is presented in this article for optimal control of unknown conti...
Abstract — In this paper we introduce an online algorithm that uses integral reinforcement knowledge...
Event-triggered control has been an effective tool in dealing with problems with finite communicatio...
IEEE Catalog Number: CFP15SIP-USBA new policy-iteration algorithm based on neural networks (NNs) is ...
The design of optimal control laws for nonlinear systems is tackled without knowledge of the underly...
Online adaptive optimal control methods based on reinforcement learning algorithms typically need to...
Abstract — This paper is concerned with a new discrete-time policy iteration adaptive dynamic progra...
In this article, an actor-critic neural network (NN)-based online optimal adaptive regulation of a c...
Published online: 11 Aug 2019.This study proposes a modified value-function-approximation (MVFA) and ...
This paper develops an optimal control scheme for continuous-time unknown nonlinear systems using th...
Abstract — In this paper, using a neural-network-based online learning optimal control approach, a n...
In this paper, an integral reinforcement learning (IRL) algorithm on an actor-critic structure is de...
The design of robust controllers for continuous-time (CT) non-linear systems with completely unknown...
In this paper, a multi-layer neural network (MNN) based online optimal adaptive regulation of a clas...