This paper develops a novel neural network (NN) based near optimal boundary control scheme for distributed parameter systems (DPS) governed by semilinear parabolic partial differential equations (PDE) in the presence of control constraints and unknown system dynamics. First, finite difference method (FDM) is utilized to develop a reduced order system which represents the discretized dynamics of PDE system. Subsequently, a near optimal control scheme is proposed for the discretized system by using NN based approximate dynamic programming(ADP). To relax the requirement of system dynamics, a NN identifier is utilized. Moreover, a second NN is proposed to estimate a non-quadratic value function online. Subsequently, by using the identifier and ...
A computational tool is presented in this paper for the optimal control synthesis of a class of nonl...
<p>This thesis presents a method for solving partial differential equations (PDEs) using articial ne...
technique is presented to solve Partial Differential Equations (PDEs). The technique is based on con...
In this paper, a novel neural network (NN) adaptive dynamic programming (ADP) control scheme for dis...
This paper develops an adaptive dynamic programming (ADP) based near optimal boundary control of dis...
This paper develops a near optimal boundary control method for distributed parameter systems governe...
This paper develops a neuro-dynamic programming (NDP) based near optimal boundary control of distrib...
In this paper, neurodynamic programming-based output feedback boundary control of distributed parame...
An approximate dynamic programming (ADP) based near optimal boundary control of distributed paramete...
In this paper, an adaptive dynamic programming-based near optimal boundary controller is developed f...
A neural network based optimal control synthesis approach is presented for systems modeled by partia...
In this paper, we propose an artificial neural network model (ANN) to solve a partial differential e...
This letter investigates the fault detection (FD) problem of a class of uncertain distributed parame...
In this dissertation, novel adaptive/approximate dynamic programming (ADP) based state and output fe...
In this work, we develop a machine-learning-based predictive control design for nonlinearparabolic p...
A computational tool is presented in this paper for the optimal control synthesis of a class of nonl...
<p>This thesis presents a method for solving partial differential equations (PDEs) using articial ne...
technique is presented to solve Partial Differential Equations (PDEs). The technique is based on con...
In this paper, a novel neural network (NN) adaptive dynamic programming (ADP) control scheme for dis...
This paper develops an adaptive dynamic programming (ADP) based near optimal boundary control of dis...
This paper develops a near optimal boundary control method for distributed parameter systems governe...
This paper develops a neuro-dynamic programming (NDP) based near optimal boundary control of distrib...
In this paper, neurodynamic programming-based output feedback boundary control of distributed parame...
An approximate dynamic programming (ADP) based near optimal boundary control of distributed paramete...
In this paper, an adaptive dynamic programming-based near optimal boundary controller is developed f...
A neural network based optimal control synthesis approach is presented for systems modeled by partia...
In this paper, we propose an artificial neural network model (ANN) to solve a partial differential e...
This letter investigates the fault detection (FD) problem of a class of uncertain distributed parame...
In this dissertation, novel adaptive/approximate dynamic programming (ADP) based state and output fe...
In this work, we develop a machine-learning-based predictive control design for nonlinearparabolic p...
A computational tool is presented in this paper for the optimal control synthesis of a class of nonl...
<p>This thesis presents a method for solving partial differential equations (PDEs) using articial ne...
technique is presented to solve Partial Differential Equations (PDEs). The technique is based on con...