Neural-Network-Based Optimal Control for a Class of Unknown Discrete-Time Nonlinear Systems Using Globalized Dual Heuristic Programming | IEEE Journals & Magazine | IEEE Xplore

Neural-Network-Based Optimal Control for a Class of Unknown Discrete-Time Nonlinear Systems Using Globalized Dual Heuristic Programming


Abstract:

In this paper, a neuro-optimal control scheme for a class of unknown discrete-time nonlinear systems with discount factor in the cost function is developed. The iterative...Show More

Abstract:

In this paper, a neuro-optimal control scheme for a class of unknown discrete-time nonlinear systems with discount factor in the cost function is developed. The iterative adaptive dynamic programming algorithm using globalized dual heuristic programming technique is introduced to obtain the optimal controller with convergence analysis in terms of cost function and control law. In order to carry out the iterative algorithm, a neural network is constructed first to identify the unknown controlled system. Then, based on the learned system model, two other neural networks are employed as parametric structures to facilitate the implementation of the iterative algorithm, which aims at approximating at each iteration the cost function and its derivatives and the control law, respectively. Finally, a simulation example is provided to verify the effectiveness of the proposed optimal control approach.
Page(s): 628 - 634
Date of Publication: 22 May 2012

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I. Introduction

As is known, nonlinear optimal control is a difficult and challenging area since it often requires solving the Hamilton–Jacobi–Bellman (HJB) equation instead of the Riccati equation. For example, the discrete-time HJB (DTHJB) equation is more difficult to solve than the Riccati equation because it involves dealing with nonlinear partial difference equations.

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