Title of article :
Optimal Control of Nonlinear Systems using Multi-Layer Perceptron Neural Network and Adaptive Extended Kalman Filter
Author/Authors :
Alaviyan Shahri, Esmat Sadat Department of Electrical Engineering - Islamic Azad University, Gonabad Branch, Khorasan, Iran , Balochian, Saeed Department of Electrical Engineering - Islamic Azad University, Gonabad Branch, Khorasan, Iran
Abstract :
In this paper we present a nonlinear optimal control method based on approximating the solution of Hamilton-Jacobi-
Bellman (HJB) equation. Value function is approximated as the output of Multilayer Perceptron Neural Network
(MLPNN). Parameters of MLPNN are weights and biases of each layer that form structure of the proposed neural
network. These parameters are unknown thus we apply an Adaptive Extended Kalman Filter to approximate unknown
parameters. In so doing, the problem of solution of HJB equation is converted to estimation of MLPNN parameters.
Also, convergence of the estimation error of MLPNN parameters is proven. Two examples have been brought to show
the merits of the proposed approach and to compare the obtained results by applying the multilayer Perceptron and the
Radial Basic Function Neural Network (RBFNN).
Keywords :
Neural Network , RBF , MLP , Kalman Filter , Optimal Control
Journal title :
Astroparticle Physics