Autores
Aguilar Cruz Karen Alicia
Medel Juárez José de Jesús
Urbieta Parrazales Romeo
Título Equivalent Neural Network Optimal Coefficients using Forgetting Factor with Sliding Modes
Tipo Revista
Sub-tipo JCR
Descripción Computational Intelligence and Neuroscience
Resumen The Artificial Neural Network (ANN) concept is familiar in methods whose task is, for example, the identification or approximation of the outputs of complex systems difficult to model. In general, the objective is to determine online the adequate parameters to reach a better point-to-point convergence rate, so that this paper presents the parameter estimation for an equivalent ANN(EANN), obtaining a recursive identification for a stochastic system, firstly, with constant parameters and, secondly, with nonstationary output system conditions. Therefore, in the last estimation, the parameters also have stochastic properties, making the traditional approximation methods not adequate due to their losing of convergence rate. In order to give a solution to this problematic, we propose a nonconstant exponential forgetting factor (NCEFF) with sliding modes, obtaining in almost all points an exponential convergence rate decreasing. Theoretical results of both identification stages are performed using MATLAB (R) and compared, observing improvement when the new proposal for nonstationary output conditions is applied.
Observaciones DOI 10.1155/2016/4642052
Lugar London
País Reino Unido
No. de páginas Article number 4642052
Vol. / Cap. v. 2016
Inicio 2016-11-20
Fin
ISBN/ISSN