Title :
Adaptive Identifier for Uncertain Complex Nonlinear Systems Based on Continuous Neural Networks
Author :
Alfaro-Ponce, Mariel ; Arguelles Cruz, Amadeo ; Chairez, I.
Author_Institution :
Centro de Investig. en Comput., CIC-IPN, Mexico City, Mexico
Abstract :
This paper presents the design of a complex-valued differential neural network identifier for uncertain nonlinear systems defined in the complex domain. This design includes the construction of an adaptive algorithm to adjust the parameters included in the identifier. The algorithm is obtained based on a special class of controlled Lyapunov functions. The quality of the identification process is characterized using the practical stability framework. Indeed, the region where the identification error converges is derived by the same Lyapunov method. This zone is defined by the power of uncertainties and perturbations affecting the complex-valued uncertain dynamics. Moreover, this convergence zone is reduced to its lowest possible value using ideas related to the so-called ellipsoid methodology. Two simple but informative numerical examples are developed to show how the identifier proposed in this paper can be used to approximate uncertain nonlinear systems valued in the complex domain.
Keywords :
Lyapunov methods; identification; neural nets; nonlinear systems; uncertain systems; Lyapunov method; adaptive algorithm; adaptive identifier; approximate uncertain nonlinear systems; complex domain; complex valued differential neural network identifier; complex-valued uncertain dynamics; continuous neural networks; controlled Lyapunov functions; convergence zone; ellipsoid methodology; identification error; identification process; practical stability framework; uncertain complex nonlinear systems; Artificial neural networks; Biological neural networks; Least squares approximations; Lyapunov methods; Nonlinear systems; Training; Complex-valued neural networks; continuous neural network; controlled Lyapunov function; nonparametric identifier;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2275959