Dynamic systems control and identification using VSC-based learning algorithms for perceptron networks

  • Francklin Rivas Echeverría Universidad de Los Andes-Venezuela
  • Eliezer Colina Morles Universidad de Los Andes-Venezuela

Abstract

In this paper a set of Variable Structure Control (VSC)-based on-line learning algorithms for continuous time two layer and three layer perceptron networks with non-linear and linear activation functions are presented. The proposed algorithms result in a temporal learning capabilities of a neural network with dynamically adjusted weights, and zero convergence of the learning error in a finite time. These learning algorithms are used with identification and control schemes for linear and non linear dynamic systems.

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How to Cite
Rivas Echeverría, F. and Colina Morles, E. (1) “Dynamic systems control and identification using VSC-based learning algorithms for perceptron networks”, Revista Técnica de la Facultad de Ingeniería. Universidad del Zulia, 23(1). Available at: https://mail.produccioncientificaluz.org/index.php/tecnica/article/view/5671 (Accessed: 26December2024).
Section
Review paper