عنوان مقاله فارسی: شناسه غیر پارامتری شبکه عصبی تطبیقی با قوانین یادگیری بهنجار
عنوان مقاله لاتین: Adaptive Neural Network Nonparametric Identifier With Normalized Learning Laws
نویسندگان: Isaac Chairez
تعداد صفحات: 11
سال انتشار: 2017
زبان: لاتین
Abstract:
This paper addresses the design of a normalized convergent learning law for neural networks (NNs) with continuous dynamics. The NN is used here to obtain a nonparametric model for uncertain systems described by a set of ordinary differential equations. The source of uncertainties is the presence of some external perturbations and poor knowledge of the nonlinear function describing the system dynamics. A new adaptive algorithm based on normalized algorithms was used to adjust the weights of the NN. The adaptive algorithm was derived by means of a nonstandard logarithmic Lyapunov function (LLF). Two identifiers were designed using two variations of LLFs leading to a normalized learning law for the first identifier and a variable gain normalized learning law. In the case of the second identifier, the inclusion of normalized learning laws yields to reduce the size of the convergence region obtained as solution of the practical stability analysis. On the other hand, the velocity of convergence for the learning laws depends on the norm of errors in inverse form. This fact avoids the peaking transient behavior in the time evolution of weights that accelerates the convergence of identification error. A numerical example demonstrates the improvements achieved by the algorithm introduced in this paper compared with classical schemes with no-normalized continuous learning methods. A comparison of the identification performance achieved by the no-normalized identifier and the ones developed in this paper shows the benefits of the learning law proposed in this paper.
adaptive neural network nonparametric identifier with normalized learning laws_1623485193_49024_4145_1436.zip0.89 MB |