A real-time learning control approach for nonlinear continuous-time systemusing recurrent neural networks

Citation
Tws. Chow et al., A real-time learning control approach for nonlinear continuous-time systemusing recurrent neural networks, IEEE IND E, 47(2), 2000, pp. 478-486
Citations number
9
Categorie Soggetti
Eletrical & Eletronics Engineeing
Journal title
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
ISSN journal
02780046 → ACNP
Volume
47
Issue
2
Year of publication
2000
Pages
478 - 486
Database
ISI
SICI code
0278-0046(200004)47:2<478:ARLCAF>2.0.ZU;2-Z
Abstract
In this paper, a real-time iterative learning control (ILC) approach for a nonlinear continuous-time system using recurrent neural networks (RNN's) wi th time-varying weights is presented. Two RNN's are utilized in the ILC sys tem. One is used to approximate the nonlinear system and another is used to mimic the desired system response. The ILC rule is obtained by combining t he two RNN's to form a neural network control system. Also, a kind of itera tive RNN's training algorithm is developed based on the two-dimensional (2- D) system theory, An RNN using the proposed 2-D training algorithm is able to approximate any trajectory to a very high degree of accuracy Simulation results show that the proposed ILC approach is very efficient. The newly de veloped 2-D RNN's training algorithms provides a ne iv dimension to the app lication of RNN's in a nonlinear continuous-time system.