Přístupnostní navigace
E-application
Search Search Close
Publication detail
SCHMIDT, M., PIVOŇKA, P.
Original Title
Advantages of Neural Networks in Adaptive Control
Type
conference paper
Language
English
Original Abstract
This paper discusses the problems adaptive controllers have to face when working with a sampling period that is significantly shorter than the global time constant of the controlled system. A short sampling period is beneficial for disturbance cancellation, but it makes on-line identification of the system difficult in the presence of quantization effect, noise and disturbances. Neural networks present a promising approach to solving the problem. However, there remains a problem with extracting useful information about the system's dynamics in the form of training patterns for commonly used regressive models. Ways to enrich the training patterns with information about the system's behaviour are discussed.
Keywords
Adaptive Control, Neural Networks for Identification
Authors
RIV year
2006
Released
1. 10. 2006
Publisher
Rektor der Hochschule Zittau/Gorlitz
Location
Zittau
ISBN
3-9808089-8-X
Book
13th Zittau Fuzzy Coloquium
Pages from
75
Pages to
80
Pages count
6
BibTex
@inproceedings{BUT19696, author="Michal {Schmidt} and Petr {Pivoňka}", title="Advantages of Neural Networks in Adaptive Control", booktitle="13th Zittau Fuzzy Coloquium", year="2006", pages="6", publisher="Rektor der Hochschule Zittau/Gorlitz", address="Zittau", isbn="3-9808089-8-X" }