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Adaptive Nonlinear System Identification

The Volterra and Wiener Model Approaches
BuchGebunden
Verkaufsrang86230inTechnik
CHF161.00

Beschreibung

Adaptive Nonlinear System Identification: The Volterra and Wiener Model Approaches introduces engineers and researchers to the field of nonlinear adaptive system identification. The book includes recent research results in the area of adaptive nonlinear system identification and presents simple, concise, easy-to-understand methods for identifying nonlinear systems. These methods use adaptive filter algorithms that are well known for linear systems identification. They are applicable for nonlinear systems that can be efficiently modeled by polynomials.



After a brief introduction to nonlinear systems and to adaptive system identification, the author presents the discrete Volterra model approach. This is followed by an explanation of the Wiener model approach. Adaptive algorithms using both models are developed. The performance of the two methods are then compared to determine which model performs better for system identification applications.



Adaptive Nonlinear System Identification: The Volterra and Wiener Model Approaches is useful to graduates students, engineers and researchers in the areas of nonlinear systems, control, biomedical systems and in adaptive signal processing.
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Details

ISBN/GTIN978-0-387-26328-1
ProduktartBuch
EinbandGebunden
Erscheinungsdatum12.09.2007
Seiten232 Seiten
SpracheEnglisch
MasseBreite 155 mm, Höhe 235 mm, Dicke 18 mm
Gewicht1170 g
Artikel-Nr.3436364
KatalogBuchzentrum
Datenquelle-Nr.1868815
WarengruppeTechnik
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