Self-optimizing generalized adaptive notch filters - comparison of three optimization strategies - Publikacja - MOST Wiedzy

Wyszukiwarka

Self-optimizing generalized adaptive notch filters - comparison of three optimization strategies

Abstrakt

The paper provides comparison of three different approaches to on-line tuning of generalized adaptive notch filters (GANFs) the algorithms used for identification/tracking of quasi-periodically varying dynamic systems. Tuning is needed to adjust adaptation gains, which control tracking performance of ANF algorithms, to the unknown and/or time time-varying rate of system nonstationarity. Two out ofthree compared approaches are classical solutions the first one incorporates sequential optimization of adaptation gains while the second one is based on the concept of parallel estimation. The maincontribution of the paper is that it suggests the third way it shows that the best results can be achieved when both approaches mentioned above are combined in a judicious way. Such joint sequential/parallel optimization preserves advantages of both treatments: adaptiveness (sequential approach) and robustness to abrupt changes (parallel approach). Additionally the paper shows how, using the concept of surrogate outputs, one can extend the proposed single-frequency algorithm to the multiple frequencies case, without falling into the complexity trap known as the ''curse of dimensionality''.

Cytuj jako

Pełna treść

pełna treść publikacji nie jest dostępna w portalu

Słowa kluczowe

Informacje szczegółowe

Kategoria:
Publikacja w czasopiśmie
Typ:
artykuł w czasopiśmie wyróżnionym w JCR
Opublikowano w:
AUTOMATICA nr 45, strony 68 - 77,
ISSN: 0005-1098
Język:
angielski
Rok wydania:
2009
Opis bibliograficzny:
Niedźwiecki M., Kaczmarek P.: Self-optimizing generalized adaptive notch filters - comparison of three optimization strategies// AUTOMATICA. -Vol. 45, nr. iss. 1 January (2009), s.68-77
Weryfikacja:
Politechnika Gdańska

wyświetlono 106 razy

Publikacje, które mogą cię zainteresować

Meta Tagi