Application of Recursive Least Squares Algorithm With Variable Forgetting Factor for Frequency Component Estimation in a Generic Input Signal

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Titel: Application of Recursive Least Squares Algorithm With Variable Forgetting Factor for Frequency Component Estimation in a Generic Input Signal
Autoren: Beza, Mebtu Bihonegn, 1981, Bongiorno, Massimo, 1976
Quelle: IEEE Transactions on Industry Applications. 50(2):1168-1176
Schlagwörter: least squares methods, frequency estimation, variable forgetting factor, SYSTEMS, Adaptive estimation, phase, estimation, phase-locked loops (PLLs)
Beschreibung: Signal estimation is important for protection, system study, and control purposes. This paper deals with the application of a modified recursive least squares algorithm, based on a variable forgetting factor, for estimation of frequency components in a generic input signal. Application areas such as synchronization and control in three- and single-phase systems for various grid conditions as well as estimation of harmonic and subsynchronous components will be discussed. Advantages of the proposed method over the available techniques in terms of estimation speed, frequency selectivity, and noise rejection capability will be described. Finally, simulation and experimental results will be used to evaluate the dynamic performance of the proposed method.
Zugangs-URL: https://research.chalmers.se/publication/199227
Datenbank: SwePub
Beschreibung
Abstract:Signal estimation is important for protection, system study, and control purposes. This paper deals with the application of a modified recursive least squares algorithm, based on a variable forgetting factor, for estimation of frequency components in a generic input signal. Application areas such as synchronization and control in three- and single-phase systems for various grid conditions as well as estimation of harmonic and subsynchronous components will be discussed. Advantages of the proposed method over the available techniques in terms of estimation speed, frequency selectivity, and noise rejection capability will be described. Finally, simulation and experimental results will be used to evaluate the dynamic performance of the proposed method.
ISSN:00939994
19399367
DOI:10.1109/tia.2013.2279195