Open Access

Offline and Online Modelling of Switched Reluctance Motor Based on RBF Neural Networks

 and    | Jun 08, 2013

Cite

[1] CHEN, H. J.-JIANG, D. Q.-YANG, J.-SHI, L. X. : A New Analytical Model for Switched Reluctance Motors, IEEE Transactions on Magnetics 45 (2009), 3107-3113.10.1109/TMAG.2009.2015876Search in Google Scholar

[2] MAO, S. H.-DORRELL, D.-TSAI, M. C. : Fast Analytical Determination of Aligned and Unaligned Flux Linkage in Switched Reluctance Motors Based on a Magnetic Circuit Model, IEEE Transactions on Magnetics 45 (2009), 2935-2942.10.1109/TMAG.2009.2016087Search in Google Scholar

[3] LYONS, J. P.-MacMINN, S. R.-PRESTON, M. A. : Flux/ Current Methods for SRM Rotor Position Estimation, Conf. Rec. IEEE-IAS Annu. Meeting, 1991, pp. 482-487.Search in Google Scholar

[4] CHEOK, A.-ERTUGRUL, N. : High Robustness and Reliability of Fuzzy Logic Based Position Estimation for Sensorless Switched Reluctance Motor Drives, IEEE Transactions on Power Electronics 15 (2000), 319-334.10.1109/63.838105Search in Google Scholar

[5] MESE, E.-TORREY, D. A. : An Approach for Sensorless Position Estimation for Switched Reluctance Motors using Artificial Neural Networks, IEEE Transactions on Power Electronics 17 (2002), 66-75.10.1109/63.988671Search in Google Scholar

[6] LIN, Z.-REAY, D. S. : Online Modelling for Switched Reluctance Motors using B-Spline Neural Networks, IEEE Transaction Industrial Electronic 54 (2007), 3317-3322.10.1109/TIE.2007.904009Search in Google Scholar

ISSN:
1335-3632
Language:
English
Publication timeframe:
6 times per year
Journal Subjects:
Engineering, Introductions and Overviews, other