Title :
Minimum inductance estimation in switched reluctance motors by using artificial neural networks
Author :
Yilmaz, Kadir ; Mese, Erkan ; Cengiz, Abdulkadir
Author_Institution :
Dept. of Electr. Educ., Kocaeli Univ., Turkey
Abstract :
Double salient pole structure of switched reluctance motors (SRMs) yields minimum and maximum points in the inductance profile. Minimum and maximum inductances directly affect energy conversion capabilities of a given design. Estimating the maximum inductance is a relatively simple process, even if MW drop in the magnetic steel is not: ignored. However, minimum inductance estimation is much more difficult task due to the uncertain path of airgap magnetic field which is dominated by fringing between rotor and stator poles. A new approach is proposed in this paper to estimate minimum. inductance (Lmin) of SRM. The finite element method (FEM) and artificial neural network (ANN) are employed together for estimation. The data collected by GEMINI electromagnetic finite element software are used to train the ANN. A trained ANN is tested by a test data set. Total estimation error in the test set is observed to be less than 2%.
Keywords :
air gaps; electric machine analysis computing; finite element analysis; inductance; magnetic fields; neural nets; parameter estimation; reluctance motors; rotors; stators; ANN training; FEM; GEMINI electromagnetic finite element software; MW drop; airgap magnetic field; artificial neural networks; double salient pole structure; energy conversion capabilities; finite element method; magnetic steel; maximum inductance; minimum inductance estimation; rotor poles; stator poles; switched reluctance motors; Artificial neural networks; Energy conversion; Finite element methods; Inductance; Magnetic fields; Reluctance machines; Reluctance motors; Stators; Steel; Testing;
Conference_Titel :
Electrotechnical Conference, 2002. MELECON 2002. 11th Mediterranean
Print_ISBN :
0-7803-7527-0
DOI :
10.1109/MELECON.2002.1014549