DocumentCode :
970088
Title :
Switched Reluctance Motor Design Using Neural-Network Method With Static Finite-Element Simulation
Author :
Sahraoui, H. ; Zeroug, H. ; Toliyat, H.A.
Author_Institution :
Nat. Polytech. Sch., Algiers
Volume :
43
Issue :
12
fYear :
2007
Firstpage :
4089
Lastpage :
4095
Abstract :
The paper describes a neural network method for optimal design of a switched reluctance motor (SRM). The approach maximizes average torque while minimizing torque ripple, considering mainly the stator and rotor geometry parameters. Before optimization takes place, an experimental validation of the SRM model, based on the finite-element method, is performed. The validation predicts average torque and torque ripple characteristics for several motor configurations while stator and rotor pole arcs are varied. The numerical results are highly nonlinear, and a function approximation of the data is therefore difficult to implement. We therefore interpolate the data by using a neural network based on a generalized radial basis function. The computed results allow us to search for optimum motor parameters. The optimum design was confirmed by numerical field solutions.
Keywords :
electric machine CAD; finite element analysis; function approximation; radial basis function networks; reluctance motors; rotors; stators; torque; SRM model; average torque; function approximation; pole arc design; radial basis function neural-network; rotor geometry; static finite-element simulation; stator geometry; switched reluctance motor; torque ripple; Design; SRM drives; finite-element method; modeling; neural-network modeling; optimization; simulation;
fLanguage :
English
Journal_Title :
Magnetics, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9464
Type :
jour
DOI :
10.1109/TMAG.2007.907990
Filename :
4380281
Link To Document :
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