• Title of article

    Performance of support vector regression machines on determining the magnetic characteristics of the E-core transverse flux machine

  • Author/Authors

    GUNDOGAN TURKER, Cigdem Kocaeli University - Engineering Faculty B - Department of Electrical Engineering, Turkey , ERFAN KUYUMCU, Feriha Kocaeli University - Engineering Faculty B - Department of Electrical Engineering, Turkey , TURKER TOKAN, Nurhan Yildiz Technical University - Faculty of Engineering - Department of Electronics and Communications Engineering, Turkey

  • From page
    698
  • To page
    708
  • Abstract
    The E-core transverse flux machine (ETFM) has major advantages with its different and unique structure in conventional electrical machines. It is a combination of transverse flux and reluctance principle. In this work, support vector regression machines (SVRMs) are used to obtain the magnetic characteristic parameters of the ETFM for the first time and it is compared with its artificial neural network model. The data for the training and testing of the SVRMs are obtained from experimental measurements. It is proven that SVRMs can conveniently be used in the modeling of the magnetic behaviors of highly nonlinear ETFM with better accuracy and efficiency.
  • Keywords
    E , core transverse flux machine , magnetic characteristics , artificial neural network , support vector regression machines
  • Journal title
    Turkish Journal of Electrical Engineering and Computer Sciences
  • Journal title
    Turkish Journal of Electrical Engineering and Computer Sciences
  • Record number

    2532899