• Title of article

    Improved flux pattern by third harmonic injection for multiphase induction machines using neural network

  • Author/Authors

    Abdel-Khalik, Ayman S. Alexandria University - Department of Electrical Engineering, Egypt , Gadoue, Shady M. Alexandria University - Department of Electrical Engineering, Egypt

  • From page
    163
  • To page
    169
  • Abstract
    This paper presents a modified V/f control strategy using neural network with an improved flux pattern using third harmonic injection for multiphase induction machines. The control objective is to generate a nearly rectangular air–gap flux, resulting in an improved machine power density for the required speed range. If just a proportional relation is used between the third harmonic and fundamental plane voltage magnitudes with zero phase shift, variable misalignment between fundamental and third air–gap flux components occurs with varying mechanical loading as a result of stator voltage drop. Due to this misalignment, saturation may take place which affects the total flux and increases machine iron losses. Neural network is used to obtain the required injected voltage phasors magnitudes and angles to ensure that the air–gap flux is near rectangular with a maximum value of 1 pu for all loading conditions. Simulations are carried out on an elevenphase induction machine to validate the proposed controller using MATLAB/Simulink.
  • Keywords
    Multiphase induction machine , Rectangular air–gap flux , Third harmonic injection , Eleven , phase
  • Journal title
    Alexandria Engineering Journal
  • Journal title
    Alexandria Engineering Journal
  • Record number

    2539968