• DocumentCode
    27625
  • Title

    Artificial Neural Networks for Control of a Grid-Connected Rectifier/Inverter Under Disturbance, Dynamic and Power Converter Switching Conditions

  • Author

    Shuhui Li ; Fairbank, Michael ; Johnson, Chris ; Wunsch, Donald C. ; Alonso, E. ; Proao, Julio L.

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Univ. of Alabama, Tuscaloosa, AL, USA
  • Volume
    25
  • Issue
    4
  • fYear
    2014
  • fDate
    Apr-14
  • Firstpage
    738
  • Lastpage
    750
  • Abstract
    Three-phase grid-connected converters are widely used in renewable and electric power system applications. Traditionally, grid-connected converters are controlled with standard decoupled d-q vector control mechanisms. However, recent studies indicate that such mechanisms show limitations in their applicability to dynamic systems. This paper investigates how to mitigate such restrictions using a neural network to control a grid-connected rectifier/inverter. The neural network implements a dynamic programming algorithm and is trained by using backpropagation through time. To enhance performance and stability under disturbance, additional strategies are adopted, including the use of integrals of error signals to the network inputs and the introduction of grid disturbance voltage to the outputs of a well-trained network. The performance of the neural-network controller is studied under typical vector control conditions and compared against conventional vector control methods, which demonstrates that the neural vector control strategy proposed in this paper is effective. Even in dynamic and power converter switching environments, the neural vector controller shows strong ability to trace rapidly changing reference commands, tolerate system disturbances, and satisfy control requirements for a faulted power system.
  • Keywords
    backpropagation; dynamic programming; invertors; learning systems; neurocontrollers; power convertors; power grids; power system control; power system faults; power system stability; rectifiers; renewable energy sources; time-varying systems; artificial neural networks; backpropagation; control requirements; dynamic programming algorithm; dynamic switching condition; dynamic system; electric power system application; error signal integrals; faulted power system; grid disturbance voltage; grid-connected inverter control; grid-connected rectifier control; neural vector control; neural-network controller; performance enhancement; power converter switching condition; power converter switching environment; rapidly changing reference commands; renewable power system application; stability; standard decoupled d-q vector control mechanism; system disturbance tolerance; three-phase grid-connected converters; Control systems; Inverters; Neural networks; Standards; Tuning; Vectors; Voltage control; Backpropagation through time; decoupled vector control; dynamic programming; grid-connected rectifier/inverter; neural controller; renewable energy conversion systems;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2013.2280906
  • Filename
    6612721