• DocumentCode
    1025929
  • Title

    A New Modeling Approach of Embedded Fuel-Cell Power Generators Based on Artificial Neural Network

  • Author

    Jemeï, Samir ; Hissel, Daniel ; Péra, Marie-Cécile ; Kauffmann, Jean Marie

  • Author_Institution
    Franche-Comte Univ., Belfort
  • Volume
    55
  • Issue
    1
  • fYear
    2008
  • Firstpage
    437
  • Lastpage
    447
  • Abstract
    Among the various kinds of electrical vehicle (EV) prototypes presented by the car manufacturers, fuel-cell EVs seem to be a very promising solution. Five different fuel-cell technologies are available in the research laboratories. Nevertheless, only two technologies can really be considered for transportation applications due to their solid electrolyte, i.e., proton exchange membrane fuel cells (PEMFCs) and solid oxide fuel cells. The PEMFCs are investigated in this paper. When talking about EV design, a simulation model of the whole fuel-cell system is a binding milestone. This would lead in the optimization ability of the complete vehicle (including all ancillaries, output electrical converter, and their dedicated control laws). Nevertheless, the fuel-cell model is strongly dependent on many physicochemical parameters that are difficult to evaluate on a real PEMFC stack. Moreover, the analytical relations governing the behavior of a PEMFC system are also far from being easy. Thus, a ldquominimal behavioral modelrdquo of a fuel-cell system, which is able to evaluate the output variables and their variations, is highly interesting. Artificial neural networks propose a very efficient tool to reach such an aim. In this paper, a PEMFC neural network model is proposed.
  • Keywords
    digital simulation; fuel cell vehicles; neural nets; power engineering computing; proton exchange membrane fuel cells; PEMFC; artificial neural network; embedded fuel-cell power generators; fuel-cell electrical vehicle; fuel-cell model; minimal behavioral model; optimization ability; proton exchange membrane fuel cells; simulation model; solid oxide fuel cells; Artificial neural networks; Distributed power generation; Electric vehicles; Fuel cells; Laboratories; Manufacturing; Power generation; Prototypes; Solids; Transportation; Artificial neural networks (ANNs); discrete Fourier transforms (DFTs); fuel cells; nonlinear systems; recurrent neural networks (NNs);
  • fLanguage
    English
  • Journal_Title
    Industrial Electronics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0278-0046
  • Type

    jour

  • DOI
    10.1109/TIE.2007.896480
  • Filename
    4418521