Black-Box Fuzzy Identification of a Nonlinear Hydrogen Fuel Cell Model

Autores

  • Ana Maria Amarillo Bertone Federal University of Uberlandia
  • Jefferson Beethoven Martins Federal University of Uberlandia
  • Keiji Yamanaka Federal University of Uberlandia

DOI:

https://doi.org/10.5540/tema.2017.018.03.405

Palavras-chave:

Hydrogen fuel cell, fuzzy clustering, identification of dynamical systems, Takagi Sugeno inference method

Resumo

A fuzzy  identification of the dynamical system  model is developed upon a data generated by a software simulator of a hydrogen fuel cell. The data presents a black box  model, just composed by inputs and outputs, carry no  additional information, and showing a strong nonlinear behavior. The choice for a fuzzy identification is based on the data features, and the malleability of the mathematical fuzzy  technique. This approach allows to accomplish the objectives of the research, among which, the validation of the method for it used in other industrial problems.  The dynamic system identification process is performed using a fuzzy clustering through  the Gustafson and Kessel algorithm, and a Takagi Sugeno fuzzy inference method. Validation tests are performed  in terms of the 4-fold technique, confirming the lack of the data over-training. These  results make the fuzzy approach looks as a promising tool for black-box identification  of non linear dynamic systems.

Biografia do Autor

Ana Maria Amarillo Bertone, Federal University of Uberlandia

Faculty of Mathematics

Jefferson Beethoven Martins, Federal University of Uberlandia

Electrical engineering faculty - UFU

Keiji Yamanaka, Federal University of Uberlandia

Faculty of Mathematics

Referências

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``Office of Energy Efficiency'' & Renewable Energy

Acess in November 2016:

http://energy.gov/eere/fuelcells/fuel-cells

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Publicado

2018-01-10

Como Citar

Bertone, A. M. A., Martins, J. B., & Yamanaka, K. (2018). Black-Box Fuzzy Identification of a Nonlinear Hydrogen Fuel Cell Model. Trends in Computational and Applied Mathematics, 18(3), 405. https://doi.org/10.5540/tema.2017.018.03.405

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