Engineering

Volume 6, Issue 8 (July 2014)

ISSN Print: 1947-3931   ISSN Online: 1947-394X

Google-based Impact Factor: 0.66  Citations  

Mechanistic Model versus Artificial Neural Network Model of a Single-Cell PEMFC

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DOI: 10.4236/eng.2014.68044    3,522 Downloads   4,937 Views  Citations

ABSTRACT

Model-based controllers can significantly improve the performance of Proton Exchange Membrane Fuel Cell (PEMFC) systems. However, the complexity of these strategies constraints large scale implementation. In this work, with a view to reduce complexity without affecting performance, two different modeling approaches of a single-cell PEMFC are investigated. A mechanistic model, describing all internal phenomena in a single-cell, and an artificial neural network (ANN) model are tested. To perform this work, databases are measured on a pilot plant. The identification of the two models involves the optimization of the operating conditions in order to build rich databases. The two different models benefits and drawbacks are pointed out using statistical error criteria. Regarding model-based control approach, the computational time of these models is compared during the validation step.

Share and Cite:

Grondin-Perez, B. , Roche, S. , Lebreton, C. , Benne, M. , Damour, C. and Kadjo, J. (2014) Mechanistic Model versus Artificial Neural Network Model of a Single-Cell PEMFC. Engineering, 6, 418-426. doi: 10.4236/eng.2014.68044.

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