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Artificial neural network model applied to a PEM fuel cell

Title
Artificial neural network model applied to a PEM fuel cell
Type
Article in International Conference Proceedings Book
Year
2009
Authors
D. S. Falcão
(Author)
Other
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C. Pinho
(Author)
FEUP
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A. M. F. R. Pinto
(Author)
FEUP
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F. G. Martins
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FEUP
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Conference proceedings International
Pages: 435-439
1st International Joint Conference on Computational Intelligence
Funchal, PORTUGAL, OCT 05-07, 2009
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Scientific classification
FOS: Natural sciences > Computer and information sciences
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Authenticus ID: P-003-QHD
Abstract (EN): This study proposes the simulation of PEM fuel cell polarization curves using artificial neural networks (ANN). Fuel cell performance can be affected by numerous parameters, namely, reactants pressure, humidification temperature, stoichiometric flow ratios and fuel cell temperature. In this work, the influence of relative humidity (RH) of the gases, as well as gases and fuel cell temperatures was studied. A feedforward ANN with three layers was applied to predict the influence of those parameters, simulating the voltage of a fuel cell of 25 cm(2) area. Different ANN models were tested, varying the number of neurons in the hidden layer (1 to 6). The model performance was evaluated using the Pearson correlation coefficient (R) and the index of agreement of the second order (d(2)). The results showed that feedforward ANN can be used with success in order to obtain the optimal operating conditions to improve PEM fuel cell performance.
Language: English
Type (Professor's evaluation): Scientific
Contact: dfalcao@fe.up.pt; dce05005@fe.up.pt; ctp@fe.up.pt; apinto@fe.up.pt; fgm@fe.ttp.pt
No. of pages: 5
License type: Click to view license CC BY-NC
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