Sensitivity Analysis for Solid Oxide Fuel Cells using Artificial Neural Network Model
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Language: English
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ETEC01_016
Index date: 1 March 2012
Sensitivity Analysis for Solid Oxide Fuel Cells using Artificial Neural Network Model abstract
Parametric study is performed by sensitivity analysis (SA) for solid oxide fuel cells (SOFCs) on an artificial neural network (ANN) model of the SOFC performance. The ANN model have been used to predict the SOFC performance exactly and then the effects of cell parameters, i.e. anode supported layer thickness, porosity, electrolyte thickness, and cathode functional layer thickness, are calculated to recognize the significant factors on the power density of SOFC by using the ANN model. Therefore, this approach can be used to recognize the effects of the cell parameters of the SOFCs and increase the performance in the optimal design of SOFC.
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Sensitivity Analysis for Solid Oxide Fuel Cells using Artificial Neural Network Model authors
shahriar bozorgmehri
University of Tehran, School of Mechanical Engineering,
mohsen hamedi
Niroo Research Institute, Renewable Energy Department,
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