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  5. Implementation of multi-component dusty-gas model for species transport in quasi-three-dimensional numerical analysis of solid oxide fuel cell. Part I: Hydrogen fuel
 
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Implementation of multi-component dusty-gas model for species transport in quasi-three-dimensional numerical analysis of solid oxide fuel cell. Part I: Hydrogen fuel

Journal
IOP Conference Series: Materials Science and Engineering
ISSN
17578981
Date Issued
2019-12-02
Author(s)
Tan W.C.
Iwai H.
Kishimoto M.
Yoshida H.
DOI
10.1088/1757-899X/670/1/012021
Handle (URI)
https://hdl.handle.net/20.500.14170/10683
Abstract
Quasi-three-dimensional numerical model of solid oxide fuel cell, which assumes constant physicochemical properties within the cell components in the thickness direction, typically employs a simple gas diffusion model for species transport in the porous electrodes, such as the Fick's model. In this study, a three-dimensional grid system is introduced in the anode layer and coupled with the quasi-three-dimensional solid oxide fuel cell model. The multi-component dusty-gas model is implemented to solve the conservation of species on this three-dimensional grid system. The results with the developed model are compared with experimental data obtained under hydrogen fuel. The obtained results show that the dusty-gas model can accurately predict the transport of gas species in the porous anode.
Funding(s)
New Energy and Industrial Technology Development Organization
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