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Artificial neural network predicts SOFC performance


Publisher
Elsevier Science
Year
2003
Tongue
English
Weight
61 KB
Volume
2003
Category
Article
ISSN
1464-2859

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โœฆ Synopsis


Methanol-steam reformation in internal reforming fuel cell

The kinetics of methanol-steam reformation were studied in an idealized tube reactor and a non-ideal internal reforming fuel cell. Methanol conversion in the IRFC was significantly less than in an ideal plug flow reactor, but for higher current densities the IRFC requires less catalyst. S.R. Samms and R.F. Savinell: J. Power Sources 112(1) 13-29 (24 October 2002).

Granular aluminum AFC anode

A granular aluminum anode was investigated for use in an alkaline Al/H 2 O 2 fuel cell. The significantly higher surface area of granular anodes leads to higher anode material utilization. N.A. Popovich and R.


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