Elucidating the non-linear effect of process parameters on hydrogen production by catalytic methane reforming: An artificial intelligence approach
This study focuses on the non-linear effect of gas hourly space velocity (GHSV), oxygen (O2) concentration in the feed, the reaction temperature, and the CH4/CO2 ratio on hydrogen production by catalytic methane dry reforming using artificial neural networks (ANN). Ten different ANN models were conf...
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Main Authors: | Alsaffar M.A., Mageed A.K., Abdel Ghany M.A.R., Ayodele B.V., Mustapa S.I. |
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Other Authors: | 57210601717 |
Format: | Conference Paper |
Published: |
IOP Publishing Ltd
2023
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