Solid oxide fuel cell electrochemical stacks require high quality reformate for performance and durability. Insufficiently mixed reactants, carbon deposits, or improper chemical ratios thereof can result in reactant ignition during mixing prior to catalysis. Reactant ignition can warp and plug downstream components; therefore, it is desirable to predict and mitigate reactant ignition. Leading machine learning techniques were applied to the task of predicting ignition events in prototype (diesel-fueled) solid oxide fuel cells at a 30-second event horizon, using both current signal state and up to 30 seconds of signal history to make predictions. Based upon our analysis, first-order particle filtering using Fisher discriminant meta-reasoning provided the best cross-system performance when compared to other meta-reasoning methods (e.g., logistic regression, kernel support vector machine) as well as traditional vector quantization. In this paper, we demonstrate particle filter construction using data from eleven sensors, analyze predictive performance on real-world data, and discuss modifications to handle further system design changes.
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ASME 2012 10th International Conference on Fuel Cell Science, Engineering and Technology collocated with the ASME 2012 6th International Conference on Energy Sustainability
July 23–26, 2012
San Diego, California, USA
Conference Sponsors:
- Advanced Energy Systems Division
- Solar Energy Division
ISBN:
978-0-7918-4482-3
PROCEEDINGS PAPER
Forecasting Reactant Ignition in Solid Oxide Fuel Cell Systems
Paul A. Ardis,
Paul A. Ardis
Rochester Institute of Technology, Rochester, NY
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Nenad G. Nenadic,
Nenad G. Nenadic
Rochester Institute of Technology, Rochester, NY
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Mark R. Walluk,
Mark R. Walluk
Rochester Institute of Technology, Rochester, NY
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Daniel F. Smith
Daniel F. Smith
Rochester Institute of Technology, Rochester, NY
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Paul A. Ardis
Rochester Institute of Technology, Rochester, NY
Nenad G. Nenadic
Rochester Institute of Technology, Rochester, NY
Mark R. Walluk
Rochester Institute of Technology, Rochester, NY
Daniel F. Smith
Rochester Institute of Technology, Rochester, NY
Paper No:
FuelCell2012-91014, pp. 91-95; 5 pages
Published Online:
July 23, 2013
Citation
Ardis, PA, Nenadic, NG, Walluk, MR, & Smith, DF. "Forecasting Reactant Ignition in Solid Oxide Fuel Cell Systems." Proceedings of the ASME 2012 10th International Conference on Fuel Cell Science, Engineering and Technology collocated with the ASME 2012 6th International Conference on Energy Sustainability. ASME 2012 10th International Conference on Fuel Cell Science, Engineering and Technology. San Diego, California, USA. July 23–26, 2012. pp. 91-95. ASME. https://doi.org/10.1115/FuelCell2012-91014
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