ARTIFICIAL INTELLIGENCE TECHNIQUES FOR PERFORMANCE SIMULATION: SOLID OXIDE FUEL CELLS V-J CURVE PREDICTION VIA ARTIFICIAL NEURAL NETWORKS

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2017

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ENEA

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Abstract

For their high flexibility of operation, Solid oxide fuel cells (SOFCs) are promising candidates to coach the transition towards cleaner and efficient energy generation. Yet, SOFC performance might be markedly affected by fuel composition variability and operative parameters. For that, a reliable simulation tool is necessary for SOFC performance, to optimize its working point and to provide a suitable control. Given the high variability ascribed to the fuel and the electrochemical system high nonlinearity, the implementation of artificial intelligence techniques, like Artificial Neural Networks (ANNs), is worth considering. In ANNs, the correlation between system inputs and outputs is handled by virtual neurons, establishing in-out correlations without entering in knotty kinetics and material properties issues. For what above, a suitably sized experimental campaign is to be designed to provide a large data-set. This to guarantee high ANN performance in the voltage estimation and, at the same time, a wide application domain of the neural simulator. © EFC 2017 - Proceedings of the 7th European Fuel Cell Piero Lunghi Conference.

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Consiglio Nazionale delle Ricerche; ITAE; The Bioelectrochemical Society (BES)

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Artificial Neural Networks, Control algorithms, Low-carbon fuels, Simulation, Solid Oxide Fuel Cells

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EFC 2017 - Proceedings of the 7th European Fuel Cell Piero Lunghi Conference -- 7th European Fuel Cell Piero Lunghi Conference, EFC 2017 -- 12 December 2017 through 15 December 2017 -- Naples -- 192480

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99

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100

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