Modeling of solid oxide fuel cell (SOFC) electrodes from fabrication to operation: Microstructure optimization via artificial neural networks and multi-objective genetic algorithms

[Display omitted] •Big data are obtained from lifetime simulations of solid oxide fuel cell (SOFC) cathode from fabrication to operation.•Artificial neural network is used to capture powder parameters and SOFC performance and durability.•Sensitivities of the powder parameters are analyzed in the Sob...

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Bibliographic Details
Published in:Energy conversion and management 2019-10, Vol.198, p.111916, Article 111916
Main Authors: Yan, Z., He, A., Hara, S., Shikazono, N.
Format: Article
Language:eng
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Summary:[Display omitted] •Big data are obtained from lifetime simulations of solid oxide fuel cell (SOFC) cathode from fabrication to operation.•Artificial neural network is used to capture powder parameters and SOFC performance and durability.•Sensitivities of the powder parameters are analyzed in the Sobol method.•A multi-objective genetic algorithm is used to optimize the process parameters. In this study, a modeling framework is proposed for the optimization of the solid oxide fuel cell (SOFC) electrode microstructures. This involves sequential simulations of the SOFCs from initial powder to final electrochemical performance with artificial intelligence-assisted multi-objective optimization. The effects of starting powder parameters such as particle size, particle size distribution (PSD) and pore former content on cathodic overpotential and degradation rate of SOFCs are studied. It is shown that fine particle size and/or low pore former content lead to low cathodic overpotential but high degradation rate in the investigated range of the parameters. Predictive models for the cathode overpotential and degradation rate are established by an artificial neural network using the simulation data. The Sobol global sensitivity study suggests that particle size and pore former content play important roles in determination of the cathode overpotential and degradation rate while the PSD effect is insignificant. A multi-objective genetic algorithm (MOGA) is used to minimize both the overpotential and degradation rate of the cathode. The Pareto front is obtained for the optimal design of cathode microstructures. Compared to the grid search method, the MOGA proves to be more robust and efficient for SOFC electrode microstructure optimization.
ISSN:0196-8904
1879-2227