熱工学コンファレンス講演論文集
Online ISSN : 2424-290X
セッションID: A131
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固体酸化物形燃料電池の分割電極による電流分布計測に基づく3次元シミュレーションと機械学習を適用したサロゲートモデル生成
*井生 佑太郎池 映天中島 裕典
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The analysis of the three-dimensional current density, concentration, and temperature distribution in solid oxide fuel cell (SOFC) cells and stacks has conventionally required high computational cost. In this study, we measure the current distributions in a planar test cell with segmented electrodes, which are used to construct and verify a three-dimensional finite element (FE) model. A surrogate model is generated with machine learning using current densities for the cell voltages, gas concentrations, and temperatures as training data predicted from the FE model, which is expected to reduce the computational cost.

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