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Reduced-order model for microstructure evolution prediction in the electrodes of solid oxide fuel cell with dynamic discrepancy reduced modeling

机译:具有动态差异减少模型的固体氧化物燃料电池电极微结构演化预测的降阶模型

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摘要

Microstructure evolution in the electrodes of solid oxide fuel cell is an important degradation mechanism which reduces active sites for redox reaction and the electric conductivity. Phase field models for microstructure evolution simulation are usually expensive for large scale simulations. In this work, a reduced-order coarsening model is developed using dynamic discrepancy reduced modeling, which reduces the model order by inserting Gaussian process stochastic functions into the dynamic equations of Ostwald ripening. The reduced order model has been calibrated on a dataset generated by a phase field model that has been well validated to experiments. A validating dataset has also been generated with which the model prediction show good agreement. This model is further applied to predict long term microstructure evolution in different SOFC electrodes. This work is the first attempt of building a degradation model of SOFC using data science techniques.
机译:固体氧化物燃料电池的电极中的微观结构演变是重要的降解机理,其减少了氧化还原反应的活性位点和电导率。用于微观结构演化仿真的相场模型通常对于大规模仿真而言是昂贵的。在这项工作中,使用动态差异缩减模型开发了降阶粗化模型,该模型通过将高斯过程随机函数插入到奥斯特瓦尔德熟化的动力学方程中来降低模型阶数。降阶模型已经在由相场模型生成的数据集中进行了校准,该数据集已经过实验验证。还生成了一个验证数据集,该数据集与模型预测显示出良好的一致性。该模型进一步应用于预测不同SOFC电极中的长期微观结构演变。这项工作是使用数据科学技术建立SOFC降级模型的首次尝试。

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