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Artificial intelligence for time-efficient prediction and optimization of solid oxide fuel cell performances

机译:用于时间高效预测和固体氧化物燃料电池性能的人工智能

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摘要

Reliability and durability are main issues that must be addressed in order to accelerate the commercialization of solid oxide fuel cells (SOFCs). Time-efficient and exact prediction of system performance as a function of an operating environment could reduce the time required to find the operating optimum within a wide range of parameters. For this purpose, a prognostic framework based on artificial neural network (ANN) is designed within this study to predict SOFC performance presented by polarization curves and electrochemical impedance spectra. In order to train and validate the ANN developed two approaches are followed to generate the data sets required: very detailed multi-physic model and experimental data. Very good agreement between the ANN model and the measured data is observed, with an exception for very low current densities lower than 20 mAcm? 2. The polarization model with 1-3 hidden layers and 3-5 neurons as well as a patience parameter 5-20 resulted in a very good accuracy. Increasing the system complexity, e.g. required prediction of the overall cell impedance as a function of the operating temperature, the system complexity increased thus increasing the number of neurons per hidden layer up to 10-30 and a patience of up to 500-1000 epochs.commentSuperscript/Subscript Available/comment
机译:可靠性和耐用性是必须解决的主要问题,以加速固体氧化物燃料电池(SOFC)的商业化。作为操作环境的函数的系统性能的时间效率和精确预测可以减少在宽范围的参数范围内找到工作最佳所需的时间。为此目的,基于人工神经网络(ANN)的预后框架被设计在该研究中,以预测偏振曲线和电化学阻抗谱呈现的SOFC性能。为了培训和验证ANN开发的ANN,遵循两种方法来生成所需的数据集:非常详细的多物理模型和实验数据。在ANN模型和测量数据之间观察到非常好的一致性,具有低于20宏的非常低的电流密度异常? 2.具有1-3个隐藏层和3-5个神经元的偏振模型以及耐心参数5-20产生了非常好的准确性。提高系统复杂性,例如需要预测整体电池阻抗作为操作温度的函数,系统复杂性增加,从而增加了每隐藏层的神经元数量高达10-30,耐心高达500-1000时期。<评论>上标/下标可用

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