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Modelling the SOFC behaviours by artificial neural network

机译:通过人工神经网络对SOFC行为进行建模

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The Artificial Neural Network (ANN) can be applied to simulate an object's behaviour without an algorithmic solution merely by utilizing available experimental data. The ANN is used for modelling singular cell behaviour. The optimal network architecture is shown and commented. The error backpropagation algorithm was used for an ANN training procedure.rnThe ANN based SOFC model has the following input parameters: current density, temperature, fuel volume flow density (ml min~(-1) cm~(-2)), and oxidant volume flow density. Based on these input parameters, cell voltage is predicted by the model. Obtained results show that the ANN can be successfully used for modelling the singular solid oxide fuel cell. The self-learning process of the ANN provides an opportunity to adapt the model to new situations (e.g. certain types of impurities at inlet streams etc.). Based on the results from this study it can be concluded that, by using the ANN, an SOFC can be modelled with relatively high accuracy. In contrast to traditional models, the ANN is able to predict cell voltage without knowledge of numerous physical, chemical, and electrochemical factors.
机译:仅通过利用可用的实验数据,无需算法即可将人工神经网络(ANN)用于模拟对象的行为。 ANN用于建模单个单元格行为。显示并注释了最佳的网络体系结构。错误反向传播算法用于ANN训练过程.rn基于ANN的SOFC模型具有以下输入参数:电流密度,温度,燃料体积流量密度(ml min〜(-1)cm〜(-2))和氧化剂体积流量密度。基于这些输入参数,模型可以预测电池电压。所得结果表明,人工神经网络可以成功地用于建模奇异固体氧化物燃料电池。人工神经网络的自学习过程为模型适应新情况提供了机会(例如,进口流中的某些类型的杂质等)。根据这项研究的结果,可以得出结论,通过使用ANN,可以以相对较高的精度对SOFC进行建模。与传统模型相比,ANN能够在不了解众多物理,化学和电化学因素的情况下预测电池电压。

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