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On the Use of Neural Networks and Statistical Tools for Nonlinear Modeling and On-Field Diagnosis of Solid Oxide Fuel Cell Stacks

机译:关于使用神经网络的使用和统计工具对实线性建模和实地氧化物燃料电池堆的现场诊断

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The paper reports on the activities performed within the European funded project GENIUS to develop black-box models for modeling and diagnosis of solid oxide fuel cell (SOFC) stacks. Two modeling techniques were investigated, i.e. Neural Networks (NNs) and Statistical Tools (STs). The deployment of NNs was twofold: Recurrent Neural Networks (RNNs) and an NN classifier were developed to simulate transient operation of SOFCs and identify some specific faults that may occur in such devices, respectively. On the other hand, STs are based on a stepwise multiple regression. Data for model development were obtained from experiments specifically designed to reach maximal information content. The final aim was to obtain highly general models of SOFC stacks' operation in both transient and steady state. All the developed black-box models exhibited high accuracy and reliability on both training and test data-sets. Moreover, the black-box models were also proven effective in performing real-time monitoring and degradation analysis for different SOFC stack technologies.
机译:本文报告了欧洲资助的项目天才中的活动,以开发用于对固体氧化物燃料电池(SOFC)堆叠的建模和诊断的黑盒模型。研究了两个建模技术,即神经网络(NNS)和统计工具(STS)。 NNS的部署是双重的:经常发生的神经网络(RNN)和NN分类器被开发以模拟SOFC的瞬态操作,并识别这些设备中可能发生的一些特定故障。另一方面,STS基于逐步多元回归。从专门设计用于达到最大信息内容的实验中获得模型开发数据。最终目标是在瞬态和稳定状态下获得SOFC堆栈操作的高度一般模型。所有开发的黑盒模型都在训练和测试数据集时表现出高精度和可靠性。此外,还证明了对不同SOFC堆栈技术进行实时监测和降解分析的黑盒模型。

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