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Validation of Neural Network-based Fault Diagnosis for Multi-stack Fuel Cell Systems: Stack Voltage Deviation Detection

机译:基于神经网络的多堆燃料电池系统故障诊断验证:堆栈电压偏差检测

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摘要

This paper presents (i) an algorithm for the detection of unexpected stack voltage deviations in an Solid Oxide Fuel Cells (SOFC)-based power system with multiple stacks and (ii) its validation in a simulated online environment. The algorithm is based on recurrent neural networks (RNNs) and is validated by using operating data from the Wärtsilä WFC20 multi-stack SOFC system. The voltage deviation detection is based on statistical testing. Instead of a hardware implementation in the actual power plant, the algorithm is validated in a simulated online environment that provides data I/O communication based on the OPC (i.e. Object Linking and Embedding (OLE) for Process Control) protocol, which is also the technology utilized in the real hardware environment. The validation tests show that the RNN-based algorithm effectively detects unwanted stack voltage deviations and also that it is online-viable.
机译:本文提出(i)一种用于在具有多个堆的基于固体氧化物燃料电池(SOFC)的电力系统中检测意外堆电压偏差的算法,以及(ii)在模拟在线环境中进行验证。该算法基于递归神经网络(RNN),并使用来自WärtsiläWFC20多烟囱SOFC系统的运行数据进行了验证。电压偏差检测基于统计测试。代替实际电厂中的硬件实现,该算法在模拟的在线环境中进行了验证,该环境基于OPC(即过程控制的对象链接和嵌入(OLE))协议提供数据I / O通信,该协议也是在实际硬件环境中使用的技术。验证测试表明,基于RNN的算法可以有效地检测到不需要的电池堆电压偏差,并且该算法在线可行。

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