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Diagnosis of CO Pollution in HTPEM Fuel Cell using Statistical Change Detection

机译:使用统计变化检测诊断HTPEM燃料电池CO污染

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The fuel cell technologies are advancing and maturing for commercial markets. However proper diagnostic tools needs to be developed in order to insure reliability and durability of fuel cell systems. This paper presents a design of a data driven method to detect CO content in the anode gas of a high temperature fuel cell. In this work the fuel cell characterization is based on an experimental equivalent electrical circuit, where model parameters are mapped as a function of the load current. The designed general likelihood ratio test detection scheme detects whether a equivalent electrical circuit parameter differ from the non-faulty operation. It is proven that the general likelihood ratio test detection scheme, with a very low probability of false alarm, can detect CO content in the anode gas of the fuel cell.
机译:燃料电池技术正在推进和成熟商业市场。然而,需要开发适当的诊断工具,以确保燃料电池系统的可靠性和耐用性。本文介绍了一种数据驱动方法,用于检测高温燃料电池的阳极气体中的共含量。在这项工作中,燃料电池表征基于实验等效电路,其中模型参数被映射为负载电流的函数。设计的一般似然比测试检测方案检测等效电路参数是否与非故障操作不同。据证正,普通似然比测试检测方案具有非常低的误报概率,可以检测燃料电池的阳极气体中的共含量。

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