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Robust LPV model-based sensor fault diagnosis using relative fault sensitivity signature and residual directions approaches in a PEM fuel cell

机译:在pEm燃料电池中使用相对故障灵敏度特征和残余方向方法的基于LpV模型的稳健传感器故障诊断

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摘要

In this paper, a model-based fault diagnosis methodology for PEM fuel cell systems is presented. The methodology is based on computing residuals using an LPV observer. Sensor fault detection faces the problem of robustness using adaptive thresholds generated with interval observer. Fault isolation is performed using the Euclidean distance between the observed relative residuals and theoretical relative sensitivities. To illustrate the results, a commercial fuel cell Ballard Nexa© is used\udin simulation where a set of typical fault scenarios have been considered. Finally, the diagnosis results corresponding to those\udfault scenarios are presented. It is remarkable that with this methodology it is possible to diagnose all the considered faults in contrast with other well known methodologies which use the classic binary signature matrix approach.
机译:本文提出了一种基于模型的PEM燃料电池系统故障诊断方法。该方法基于使用LPV观测器计算残差。使用由间隔观察器生成的自适应阈值,传感器故障检测面临鲁棒性问题。使用观察到的相对残差与理论相对灵敏度之间的欧式距离来执行故障隔离。为了说明结果,使用了商用燃料电池Ballard Nexa©\ udin仿真,其中已考虑了一组典型的故障情况。最后,给出了与那些\ udfault情况相对应的诊断结果。值得注意的是,与使用经典二进制签名矩阵方法的其他众所周知的方法相比,使用这种方法可以诊断所有考虑的故障。

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