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Fault Detection and Isolation for Proton Exchange Membrane Fuel Cell Using Impedance Measurements and Multiphysics Modeling

机译:使用阻抗测量和多境造型质子交换膜燃料电池故障检测与隔离

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摘要

This study proposes a fault detection and isolation tool for proton exchange membrane fuel cell (PEMFC) operating in embedded applications. A model-based approach, taking partially into account degradation phenomena, is proposed in order to increase the robustness of the tool regarding transient operations and stack ageing. The considered faults are the abnormal operating conditions that can decrease the fuel cell lifetime. The fault detection approach is based on residual generation using both voltage and high frequency resistance measurements and thus combining the advantages of knowledge-based model and electrochemical impedance spectroscopy (EIS) diagnosis approaches. To that end, a multi-physics fuel cell model has been used. This model computes not only the stack voltage but also the high frequency resistance in dynamic conditions. Additionally, the model is modified to take into account the ageing of the fuel cell. Validation is carried out on experimental characterizations during 1,000 h ageing. The results on a new fuel cell stack show a score of 91% for fault isolation. However, without any adaptation, this score drops dramatically as the stack ages. Finally, thanks to ageing modeling and to the proposed adaptation of the detection/isolation procedure, the diagnosis performance remains reliable during fuel cell stack ageing.
机译:本研究提出了在嵌入式应用中操作的质子交换膜燃料电池(PEMFC)的故障检测和隔离工具。提出了一种基于模型的方法,部分考虑到劣化现象,以增加关于瞬态操作和堆叠老化的工具的鲁棒性。所考虑的故障是可能降低燃料电池寿命的异常操作条件。故障检测方法基于使用电压和高频电阻测量的剩余生成,从而结合了基于知识的模型和电化学阻抗光谱(EIS)诊断方法的优点。为此,已经使用了多物理燃料电池模型。该型号不仅计算了堆叠电压,还计算了动态条件下的高频电阻。另外,修改模型以考虑燃料电池的老化。验证在1,000 H老化期间对实验表征进行。新燃料电池堆上的结果显示出故障隔离的91%。但是,如果没有任何适应,这种得分随着堆栈年龄而急剧下降。最后,由于衰老建模和拟议的检测/隔离程序的适应,燃料电池堆老衰老期间诊断性能仍然可靠。

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