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Reservoir Computing Optimisation for PEM Fuel Cell Fault Diagnostic

机译:PEM燃料电池故障诊断的储层计算优化

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Fuel cell (FC) is considered as one of the most interesting solutions to overcome future energy crisis announced by the International Energy Agency. However, various bottlenecks, whether technological or societal, slow the industrial interest for this technology and therefore the mass production of fuel cells. One of these bottlenecks is related to the limited lifetime of the FC system. To counter this bottleneck, the implementation of fault diagnostics and identification methods is relevant. This paper presents an original and experimentally compatible diagnostics approach, named Reservoir Computing. This paradigm, coming from the Artificial Intelligence domain, is an evolution of traditional Artificial Neural Networks, with a reservoir of neurons instead of the succession of different neuronal layers. Targeted fault types on the fuel cell are stoichiometry values faults, pressure loss, temperature drop and problem on the cooling circuit. Experimental results show the simplicity and effectiveness of RC method to detect these faults under a dynamic load profile.
机译:燃料电池(FC)被认为是克服国际能源机构宣布未来能源危机的最有趣的解决方案之一。但是,各种瓶颈,无论是技术还是社会,都会减缓这种技术的工业利益,因此燃料电池的批量生产。这些瓶颈之一与FC系统的有限寿命有关。为了抵消这种瓶颈,实现故障诊断和识别方法是相关的。本文提出了一种原创和实验兼容的诊断方法,名为储层计算。来自人工智能领域的这种范式,是传统人工神经网络的演变,具有神经元的储层而不是不同的神经层层。燃料电池上的有针对性的故障类型是化学计量值故障,压力损失,温度下降和冷却回路的问题。实验结果表明RC方法在动态负载曲线下检测这些故障的简单性和有效性。

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