质子交换膜燃料电池堆在粒子滤波框架下的预测,包括表征干扰和电压恢复

Marine Jouin, R. Gouriveau, D. Hissel, M. Péra, N. Zerhouni
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引用次数: 35

摘要

从减少污染排放和发展替代能源的角度来看,燃料电池,更准确地说是质子交换膜燃料电池(PEMFC),是一个很有前途的解决方案。即使这项技术已经接近具有竞争力,但它的寿命仍然太短。因此,预测似乎是预测PEMFC堆栈退化的一个很好的解决方案。然而,PEMFC意味着多物理场和多尺度现象,使得仅基于物理的老化模型的构建非常复杂。一种解决方案是使用混合方法结合使用模型和可用数据进行预测。在这些混合方法中,粒子滤波方法似乎是非常合适的,因为它们提供了计算具有时变参数的模型并在整个预测过程中更新它们的可能性。但为了提高预测效率,不仅要考虑堆栈的老化,还要考虑影响该老化的外部事件。事实上,一些采集技术在燃料电池行为中引入了干扰,并且在表征过程结束时可以观察到电压恢复。本文旨在解决这一问题。首先,介绍了PEMFC燃料电池及其复杂性。然后,描述了表征对燃料电池性能的影响。结合三个粒子滤波器,在预测模型的学习和预测阶段建立了经验模型。新的预测框架被用来进行剩余使用寿命的估计,并通过恒负荷请求和稳定运行条件下的PEMFC的长期实验数据集来说明整个命题。对于超过1000小时的寿命,可以给出误差小于5%的估计。最后,将结果与先前的工作进行比较,表明引入干扰建模可以显著降低预测带来的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prognostics of Proton Exchange Membrane Fuel Cell stack in a particle filtering framework including characterization disturbances and voltage recovery
In the perspective of decreasing polluting emissions and developing alternative energies, fuel cells, and more precisely Proton Exchange Membrane Fuel Cells (PEMFC), represent a promising solution. Even if this technology is close to being competitive, it still suffers from too short life duration. As a consequence, prognostic seems to be a great solution to anticipate PEMFC stacks degradation. However, a PEMFC implies multiphysics and multiscale phenomena making the construction of an aging model only based on physics very complex. One solution consists in using a hybrid approach for prognostics combining the use of models and available data. Among these hybrid approaches, particle filtering methods seem to be really appropriate as they offer the possibility to compute models with time varying parameters and to update them all along the prognostics process. But to be efficient, not only should the prognostics system take into account the aging of the stack but also external events influencing this aging. Indeed, some acquisition techniques introduce disturbances in the fuel cell behavior and a voltage recovery can be observed at the end of the characterization process. This paper proposes to tackle this problem. First, PEMFC fuel cells and their complexities are introduced. Then, the impact of characterization of the fuel cell behavior is described. Empirical models are built and introduced in both learning and prediction phases of the prognostics model by combining three particle filters. The new prognostic framework is used to perform remaining useful life estimates and the whole proposition is illustrated with a long term experiment data set of a PEMFC in constant load solicitation and stable operating conditions. Estimates can be given with an error less than 5% for life durations of more than 1000 hours. Finally, the results are compared to a previous work to show that introducing a disturbance modeling can dramatically reduce the uncertainty coming with the predictions.
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