Identification of electrochemical model parameters in PEM fuel cells

M. Ohenoja, K. Leiviska
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引用次数: 12

Abstract

The target in this paper is to show how Genetic Algorithms apply for parameter identification of different fuel cells. Therefore, two electrochemical models have been fitted for three different fuel cells. The data originates in the current vs. voltage curves (polarization curves) from the published literature. The results seem promising — a real-coded Genetic Algorithm seems to provide with the model parameters that take the properties of the fuel cells into account. The test material is, however, too small to draw more solid conclusions.
PEM燃料电池电化学模型参数的辨识
本文的目标是展示遗传算法如何应用于不同燃料电池的参数识别。因此,两种电化学模型已适用于三种不同的燃料电池。数据来源于已发表文献中的电流与电压曲线(极化曲线)。结果似乎很有希望——一个真实编码的遗传算法似乎提供了考虑燃料电池特性的模型参数。然而,测试材料太小,无法得出更可靠的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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