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Fuel adaptive analysis and methane conversion rate prediction based on Gaussian process regression for an SR-SOFC system

机译:基于高斯过程回归的SR-SOFC系统燃料自适应分析和甲烷转化率预测

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Solid oxide fuel cell (SOFC) has strong fuel adaptability, but different fuel components after reformer reforming will make SOFC have different performance characteristics. The reformer performance will directly affect the stack performance of the external steam-reforming SOFC system fed by methane (SR-SOFC), such as stack voltage and temperature distribution, and stack electrical efficiency. The existing SOFC system researches focus on the factors affecting the reforming performance, but ignore the influence of the reforming performance on the stack thermoelectric characteristics. An effective indicator of reforming performance is methane conversion rate. In this paper, the influence of methane conversion rate on the stack thermoelectric characteristics is analyzed through a high-fidelity physical SR-SOFC system model, which is verified by 200-hour experimental data obtained from a 1kW external steam-reforming SOFC independent power generation system. Then, a Gaussian process regression (GPR) model is constructed to predict the methane conversion rate, since it is difficult to directly measure the methane conversion rate without damaging the thermal insulation performance of the hot zone. The results show that, different methane conversion rates in the SR-SOFC system can shift the stack temperature distribution significantly, and properly increasing the methane conversion rate can effectively increase the stack voltage and electrical efficiency. Furthermore, the GPR model-based estimator can accurately predict the methane conversion rate with MAPE of 0.030%. This work lays a foundation for SR-SOFC stack thermal management, ensuring the safety of the stack temperature and improving the stack performance.
机译:固体氧化物燃料电池(SOFC)具有很强的燃料适应性,但是重整器重整后的不同燃料成分将使SOFC具有不同的性能特征。重整器的性能将直接影响由甲烷供料的外部蒸汽重整SOFC系统(SR-SOFC)的烟囱性能,例如烟囱电压和温度分布以及烟囱电效率。现有的SOFC系统研究集中在影响重整性能的因素上,而忽略了重整性能对烟囱热电特性的影响。重整性能的有效指标是甲烷转化率。本文通过高保真物理SR-SOFC系统模型分析了甲烷转化率对烟囱热电特性的影响,并通过1kW外部蒸汽重整SOFC独立发电获得的200小时实验数据验证了该模型系统。然后,构建高斯过程回归(GPR)模型来预测甲烷的转化率,因为在不损害热区的隔热性能的情况下很难直接测量甲烷的转化率。结果表明,SR-SOFC系统中不同的甲烷转化率可以显着改变烟囱温度分布,适当提高甲烷转化率可以有效提高烟囱电压和电效率。此外,基于GPR模型的估算器可以准确预测甲烷的转化率,MAPE为0.030%。这项工作为SR-SOFC堆热管理奠定了基础,从而确保了堆温度的安全性并提高了堆性能。

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