Fill Factor Prediction of Modern Industrial Cells: Potential Gaps and Improvements

G. M. N. Javier, P. Dwivedi, Yoann Buratti, T. Trupke, Z. Hameiri
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引用次数: 1

Abstract

Extracting solar cell electrical parameters directly from luminescence images, instead of the common current-voltage (I-V) measurements, can significantly increase the throughput and reduce the operation cost of photovoltaic production lines. This study investigates the capability of obtaining the fill factor (FF) from luminescence images by assessing the accuracy of published empirical expressions for the FF. The fitting approach for empirical coefficients was first modified. The resulting coefficients marginally improved the fit for the electrical range suggested in the literature as well as of current state-of-the-art solar cells. Nevertheless, through a dataset of 15,000 I-V measurements of industrial cells, a gap between the predicted and measured FF was observed. The impact of the effective ideality factor, edge recombination, and non-uniform recombination on the estimated FF were therefore investigated. Results show that adding information on the ideality factor or edge recombination increases the prediction accuracy. Moreover, the expressions tend to overestimate the FF for non-uniform cells. This study provides insights on the accurate estimation of FF through metrics that can be captured from luminescence images. This paves the way to improving the analysis of luminescence images for end-of-line characterization in industrial manufacturing lines.
现代工业细胞的填充因子预测:潜在的差距和改进
直接从发光图像中提取太阳能电池电学参数,而不是常规的电流-电压(I-V)测量,可以显著提高光伏生产线的吞吐量并降低运营成本。本研究通过评估已发表的FF经验表达式的准确性,研究了从发光图像中获得填充因子(FF)的能力。首先对经验系数的拟合方法进行了改进。所得系数略微提高了对文献中建议的电气范围以及当前最先进的太阳能电池的适合程度。然而,通过工业电池的15,000个I-V测量数据集,观察到预测和测量的FF之间存在差距。因此,研究了有效理想因子、边缘重组和非均匀重组对估计FF的影响。结果表明,加入理想因子或边缘重组信息可提高预测精度。此外,非均匀细胞的表达倾向于高估FF。这项研究提供了通过从发光图像中捕获的度量来准确估计FF的见解。这为改进工业生产线末端特征的发光图像分析铺平了道路。
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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