锌黄锡矿
光伏
材料科学
计算机科学
光电子学
人工智能
拉曼光谱
接口(物质)
纳米结构
薄膜
机器学习
捷克先令
纳米技术
光伏系统
光学
电气工程
物理
工程类
复合材料
毛细管数
毛细管作用
作者
Jaya Kottareddy Gari,Fabien Atlan,Jacob Andrade‐Arvizu,Robert Fonoll‐Rubio,David Payno,Enric Grau‐Luque,Alejandro Pérez‐Rodríguez,Ignacio Becerril‐Romero,Maxim Guc,Víctor Izquierdo‐Roca,Pedro Vidal‐Fuentes
标识
DOI:10.1002/smtd.202400661
摘要
This work showcases the importance of developing suitable inspection and analysis methodologies with high statistical relevance data coupled with machine learning algorithms, for the detection, control, and understanding of small fluctuations in the scale-up of thin film photovoltaics to industrial sizes. To exhibit this methodology, this work investigates the effect of subtle inhomogeneities on the efficiency of thin film solar cells based on the Cu2ZnSnSe4/CdS interface using two large area samples subdivided in ≈400 individual solar cells. A large dataset obtained from Raman and photoluminescence spectroscopic techniques together with J-V optoelectronic data is generated to elucidate the impact of these inhomogeneities on the efficiency of the devices. Using a combination of statistical (spectral difference) and over 440 000 multivariate polynomial regressions through machine learning algorithms, it is revealed how the main limiting factor for device performance are subtle fluctuations in the nanostructure and surface defects of the CdS layer, rather than compositional fluctuations or defects in the kesterite absorber. It is estimated that the avoidance of these issues could result in an absolute increase in device efficiency of 2%. This could provide a potential avenue for further technology advancement within the kesterite community.
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