Data-driven analysis of hysteresis and stability in perovskite solar cells using machine learning

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2025-03-24 DOI:10.1016/j.egyai.2025.100503
Sharun Parayil Shaji , Wolfgang Tress
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Abstract

Perovskite solar cells are promising photovoltaic devices because of the high defect tolerance and desirable optoelectronic properties of the metal-halide perovskite absorber materials. The transition from lab to industry is still an open problem, which is mainly limited by upscaling and stability. In this study we try to use tools from data science namely Pearson correlation and random forest regressor applied to the data from the open-source platform “Perovskite Database” to understand the correlations with material choice, fabrication techniques, and current-voltage key features to the stability and hysteresis index. We find that the cell stack as a whole plays a crucial role in hysteresis and not a single layer. We statistically confirm that p-i-n and higher-efficient solar cells generally show reduced hysteresis. We identify certain cross correlations, which would lead to wrong conclusions e.g. claiming an open-circuit voltage not correlated with the hysteresis or some apparent correlations with material parameters, which originate from the historical development. Regarding stability, we are not able to obtain good performance from the machine learning model. Reasons are non-standardized measurements and lack of sufficient data.

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使用机器学习对钙钛矿太阳能电池的迟滞和稳定性进行数据驱动分析
由于金属卤化物钙钛矿吸收材料具有较高的缺陷容忍度和理想的光电性能,钙钛矿太阳能电池是很有前途的光伏器件。从实验室到工业的过渡仍然是一个悬而未决的问题,主要是受升级和稳定性的限制。在这项研究中,我们尝试使用数据科学的工具,即Pearson相关和随机森林回归,应用于开源平台“钙钛矿数据库”的数据,以了解材料选择、制造技术和电流-电压关键特征与稳定性和迟滞指数的相关性。我们发现在迟滞中起关键作用的是整个细胞堆而不是单个细胞层。我们通过统计证实,p-i-n和效率更高的太阳能电池通常表现出更小的滞后。我们确定了某些相互关系,这将导致错误的结论,例如声称开路电压与迟滞不相关或与材料参数有一些明显的相关性,这源于历史发展。在稳定性方面,我们无法从机器学习模型中获得很好的性能。原因是测量不标准化和缺乏足够的数据。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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