Quantitative Analysis of Perovskite Morphologies Employing Deep Learning Framework Enables Accurate Solar Cell Performance Prediction

IF 11.8 2区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY Small Pub Date : 2025-03-20 DOI:10.1002/smll.202408528
Haixin Zhou, Kuo Wang, Cong Nie, Jiahao Deng, Ziye Chen, Kang Zhang, Xiaojie Zhao, Jiaojiao Liang, Di Huang, Ling Zhao, Hun Soo Jang, Jeamin Kong
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Abstract

In perovskite solar cells, grain boundaries are considered one of the major structural defect sites, and consequently affect solar cell performance. Therefore, a precise edge detection of perovskite grains may enable to predict resulting solar cell performance. Herein, a deep learning model, Self-UNet, is developed to extract and quantify morphological information such as grain boundary length (GBL), the number of grains (NG), and average grain surface area (AGSA) from scanning elecron microscope (SEM) images. The Self-UNet excels conventional Canny and UNet models in edge extraction; the Dice coefficient and F1-score exhibit as high as 91.22% and 93.58%, respectively. The high edge detection accuracy of Self-UNet allows for not only identifying tiny grains stuck between relatively large grains, but also distinguishing actual grain boundaries from grooves on grain surface from low quality SEM images, avoiding under- or over-estimation of grain information. Moreover, the gradient boosted decision tree (GBDT) regression integrated to the Self-UNet exhibits high accuracy in predicting solar cell efficiency with relative errors of less than 10% compared to the experimentally measured efficiencies, which is corroborated by results from the literature and the experiments. Additionally, the GBL can be verified in multiple ways as a new morphological feature.

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利用深度学习框架对钙钛矿形态进行定量分析,实现准确的太阳能电池性能预测
在钙钛矿太阳能电池中,晶界被认为是主要的结构缺陷之一,从而影响太阳能电池的性能。因此,钙钛矿颗粒的精确边缘检测可以预测所得的太阳能电池性能。本文开发了一种深度学习模型Self-UNet,用于从扫描电镜(SEM)图像中提取和量化晶界长度(GBL)、晶粒数(NG)和平均晶粒表面积(AGSA)等形态信息。Self-UNet在边缘提取方面优于传统的Canny和UNet模型;Dice系数和f1得分分别高达91.22%和93.58%。Self-UNet的高边缘检测精度不仅可以识别出卡在较大颗粒之间的微小颗粒,还可以从低质量的SEM图像中区分出颗粒表面的实际晶界和凹槽,避免对颗粒信息的低估或高估。此外,与Self-UNet集成的梯度增强决策树(GBDT)回归在预测太阳能电池效率方面表现出很高的准确性,与实验测量的效率相比,相对误差小于10%,这一点得到了文献和实验结果的证实。此外,作为一种新的形态学特征,GBL可以通过多种方式得到验证。
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来源期刊
Small
Small 工程技术-材料科学:综合
CiteScore
17.70
自引率
3.80%
发文量
1830
审稿时长
2.1 months
期刊介绍: Small serves as an exceptional platform for both experimental and theoretical studies in fundamental and applied interdisciplinary research at the nano- and microscale. The journal offers a compelling mix of peer-reviewed Research Articles, Reviews, Perspectives, and Comments. With a remarkable 2022 Journal Impact Factor of 13.3 (Journal Citation Reports from Clarivate Analytics, 2023), Small remains among the top multidisciplinary journals, covering a wide range of topics at the interface of materials science, chemistry, physics, engineering, medicine, and biology. Small's readership includes biochemists, biologists, biomedical scientists, chemists, engineers, information technologists, materials scientists, physicists, and theoreticians alike.
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