Crystal growth characterization of WSe2 thin film using machine learning

IF 8.1 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY Materials Today Advances Pub Date : 2024-03-19 DOI:10.1016/j.mtadv.2024.100483
Isaiah A. Moses, Chengyin Wu, Wesley F. Reinhart
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Abstract

Materials characterization remains a labor-intensive process, with a large amount of expert time required to post-process and analyze micrographs. As a result, machine learning has become an essential tool in materials science, including for materials characterization. In this study, we perform an in-depth analysis of the prediction of crystal coverage in WSe thin film atomic force microscopy (AFM) height maps with supervised regression and segmentation models. Regression models were trained from scratch and through transfer learning from a ResNet pretrained on ImageNet and MicroNet to predict monolayer crystal coverage. Models trained from scratch outperformed those using features extracted from pretrained models, but fine-tuning yielded the best performance, with an impressive 0.99 value on a diverse set of held-out test micrographs. Notably, features extracted from MicroNet showed significantly better performance than those from ImageNet, but fine-tuning on ImageNet demonstrated the reverse. As the problem is natively a segmentation task, the segmentation models excelled in determining crystal coverage on image patches. However, when applied to full images rather than patches, the performance of segmentation models degraded considerably, while the regressors did not, suggesting that regression models may be more robust to scale and dimension changes compared to segmentation models. Our results demonstrate the efficacy of computer vision models for automating sample characterization in 2D materials while providing important practical considerations for their use in the development of chalcogenide thin films.
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利用机器学习分析 WSe2 薄膜的晶体生长特征
材料表征仍然是一个劳动密集型过程,需要专家花费大量时间对显微照片进行后期处理和分析。因此,机器学习已成为包括材料表征在内的材料科学领域的重要工具。在本研究中,我们利用监督回归和分割模型对 WSe 薄膜原子力显微镜(AFM)高度图中晶体覆盖率的预测进行了深入分析。回归模型从头开始训练,并通过在 ImageNet 和 MicroNet 上预训练的 ResNet 的迁移学习来预测单层晶体覆盖率。从零开始训练的模型优于使用从预训练模型中提取的特征的模型,但微调模型的性能最好,在一组不同的保留测试显微照片上达到了令人印象深刻的 0.99。值得注意的是,从 MicroNet 提取的特征性能明显优于从 ImageNet 提取的特征,但在 ImageNet 上进行微调的结果却相反。由于该问题本质上是一个分割任务,因此分割模型在确定图像斑块上的晶体覆盖率方面表现出色。然而,当应用于完整图像而不是斑块时,分割模型的性能大大降低,而回归模型的性能却没有下降,这表明回归模型与分割模型相比,可能对比例和维度的变化更加稳健。我们的研究结果证明了计算机视觉模型在二维材料样品自动表征方面的功效,同时也为它们在卤化铝薄膜开发中的应用提供了重要的实际考虑因素。
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来源期刊
Materials Today Advances
Materials Today Advances MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
14.30
自引率
2.00%
发文量
116
审稿时长
32 days
期刊介绍: Materials Today Advances is a multi-disciplinary, open access journal that aims to connect different communities within materials science. It covers all aspects of materials science and related disciplines, including fundamental and applied research. The focus is on studies with broad impact that can cross traditional subject boundaries. The journal welcomes the submissions of articles at the forefront of materials science, advancing the field. It is part of the Materials Today family and offers authors rigorous peer review, rapid decisions, and high visibility.
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