Unraveling the role of Raman modes in evaluating the degree of reduction in graphene oxide via explainable artificial intelligence

IF 13.2 1区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY Nano Today Pub Date : 2024-06-25 DOI:10.1016/j.nantod.2024.102366
Jaekak Yoo , Youngwoo Cho , Dong Hyeon Kim , Jaeseok Kim , Tae Geol Lee , Seung Mi Lee , Jaegul Choo , Mun Seok Jeong
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Abstract

This paper evaluated the degree of reduction in graphene oxide, leveraging deep learning and machine learning models on over 15,000 Raman scattering spectra along with validation using density functional theory calculations. We addressed the limitations of previous studies, such as the consideration of an insufficient number of spectra as well as the lack of a comprehensive analysis of the contribution of individual Raman modes, by introducing machine learning and deep learning. Moreover, our models succeeded in predicting the carbon-to-oxygen ratio and classifying the reduction temperatures using the Raman scattering spectra as input. Employing the partial dependence plot and the feature importance, we interpreted the models and obtained consistent results on the significance of D* mode in graphene oxide. The intensity of the D* mode stands out by not only displaying the highest feature importance value for the reduction temperatures but also by correlating proportionally with the widest range of carbon-to-oxygen ratios among the various Raman modes in graphene oxide. Finally, we validated our findings through quantum mechanical calculations and confirmed the significance of the D* mode. Our study presents a comprehensive insight into the role of Raman modes in the degree of reduction as well as a precise methodology for evaluating the carbon-to-oxygen ratio of graphene oxide, a step towards its further industrial applications.

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通过可解释人工智能揭示拉曼模式在评估氧化石墨烯还原程度中的作用
本文利用深度学习和机器学习模型对超过 15,000 个拉曼散射光谱进行了评估,并利用密度泛函理论计算进行了验证。我们通过引入机器学习和深度学习,解决了以往研究的局限性,如考虑的光谱数量不足,以及缺乏对单个拉曼模式贡献的全面分析。此外,我们的模型使用拉曼散射光谱作为输入,成功地预测了碳氧比并对还原温度进行了分类。利用部分依存图和特征重要性,我们对模型进行了解释,并获得了氧化石墨烯中 D* 模式重要性的一致结果。在氧化石墨烯的各种拉曼模式中,D*模式的强度不仅在还原温度下显示出最高的特征重要性值,而且与最宽的碳氧比范围成比例相关。最后,我们通过量子力学计算验证了我们的发现,并证实了 D* 模式的重要性。我们的研究全面揭示了拉曼模式在还原程度中的作用,并提供了评估氧化石墨烯碳氧比的精确方法,为氧化石墨烯的进一步工业应用迈出了一步。
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来源期刊
Nano Today
Nano Today 工程技术-材料科学:综合
CiteScore
21.50
自引率
3.40%
发文量
305
审稿时长
40 days
期刊介绍: Nano Today is a journal dedicated to publishing influential and innovative work in the field of nanoscience and technology. It covers a wide range of subject areas including biomaterials, materials chemistry, materials science, chemistry, bioengineering, biochemistry, genetics and molecular biology, engineering, and nanotechnology. The journal considers articles that inform readers about the latest research, breakthroughs, and topical issues in these fields. It provides comprehensive coverage through a mixture of peer-reviewed articles, research news, and information on key developments. Nano Today is abstracted and indexed in Science Citation Index, Ei Compendex, Embase, Scopus, and INSPEC.
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