Boiko Daniil A, Pentsak Evgeniy O, Cherepanova Vera A, Gordeev Evgeniy G, Ananikov Valentine P
Zelinsky Institute of Organic Chemistry, Russian Academy of Sciences Leninsky Pr. 47 Moscow 119991 Russia
Chem Sci. 2021 Apr 29;12(21):7428-7441. doi: 10.1039/d0sc05696k.
Smoothness/defectiveness of the carbon material surface is a key issue for many applications, spanning from electronics to reinforced materials, adsorbents and catalysis. Several surface defects cannot be observed with conventional analytic techniques, thus requiring the development of a new imaging approach. Here, we evaluate a convenient method for mapping such "hidden" defects on the surface of carbon materials using 1-5 nm metal nanoparticles as markers. A direct relationship between the presence of defects and the ordering of nanoparticles was studied experimentally and modeled using quantum chemistry calculations and Monte Carlo simulations. An automated pipeline for analyzing microscopic images is described: the degree of smoothness of experimental images was determined by a classification neural network, and then the images were searched for specific types of defects using a segmentation neural network. An informative set of features was generated from both networks: high-dimensional embeddings of image patches and statics of defect distribution.
碳材料表面的光滑度/缺陷性是许多应用中的关键问题,涵盖从电子到增强材料、吸附剂和催化等领域。传统分析技术无法观察到一些表面缺陷,因此需要开发一种新的成像方法。在此,我们评估了一种利用1-5纳米金属纳米颗粒作为标记物来绘制碳材料表面此类“隐藏”缺陷的便捷方法。通过实验研究了缺陷的存在与纳米颗粒排列之间的直接关系,并使用量子化学计算和蒙特卡罗模拟进行建模。描述了一种用于分析微观图像的自动化流程:通过分类神经网络确定实验图像的光滑度,然后使用分割神经网络在图像中搜索特定类型的缺陷。从这两个网络生成了一组信息丰富的特征:图像块的高维嵌入和缺陷分布统计信息。