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Seeking regularity from irregularity: unveiling the synthesis–nanomorphology relationships of heterogeneous nanomaterials using unsupervised machine learning

机译:从不规则性中寻找规律性:使用无监督机器学习揭示异质纳米材料的合成-纳米形貌关系

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Nanoscale morphology of functional materials determines their chemical and physical properties. However, despite increasing use of transmission electron microscopy (TEM) to directly image nanomorphology, it remains challenging to quantify the information embedded in TEM data sets, and to use nanomorphology to link synthesis and processing conditions to properties. We develop an automated, descriptor-free analysis workflow for TEM data that utilizes convolutional neural networks and unsupervised learning to quantify and classify nanomorphology, and thereby reveal synthesis–nanomorphology relationships in three different systems. While TEM records nanomorphology readily in two-dimensional (2D) images or three-dimensional (3D) tomograms, we advance the analysis of these images by identifying and applying a universal shape fingerprint function to characterize nanomorphology. After dimensionality reduction through principal component analysis, this function then serves as the input for morphology grouping through unsupervised learning. We demonstrate the wide applicability of our workflow to both 2D and 3D TEM data sets, and to both inorganic and organic nanomaterials, including tetrahedral gold nanoparticles mixed with irregularly shaped impurities, hybrid polymer-patched gold nanoprisms, and polyamide membranes with irregular and heterogeneous 3D crumple structures. In each of these systems, unsupervised nanomorphology grouping identifies both the diversity and the similarity of the nanomaterial across different synthesis conditions, revealing how synthetic parameters guide nanomorphology development. Our work opens possibilities for enhancing synthesis of nanomaterials through artificial intelligence and for understanding and controlling complex nanomorphology, both for 2D systems and in the far less explored case of 3D structures, such as those with embedded voids or hidden interfaces.
机译:纳米功能材料的形态决定了其化学和物理属性。透射电子显微镜(TEM)直接形象nanomorphology,它仍然存在具有挑战性的量化嵌入的信息在TEM的数据集,并使用nanomorphology链接合成和加工条件属性。descriptor-free TEM分析工作流数据利用卷积神经网络和无监督学习量化和分类nanomorphology,从而揭示synthesis-nanomorphology关系在三不同的系统。nanomorphology容易在二维(2 d)图像或三维(3 d) x线断层照片,我们这些图像的分析识别和应用普遍的形状指纹函数来描述nanomorphology。通过主成分分析,这一点函数然后为形态学作为输入分组通过无监督学习。演示的广泛适用性工作流对2 d和3 d TEM的数据集,以及无机和有机纳米材料,包括四面体金纳米粒子混合形状不规则的杂质,混合polymer-patched黄金纳米棱柱,聚酰胺膜与不规则和异构的3 d褶皱结构。无监督nanomorphology分组标识多样性和相似性纳米材料在不同的合成条件,揭示如何合成参数指导nanomorphology发展。提高合成的可能性通过人工智能和纳米材料对于理解和控制复杂nanomorphology,和2 d系统远了的3 d结构,如那些嵌入孔洞或隐藏的接口。

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