Characterization of mixing in nanoparticle hetero‐aggregates by convolutional neural networks

Nano Select Pub Date : 2024-01-19 DOI:10.1002/nano.202300128
Christoph Mahr, Jakob Stahl, B. Gerken, Valentin Baric, Max Frei, F. Krause, T. Grieb, M. Schowalter, T. Mehrtens, Einar Kruis, L. Mädler, A. Rosenauer
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Abstract

Formation of hetero‐contacts between particles of different materials in nanoparticle hetero‐aggregates can lead to new functional properties. Improvement of the functional behavior requires a detailed characterization of mixing between the two types of particles, in order to correlate different mixing with the performance of the material. Scanning transmission electron microscopy (STEM) is an option for this task. To obtain statistically relevant results, STEM‐images of many hetero‐aggregates have to be acquired and evaluated. This can be time‐consuming if it is done manually. In the present work, the applicability of convolutional neural networks for the automated analysis of STEM‐images acquired from TiO2–WO3 nanoparticle hetero‐aggregates is investigated. Hetero‐aggregates are obtained in a double flame spray pyrolysis (DFSP) setup, in which a variation of setup parameters is expected to affect the mixing of TiO2 and WO3. Mixing is investigated by a measurement of cluster sizes (the number of connected particles of the same material within an aggregate) and coordination numbers (the number of particle contacts with particles of the same or the different material). Results show that the distribution of measured values is wide for both quantities, rendering it challenging to correlate mixing with parameters varied in the DFSP setup.
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利用卷积神经网络表征纳米粒子异质聚集体中的混合情况
在纳米粒子异质聚集体中,不同材料的粒子之间形成异质接触可产生新的功能特性。要改善功能特性,就必须详细描述两种粒子之间的混合情况,以便将不同的混合情况与材料的性能联系起来。扫描透射电子显微镜(STEM)是完成这项任务的一种选择。为了获得统计相关的结果,必须获取并评估许多异质聚集体的 STEM 图像。如果是手动操作,则会非常耗时。本文研究了卷积神经网络在自动分析从 TiO2-WO3 纳米粒子异质聚集体获取的 STEM 图像中的适用性。异质聚集体是在双火焰喷雾热解(DFSP)装置中获得的,在这种装置中,装置参数的变化预计会影响 TiO2 和 WO3 的混合。混合情况是通过测量团簇大小(聚集体中相同材料的连接颗粒数量)和配位数(与相同或不同材料颗粒接触的颗粒数量)来研究的。结果表明,这两个量的测量值分布很广,因此很难将混合与 DFSP 设置中的参数变化联系起来。
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