Particle Size Analysis of Nanopowders Using Neural Networks and Electron Microscopy

R. A. Tomakova, D. V. Psarev, Y. A. Neruchev, V. A. Starkov
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Abstract

The purpose of the research is to develop an application capable of automatically determining the particle size distribution of nanopowder using neural network technology in order to simplify the process of preparing documentation during its manufacture.Methods. To determine the physical properties of nanopowders during their fabrication, it is necessary to analyze the particle size distribution. A methodology for determining the size distribution of nanopowder particles based on light neural networks is proposed. Images obtained by electron microscopy are used for processing, which allows to speed up the preparation of manufactured powders for sale. The dataset collected for training contains real images of samples of different powders, augmented data and generated images. The Python language, LabVIEW graphical programming environment, YOLO convolutional neural network and various Python language libraries were used in the development.Results. The study resulted in a model trained on the collected dataset that is capable of recognizing particles in images. A software interface was created to work with the model to analyze nanopowder samples.Conclusion. The developed application allows to automatically determine the size of each powder particle on the basis of the obtained images, as well as to build graphs of their size distribution. This greatly simplifies the work of nanopowder producers and facilitates the preparation of the necessary documentation for the produced product.
利用神经网络和电子显微镜分析纳米粉体的粒度
本研究的目的是开发一种能够利用神经网络技术自动确定纳米粉体粒度分布的应用程序,以简化纳米粉体制造过程中的文件编制过程。为了确定纳米粉体在制造过程中的物理特性,有必要对其粒度分布进行分析。本文提出了一种基于光神经网络确定纳米粉体颗粒粒度分布的方法。利用电子显微镜获得的图像进行处理,可以加快制备用于销售的粉末的速度。为训练而收集的数据集包含不同粉末样品的真实图像、增强数据和生成图像。开发过程中使用了 Python 语言、LabVIEW 图形编程环境、YOLO 卷积神经网络和各种 Python 语言库。研究结果显示,在收集的数据集上训练出的模型能够识别图像中的颗粒。研究还创建了一个软件界面,用于与该模型配合分析纳米粉体样本。所开发的应用程序可以根据所获得的图像自动确定每个粉末颗粒的大小,并绘制颗粒大小分布图。这大大简化了纳米粉体生产商的工作,便于为所生产的产品准备必要的文件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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