Integration of Artificial Intelligence into Metallography: Area-wide Analysis of Microstructural Components of a Jominy Sample

J. Schneider, R. Rostami, M. Corcoran, G. Korpala
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Abstract

Analysing the microstructure is an essential part of quality control in many steel manufacturing and processing operations. In this work, a promising method for autonomous analysis of microstructures in low-alloy steels based on artificial intelligence image analysis is presented. This study focuses on the classification of different microstructure components in metallographic images of steel microstructures using a Deep Convolutional Neural Network (DCNN) model. Since the accuracy of the model strongly depends on the size of the data set, a data set consisting of two million optical microscopy images was created to ensure the presence of different microstructure components and their combinations for training the system. The Jominy test was performed to verify the accuracy and capability of the microstructure analysis software. The AI makes it possible to analyse large amounts of image data with high precision and at the same time with less effort than conventional methods of microstructure components analysis.
将人工智能融入金相学:金相试样微观结构成分的全区域分析
分析微观结构是许多钢铁生产和加工过程中质量控制的重要组成部分。本研究提出了一种基于人工智能图像分析的低合金钢微观结构自主分析方法。这项研究的重点是利用深度卷积神经网络(DCNN)模型对钢微观结构金相图像中的不同微观结构成分进行分类。由于模型的准确性在很大程度上取决于数据集的大小,因此创建了一个由两百万张光学显微镜图像组成的数据集,以确保存在不同的微观结构成分及其组合,从而对系统进行训练。为了验证微观结构分析软件的准确性和能力,进行了 Jominy 测试。与传统的微观结构成分分析方法相比,人工智能使高精度地分析大量图像数据成为可能,同时也更省力。
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