Toward automated microstructure characterization of stainless steels through machine learning-based analysis of replication micrographs

IF 3.4 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Hamza Ghauri, Reza Tafreshi, Bilal Mansoor
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引用次数: 0

Abstract

Machine learning-driven automated replication micrographs analysis makes possible rapid and unbiased damage assessment of in-service steel components. Although micrographs captured by scanning electron microscopy (SEM) have been analyzed at depth using machine learning, there is no literature available on the technique being attempted on optical replication micrographs. This paper presents a machine-learning approach to segment and quantify carbide precipitates in thermally exposed HP40-Nb stainless-steel microstructures from batches of low-resolution optical images obtained by replication metallography. A dataset of nine micrographs was used to develop a random forest classification model to segment precipitates within the matrix (intragranular) and at grain boundaries (intergranular). The micrographs were preprocessed using background subtraction, denoising, and sharpening to improve quality. The method achieves high segmentation accuracy (91% intergranular, 97% intragranular) compared to human expert classification. Furthermore, segmented micrographs were quantified to obtain carbide size, shape, and density distribution. The correlations in the quantified data aligned with expected carbide evolution mechanisms. Results from this study are promising but necessitate validation of the method on a larger dataset representative of evolution of thermal degradation in steel, given that characterization of the evolution of microstructure components, such as precipitates, applies to broad applications across diverse alloy systems, particularly in extreme service.

通过基于机器学习的复制显微照片分析,实现不锈钢微观结构的自动表征
机器学习驱动的自动复制显微照片分析可对使用中的钢铁部件进行快速、无偏见的损伤评估。虽然扫描电子显微镜(SEM)捕获的显微照片已利用机器学习进行了深度分析,但目前还没有文献介绍在光学复制显微照片上尝试使用该技术。本文介绍了一种机器学习方法,用于从复制金相术获得的成批低分辨率光学图像中分割和量化热暴露 HP40-Nb 不锈钢微结构中的碳化物析出物。九张显微照片的数据集用于开发随机森林分类模型,以分割基体(晶粒内)和晶粒边界(晶粒间)的析出物。显微照片经过背景减除、去噪和锐化等预处理,以提高质量。与人工专家分类相比,该方法达到了很高的分割准确率(晶粒间 91%,晶粒内 97%)。此外,还对分割后的显微照片进行了量化,以获得碳化物的尺寸、形状和密度分布。量化数据中的相关性与预期的碳化物演变机制一致。这项研究的结果很有希望,但鉴于析出物等微观结构成分演变的特征描述适用于各种合金系统的广泛应用,尤其是在极端工况下,有必要在代表钢中热降解演变的更大数据集上对该方法进行验证。
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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来源期刊
CiteScore
8.60
自引率
0.00%
发文量
1
审稿时长
13 weeks
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