Image correlation technique for strain measurement of polycrystalline microstructures

IF 1.8 3区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Strain Pub Date : 2022-10-07 DOI:10.1111/str.12428
Youssef A. F. Hafiz, Z. Stachurski, S. Kalyanasundaram
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引用次数: 2

Abstract

An image processing technique is proposed to measure the deformation of polycrystalline materials based on correlating the grains in reference and deformed SEM images. The advantage of this technique compared to the conventional subset‐based Digital Image Correlation (DIC) is that it can be applied when speckle patterning is not efficient or when studying boundary‐related mechanics is the objective. The technique is based on correlating grains by defining their boundaries rather than just subsets of image pixels. It reveals the anisotropy inherent in the polycrystals since it allows the analysis to specify each grain separately without averaging the results. The technique is applied by detecting the approximate grain boundaries edges and then refining their location with high accuracy. The correlation is performed between points calculated from each grain in the reference and deformed images as a Point Set Registration (PSR) problem. Finally, the displacements and strains are calculated from the resulting transformation matrix. A benchmark problem was developed to discuss the error over a strain range of 0.02 to 0.2 and showed that the resulting strains are reasonably accurate. Also, an in situ experiment was conducted to demonstrate the implementation of the technique using a specimen with fine‐grained Zirconia polycrystals. The technique successfully revealed the crack tip plastic zone, and strain mismatch between grains.
多晶微结构应变测量的图像相关技术
提出了一种基于参考图像和变形扫描电镜图像晶粒关联的多晶材料变形图像处理技术。与传统的基于子集的数字图像相关(DIC)技术相比,该技术的优势在于,它可以在散斑模式效率不高或以研究边界相关力学为目标时应用。该技术是基于通过定义颗粒边界来关联颗粒,而不仅仅是图像像素的子集。它揭示了多晶中固有的各向异性,因为它允许分析单独指定每个晶粒而不平均结果。该技术通过检测近似晶界边缘,然后高精度地细化其定位。作为点集配准(PSR)问题,从参考图像中的每个颗粒计算出的点与变形图像之间进行相关性。最后,根据得到的变换矩阵计算位移和应变。开发了一个基准问题来讨论在0.02到0.2应变范围内的误差,并表明得到的应变是相当准确的。此外,还进行了原位实验,利用细粒度氧化锆多晶样品来演示该技术的实现。该技术成功地揭示了裂纹尖端的塑性区和晶粒间的应变失配。
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来源期刊
Strain
Strain 工程技术-材料科学:表征与测试
CiteScore
4.10
自引率
4.80%
发文量
27
期刊介绍: Strain is an international journal that contains contributions from leading-edge research on the measurement of the mechanical behaviour of structures and systems. Strain only accepts contributions with sufficient novelty in the design, implementation, and/or validation of experimental methodologies to characterize materials, structures, and systems; i.e. contributions that are limited to the application of established methodologies are outside of the scope of the journal. The journal includes papers from all engineering disciplines that deal with material behaviour and degradation under load, structural design and measurement techniques. Although the thrust of the journal is experimental, numerical simulations and validation are included in the coverage. Strain welcomes papers that deal with novel work in the following areas: experimental techniques non-destructive evaluation techniques numerical analysis, simulation and validation residual stress measurement techniques design of composite structures and components impact behaviour of materials and structures signal and image processing transducer and sensor design structural health monitoring biomechanics extreme environment micro- and nano-scale testing method.
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