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IDENTIFICATION AND CHARACTERIZATION OF SUBGRAIN FEATURES IN 3D EBSD DATA

机译:3D EBSD数据中子粒特征的识别与表征

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Plastic deformation generates cellular/subgrain structures in many types of metals, and these features have a pronounced influence on mechanical behavior as well as subsequent recovery and recrystallization processes. These features can be observed by electron backscatter diffraction (EBSD) but are challenging to identify automatically. For example, no threshold misorientation angle may adequately capture gradual orientation transitions without noise dominating the result. A more robust technique, fast multiscale clustering (FMC), partitions a data set with attention given to local and global patterns. With FMC, individual data points are combined iteratively into clusters. To determine similarity of clusters during the aggregation process, the method requires an appropriate distance metric. We have adapted FMC to EBSD data, quantifying distance with misorientation and using a novel variance function to accommodate quaternion data. This adaptation is capable of segmenting based on subtle and gradual variation as well as on sharp boundaries within the data, while maintaining linear run time. The method is useful for analysis of any EBSD data set for which the structure of grains or subgrain features is required, and it has been incorporated into the open-source quantitative texture analysis package MTEX. The sensitivity of a segmentation is controlled by a single parameter, analogous to the thresholding angle. To balance the desired identification of subtle boundaries with erroneous oversegmentation, a method to quantitatively optimize this free parameter has been developed. Since the FMC process does not depend on the spatial distribution of points, data can be in either 2D or 3D and organized with any geometry. In fact, the data points may have arbitrary placement, as is the case after correcting for instrument drift. Often investigation of the relationship between structure and formation mechanisms requires extraction of coherent surfaces from cluster volumes. FMC has been further modified to group closed 3D boundaries into distinct surfaces based on local normals of a triangulated surface. We demonstrate the capabilities of this technique with application to 3D EBSD data with subtle boundaries from a deformed Ni single crystal sample. In addition, a recrystallizing steel microstructure with three magnitudes of boundaries is analyzed to show how FMC can be used to characterize both sharp grain boundaries and more subtle features within the same data set.
机译:塑性变形在许多类型的金属中产生细胞/子粒结构,这些特征对机械行为以及随后的回收和再结晶过程具有明显的影响。电子反向散射衍射(EBSD)可以观察到这些特征,但是自动识别挑战。例如,没有阈值错位角度可以充分捕获逐渐取向转换而没有噪声占据主导结果。一种更强大的技术,快速的多尺度聚类(FMC),将数据集分区为本地和全局模式。对于FMC,各个数据点迭代地组合成簇。为了在聚合过程中确定群集的相似性,该方法需要适当的距离度量。我们已经调整了FMC到EBSD数据,量化了与错误的距离,并使用新颖的方差函数来适应四元数数据。这种自适应能够基于微妙和逐渐变化以及数据内的尖端进行分割,同时保持线性运行时间。该方法可用于分析所需的任何EBSD数据集或需要所需的谷粒或子粒特征的数据集,并且它已被纳入开源定量纹理分析包MTEX。分割的灵敏度由单个参数控制,类似于阈值角度。为了平衡所需的微妙边界识别,使用错误的过度解除,已经开发了一种定量优化该免费参数的方法。由于FMC过程不依赖于点的空间分布,因此数据可以是2D或3D,并用任何几何组织组织。事实上,数据点可能具有任意放置,就像纠正仪器漂移之后就像案例一样。经常调查结构和地层机制之间的关系需要从簇体积中提取相干表面。已经进一步修改了FMC以基于三角形表面的本地法线将闭合的3D边界分组到不同的表面上。我们展示了这种技术在应用于3D EBSD数据的应用中,具有来自变形的Ni单晶样本的微妙边界。另外,分析了具有三个大小的边界的重结晶钢微结构,以显示FMC如何用于表征尖锐的晶界和相同数据集中的更微妙的特征。

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