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Prediction of microstructural defects in additive manufacturing from powder bed quality using digital image correlation

机译:利用数字图像相关预测粉床质量的添加剂制造中的微观结构缺陷

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Additive manufacturing (AM) of metal components offers tremendous promise to create complex parts with limited supervision. However, process quality and widespread acceptance are currently stymied by the formation of microstructural defects and residual stresses. In particular, lack-of-fusion (LoF) and keyhole defects frequently occur during AM production dependent on process conditions and can severely limit mechanical performance if not corrected. The effects of powder layer quality, where variations from the ideal have the potential to significantly alter defect formation, have not been thoroughly investigated in the literature. In this work, we employ a novel method incorporating in situ three-dimensional digital image correlation (3D-DIC) imaging of the powder bed in-process to identify and quantify the severity of powder bed irregularities during processing. Anomalies in the powder bed were detected, and their geometries quantified, layer by layer using the 3D-DIC analysis for parts produced at multiple energy density levels. Ex situ characterization via scanning electron microscopy identified the locations of physical defects for comparison to DIC data. The quantified powder bed 3D-DIC data, alongside ex situ identification of physical defect locations, was then fed into a Naive-Bayes classification algorithm to predict the likelihood of physical defect formation based on the severity of in-process powder bed errors. This methodology has the potential to be used to predict physical defect formation based on detected powder spreading errors in-process, prior to the formation of many microstructural defects.
机译:金属部件的添加剂制造(AM)提供了具有有限监督的复杂部件的巨大承诺。然而,目前通过形成微观结构缺陷和残余应力的流程质量和广泛的接受。特别地,在AM生产过程中缺乏融合(LOF)和钥匙孔缺陷在依赖于工艺条件,并且如果未校正,可以严重限制机械性能。粉末层质量的影响,其中来自理想的变化具有显着改变缺陷的形成,在文献中尚未彻底研究。在这项工作中,我们采用了一种新的方法,该方法包括粉末床的原位三维数字图像相关(3D-DIC)成像在过程中识别和量化加工过程中粉末床不规则的严重程度。检测粉末床中的异常,并且它们使用3D-DIC分析来定量它们的几何形状,用于以多个能量密度水平产生的部件。通过扫描电子显微镜进行原位表征,确定了与DIC数据相比的物理缺陷的位置。然后,定量的粉末床3D-DIC数据以及物理缺陷位置旁边的数据涉及到幼稚贝叶斯分类算法中,以预测基于过程中的内粉床误差的严重性的物理缺陷形成的可能性。该方法在形成许多微观结构缺陷之前,该方法具有基于检测到的粉末扩散误差来预测物理缺陷形成。

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