Estimating manufacturing parameters of additively manufactured 316L steel cubes using ultrasound fingerprinting

Shafaq Zia, J. Carlson, Pia Åkerfeldt, Pragya Mishra
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Abstract

Metal based additive manufacturing techniques such as laser powder bed fusion (LPBF) can produce parts with complex designs as compared to traditional manufacturing. The quality is affected by defects such as porosity or lack of fusion that can be reduced by online control of manufacturing parameters. The conventional way of testing is time consuming and does not allow the process parameters to be linked to the mechanical properties. In this paper, ultrasound data along with supervised learning is used to estimate the manufacturing parameters of 316L steel cubes. Nine cubes with varying manufacturing parameters (speed, hatch distance and power) are examined with ultrasound using focused transducers. The volumetric energy density (VED) is calculated from the process parameters for each cube. The ultrasound scans are performed in a dense grid in the built and transverse direction. The ultrasound data is used in partial least square regression algorithm by labelling the data with speed, hatch distance and power and then by labelling the same data with the VED. These models are computed for both measurement directions and as the samples are anisotropic, we see different behaviours of estimation in each direction. The model is then validated with an unknown set from the same 9 cubes. The manufacturing parameters are estimated and validated with a good accuracy making way for online process control.
利用超声指纹技术估算增材制造316L钢立方体的制造参数
与传统制造技术相比,激光粉末床熔融(LPBF)等金属基增材制造技术可以生产具有复杂设计的零件。质量受到气孔或熔合不足等缺陷的影响,这些缺陷可以通过在线控制制造参数来减少。传统的测试方法既耗时又不允许将工艺参数与机械性能联系起来。本文采用超声数据和监督学习方法对316L钢立方体的制造参数进行估计。用聚焦换能器用超声波检查了具有不同制造参数(速度,孵化距离和功率)的九个立方体。根据每个立方体的工艺参数计算体积能量密度(VED)。超声扫描在内置和横向方向上的密集网格中进行。超声数据采用偏最小二乘回归算法,先用速度、孵化距离和功率标记数据,再用VED标记相同的数据。这些模型是为两个测量方向计算的,由于样本是各向异性的,我们在每个方向上看到不同的估计行为。然后用来自相同9个立方体的未知集合验证该模型。对加工参数进行了估计和验证,为在线过程控制提供了良好的精度。
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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