Zhang Jun, Wu Jinfeng, Zhao Xin, Yuan Shuxian, Ma Guanbing, Li Jiaqi, Dai Ting, Chen Huaidong, Yang Bing, Ding Hui
Appl Opt. 2020 Nov 20;59(33):10380-10388. doi: 10.1364/AO.405284.
Defects or discontinuities are inevitable during the melting and consolidation process of metal additive manufacturing. Online inspection of microdefects during the processing of layer-by-layer fusion is urgently needed for quality control. In this study, the laser ultrasonic C-scan imaging system is established to detect the surface defects of selective laser melting (SLM) samples that have a different surface roughness. An autosizing method based on the maximum correlation coefficient and lag time is proposed to accurately measure the defect length. The influences of the surface roughness on the laser ultrasound signal-to-noise ratio distribution and defect sizing accuracy are also studied. The results indicate that the proposed system can detect notches with a depth of 50 µm and holes with a diameter of 50 µm, comparable in size to raw powder particles. The average error for the length measurement can reach 1.5% if the notch is larger than 2 mm. Meanwhile, the sizing error of a 1 mm length notch is about 9%. In addition, there is no need to remove the rough surface of the as-built SLM samples during the detection process. Hence, we propose that the laser ultrasonic imaging system is a potential method for online inspection of metal additive manufacturing.
在金属增材制造的熔化和固结过程中,缺陷或不连续性是不可避免的。为了进行质量控制,迫切需要在逐层熔合过程中对微缺陷进行在线检测。在本研究中,建立了激光超声C扫描成像系统,以检测具有不同表面粗糙度的选择性激光熔化(SLM)样品的表面缺陷。提出了一种基于最大相关系数和滞后时间的自动尺寸测量方法,以精确测量缺陷长度。还研究了表面粗糙度对激光超声信噪比分布和缺陷尺寸测量精度的影响。结果表明,所提出的系统能够检测深度为50 µm的缺口和直径为50 µm的孔洞,其尺寸与原始粉末颗粒相当。如果缺口大于2 mm,长度测量的平均误差可达1.5%。同时,1 mm长缺口的尺寸误差约为9%。此外,在检测过程中无需去除增材制造SLM样品的粗糙表面。因此,我们认为激光超声成像系统是一种用于金属增材制造在线检测的潜在方法。