Wan Zhuangzhuang, Bai Xue, Ma Jian, Xu Zhaowen, Liu Yaolu
Laser Institute, Qilu University of Technology (Shandong Academy of Sciences), Jinan 250104, China.
College of Aerospace Engineering, Chongqing University, Chongqing 400044, China.
Photoacoustics. 2024 Aug 6;39:100638. doi: 10.1016/j.pacs.2024.100638. eCollection 2024 Oct.
Metallurgical defects in metal laser additive manufacturing (LAM) are inevitable due to complex non-equilibrium thermodynamics. A laser ultrasonic system was designed for detecting surface/near-surface defects in the layer-by-layer LAM process. An approach was proposed for ultrasonic imaging of defects based on variable time window intensity mapping with adaptive 2σ threshold denoising. The Gaussian mixture model hypothesis and expectation-maximization algorithm can automatically differentiate between components dominated by defects and background noises, thereby providing an adaptive threshold that accommodates detection environments and surface roughness levels. Results show that the ultrasonic wave reflection at defect boundaries diminishes far-field ultrasonic intensity upon pulsed laser irradiation on surface defects, enabling defect size and location characterization. This method is applicable to LAM samples with a significant surface roughness of up to 37.5 μm. It can detect superficial and near-surface defects down to 0.5 mm in diameter and depth, making it significant for online defect detection in additive manufacturing.
由于复杂的非平衡热力学,金属激光增材制造(LAM)中的冶金缺陷不可避免。设计了一种激光超声系统,用于检测逐层LAM过程中的表面/近表面缺陷。提出了一种基于可变时间窗口强度映射和自适应2σ阈值去噪的缺陷超声成像方法。高斯混合模型假设和期望最大化算法可以自动区分由缺陷和背景噪声主导的成分,从而提供适应检测环境和表面粗糙度水平的自适应阈值。结果表明,在表面缺陷上进行脉冲激光照射时,缺陷边界处的超声波反射会降低远场超声强度,从而能够表征缺陷的尺寸和位置。该方法适用于表面粗糙度高达37.5μm的LAM样品。它可以检测直径和深度低至0.5mm的表面和近表面缺陷,这对于增材制造中的在线缺陷检测具有重要意义。