Laser ultrasonic detection for defects of LAM components based on variable time window intensity mapping with adaptive 2σ thresholds

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 defe...

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Bibliographic Details
Published inPhotoacoustics (Munich) Vol. 39; p. 100638
Main Authors Wan, Zhuangzhuang, Bai, Xue, Ma, Jian, Xu, Zhaowen, Liu, Yaolu
Format Journal Article
LanguageEnglish
Published Germany Elsevier GmbH 01.10.2024
Elsevier
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Summary: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.
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ISSN:2213-5979
2213-5979
DOI:10.1016/j.pacs.2024.100638