Machine learning–aided real-time detection of keyhole pore generation in laser powder bed fusion
Author(s) -
Zhongshu Ren,
Lin Gao,
Samuel J. Clark,
Kamel Fezzaa,
Pavel Shevchenko,
Ann Choi,
Wes Everhart,
Anthony D. Rollett,
Lianyi Chen,
Tao Sun
Publication year - 2023
Publication title -
science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 12.556
H-Index - 1186
eISSN - 1095-9203
pISSN - 0036-8075
DOI - 10.1126/science.add4667
Subject(s) - keyhole , porosity , materials science , fusion , laser , multiphysics , synchrotron , optics , composite material , physics , thermodynamics , philosophy , linguistics , finite element method , welding
Porosity defects are currently a major factor that hinders the widespread adoption of laser-based metal additive manufacturing technologies. One common porosity occurs when an unstable vapor depression zone (keyhole) forms because of excess laser energy input. With simultaneous high-speed synchrotron x-ray imaging and thermal imaging, coupled with multiphysics simulations, we discovered two types of keyhole oscillation in laser powder bed fusion of Ti-6Al-4V. Amplifying this understanding with machine learning, we developed an approach for detecting the stochastic keyhole porosity generation events with submillisecond temporal resolution and near-perfect prediction rate. The highly accurate data labeling enabled by operando x-ray imaging allowed us to demonstrate a facile and practical way to adopt our approach in commercial systems.
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