首页|Local prediction of Laser Powder Bed Fusion porosity by short-wave infrared imaging thermal feature porosity probability maps
Local prediction of Laser Powder Bed Fusion porosity by short-wave infrared imaging thermal feature porosity probability maps
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NSTL
Elsevier
Local thermal history can significantly vary in parts during metal Additive Manufacturing (AM), leading to local defects. However, the sequential layer-by-layer nature of AM facilitates in-situ part voxelmetric observations that can be used to detect and correct these defects for part qualification and quality control. The challenge is to relate this local radiometric data with local defect information to estimate process error likelihood in future builds. This paper uses a Short-Wave Infrared (SWIR) camera to record the temperature history for parts manufactured with Laser Powder Bed Fusion (LPBF) processes. The porosity from a cylindrical specimen is measured by ex-situ micro-computed tomography (mu CT). Specimen data from the SWIR camera, combined with the mu CT data, are used to generate thermal feature-based porosity probability maps. The porosity predictions made by various SWIR thermal feature-porosity probability maps of a specimen with a complex geometry are scored against the true porosity obtained via mu CT. The receiver operating characteristic curves constructed from the predictions for the complex sample demonstrate the porosity probability mapping methodology's potential for in-situ based porosity detection.
Laser Powder Bed FusionSWIRPorosity detectionReceiver operating characteristic
Lough, Cody S.、Liu, Tao、Wang, Xin、Brown, Ben、Landers, Robert G.、Bristow, Douglas A.、Drallmeier, James A.、Kinzel, Edward C.
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Missouri Univ Sci & Technol
Kansas City Natl Secur Campus, Kansas City, MO 64147 USA