International Journal of Extreme Manufacturing, Volume. 6, Issue 6, 65601(2024)
An integrated fuzzy logic and machine learning platform for porosity detection using optical tomography imaging during laser powder bed fusion
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Ero Osazee, Taherkhani Katayoon, Hemmati Yasmine, Toyserkani Ehsan. An integrated fuzzy logic and machine learning platform for porosity detection using optical tomography imaging during laser powder bed fusion[J]. International Journal of Extreme Manufacturing, 2024, 6(6): 65601
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Received: Mar. 28, 2024
Accepted: Feb. 13, 2025
Published Online: Feb. 13, 2025
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