Quantification and prediction of lack-of-fusion porosity in the high porosity regime during laser powder bed fusion of Ti-6Al-4V

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Publication Details

Author listPromoppatum P., Srinivasan R., Quek S.S., Msolli S., Shukla S., Johan N.S., van der Veen S., Jhon M.H.

PublisherElsevier

Publication year2022

JournalJournal of Materials Processing Technology (0924-0136)

Volume number300

ISSN0924-0136

eISSN1873-4774

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85119196611&doi=10.1016%2fj.jmatprotec.2021.117426&partnerID=40&md5=169b9f5b28c6a989fee355ee4631c6a1

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

Although lack-of-fusion porosity due to incomplete melting of powder can limit the mechanical properties of additively manufactured metals, quantification and prediction of these defects remains challenging. We compare three common strategies to measure porosity: the Archimedes, micrograph-based, and micro-computed tomography approaches. We find that while these methods work equally well at low void fraction, their predictions diverge at higher void fractions (> 5 %). We find that the disparity comes since the Archimedes method measures the total amount of solid in the sample, while micrograph-based approach neglects loose powder trapped inside the samples that can be removed during the preparation process. We conclude that these two methods make use of divergent definitions of porosity. While the Archimedes method measures a “total porosity” defined by the total volume fraction of void in the material, the micrograph method measures an “effective porosity” that only accounts for the continuous material. On the other hand, the resolution of micro-computed tomography is limited by voxel size, leading to ambiguity of trapped powder being identified as solid or void. Consequently, the number density of defects from micro-computed tomography are noticeably smaller than that from micrograph-based approach. A geometric model for porosity prediction is implemented and used to evaluate different models for melt pool geometry. Our numerical predictions of melt pool profiles are surprisingly insensitive to our choice of heat source models. Finally, an analytical geometric model is developed for fast estimation of total and effective porosities and shows good agreement with both numerical simulations and experimental measurement. © 2021 Elsevier B.V.


Keywords

ArchimedesLack-of-fusion porosityMicro-computed tomographyMicrographs


Last updated on 2023-23-09 at 07:40