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Title:

Process Parameter Prediction in Laser Powder Bed Fusion Using an Artificial Neural Network

Document type:
Zeitschriftenaufsatz
Author(s):
Nudelis, Natan; Mayr, Peter
Abstract:
Pores are the inevitable concomitant in the current state of laser powder bed fusion (PBFLB/M) of AlSI10Mg components. Various pore characteristics, such as pore size and pore shape, influence the quality and affect the intended functionality of the component. Today, the experimental effort to find the appropriate process parameters for additive manufacturing (AM) results in high costs and long time-to-market. Pore formation is highly dependent on the applied process parameters. Consequently, po...     »
Keywords:
Laser powder bed fusion, AlSi10Mg, Computed tomography, Pore classification, Artificial neural network
Journal title:
Key Engineering Materials
Year:
2023
Journal volume:
964
Pages contribution:
59-64
Reviewed:
ja
Language:
en
Fulltext / DOI:
doi:10.4028/p-rl51ni
WWW:
https://www.scientific.net/KEM.964.59
Publisher:
Trans Tech Publications, Ltd.
E-ISSN:
1662-9795
Submitted:
23.05.2023
Accepted:
12.09.2023
Date of publication:
23.11.2023
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