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ISBN: 978-3-95884-098-0

Publication date:
Open Access verfügbar

Machine Learning for Additive Manufacturing and Hot Isostatic Pressing based on Quality Characteristics

Natan Nudelis ORCID iD
Peter Mayr (Hrsg.)

Additive manufacturing (AM) using laser powder bed fusion (PBF-LB/M) has many advantages such as design freedom and sustainability. However, AM also suffers from internal defects that limit its functionality. Furthermore, post-treatment methods like hot isostatic pressing (HIP) promise to enhance material properties. This work aims to develop a machine learning model using artificial neural networks, to predict PBF-LB/M or HIP process parameters based on quality characteristics.

Buchdetails
. Auflage
Editorial Program: TUM.UP-THESES
ISSN der Reihe (Digitalausgabe): 3052-1181
Series: TUM Series on Materials Engineering (MAT) 01
ISSN der Reihe (Printausgabe): 3052-1173
Fachbereich:
TUM School of Engineering and Design
Materials Engineering
Werkstofftechnik der Additiven Fertigung
Publishing Place: München
Language:
Number of Pages: 121
Format: DIN A5
Product Type: Buch (Softcover)
Price: 29.00€
Printausgabe lieferbar