Fundamental requirements of a machine learning operations platform for industrial metal additive manufacturing

被引:1
|
作者
Safdar, Mutahar [1 ,2 ]
Paul, Padma Polash [3 ]
Lamouche, Guy [2 ]
Wood, Gentry [4 ]
Zimmermann, Max [5 ]
Hannesen, Florian [6 ]
Bescond, Christophe [2 ]
Wanjara, Priti [2 ]
Zhao, Yaoyao Fiona [1 ]
机构
[1] McGill Univ, Dept Mech Engn, Montreal, PQ H3A 0C3, Canada
[2] Natl Res Council Canada, Montreal, PQ H3T 1J4, Canada
[3] Braintoy AI, Calgary, AB T3P 0B9, Canada
[4] Div Apollo Machine & Welding Ltd, Apollo Clad Laser Cladding, Leduc, AB, Canada
[5] Faunhofer Inst Laser Technol ILT, D-52074 Aachen, Germany
[6] DV Syst GmbH, BCT SOerungs, D-44263 Dortmund, Germany
关键词
Computing infrastructure; Data analytics and machine learning; Machine learning operations platform; Fundamental and functional requirements; Industrial additive manufacturing; DEFECT DETECTION; CHALLENGES; FUTURE;
D O I
10.1016/j.compind.2023.104037
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Metal-based Additive Manufacturing (AM) can realize fully dense metallic components and thus offers an opportunity to compete with conventional manufacturing based on the unique merits possible through layer-by-layer processing. Unsurprisingly, Machine Learning (ML) applications in AM technologies have been increasingly growing in the past several years. The trend is driven by the ability of data-driven techniques to support a range of AM concerns, including in-process monitoring and predictions. However, despite numerous ML applications being reported for different AM concerns, no framework exists to systematically manage these ML models for AM operations in the industry. Moreover, no guidance exists on fundamental requirements to realize such a cross-disciplinary platform. Working with experts in ML and AM, this work identifies the fundamental requirements to realize a Machine Learning Operations (MLOps) platform to support process-based ML models for industrial metal AM (MAM). Project-level activities are identified in terms of functional roles, processes, systems, operations, and interfaces. These components are discussed in detail and are linked with their respective requirements. In this regard, peer-reviewed references to identified requirements are made available. The re-quirements identified can help guide small and medium enterprises looking to implement ML solutions for AM in the industry. Challenges and opportunities for such a system are highlighted. The system can be expanded to include other lifecycle phases of metallic and non-metallic AM.
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页数:22
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