Publication | Open Access
Optimization of Process Parameters for Powder Bed Fusion Additive Manufacturing by Combination of Machine Learning and Finite Element Method: A Conceptual Framework
171
Citations
28
References
2018
Year
Finite Element MethodEngineeringPowder MetallurgyMachine LearningIndustrial EngineeringProcess ParametersMechanical EngineeringDirected Energy DepositionSystems EngineeringProduction EngineeringAdvanced ManufacturingProcessing And ManufacturingManufacturing EngineeringAi-based Process OptimizationProcess Optimization3D PrintingPowder Bed Fusion
In addition to prototyping, Powder Bed Fusion (PBF) AM processes have lately been more widely used to manufacture end-use parts. These changes lead to necessity of higher requirements to quality of a final product. Optimization of process parameters is one of the ways to achieve desired quality of a part. Finite Element Method (FEM) and machine learning techniques are applied to evaluate and optimize AM process parameters. While FEM requires specific information, Machine Learning is based on big amounts of data. This paper provides a conceptual framework on combination of mathematical modelling and Machine Learning to avoid these issues.
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