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Abstract
Machine learning (ML) has undeniably turned into a mainstream idea by enhancing any system’s throughput by allowing a more intelligent usage of materials and processes and managing their resultant properties. In industrial applications, usage of ML not only decreases the lead time of the manufacturing process involved but because of iterative steps of process parameters optimization, it also increases the quality and properties of the parts produced. Furthermore, ML provides an opportunity for creating completely or partially autonomous frameworks. A subset of ML, i.e., deep learning (DL), has capabilities of interpreting data in a layered pattern with little or no requirement of the labeled data for training. On the other hand, additive manufacturing (AM) offers benefits in designing intricated 3D shapes and gaining well-defined control over processing parameters, which eventually control the quality of a final product. This review discusses the utilization of ML techniques in various areas of AM ranging from the selection of material and alloy development to AM process parameter optimization. ML data training also helps in establishing the relation between AM process-structure–property relationship and defect detection in the printed objects. Consecutive steps of the process, i.e., data gathering, population establishment, model selection, training, and application, have been discussed. Also, certain challenges associated with the long-term incorporation of ML in the AM have been identified and their probable solutions have been provided.
Details
1 Central Michigan University, School of Engineering & Technology, Mount Pleasant, USA (GRID:grid.253856.f) (ISNI:0000 0001 2113 4110)
2 The University of British Columbia, Deparment of Materials Engineering, Vancouver, Canada (GRID:grid.17091.3e) (ISNI:0000 0001 2288 9830)
3 Sungkyunkwan University, School of Advanced Materials Science & Engineering, Suwon, South Korea (GRID:grid.264381.a) (ISNI:0000 0001 2181 989X)
4 Austin Peay State University, Department of Engineering Technology, Clarksville, USA (GRID:grid.252567.1) (ISNI:0000 0001 2285 5083)





