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Powder Bed Fusion via Machine Learning-Enabled Approaches

Author

Listed:
  • Utkarsh Chadha
  • Senthil Kumaran Selvaraj
  • Abel Saji Abraham
  • Mayank Khanna
  • Anirudh Mishra
  • Isha Sachdeva
  • Swati Kashyap
  • S. Jithin Dev
  • R. Srii Swatish
  • Ayushma Joshi
  • Simar Kaur Anand
  • Addisalem Adefris
  • R. Lokesh Kumar
  • Jayakumar Kaliappan
  • S. Dhanalakshmi
  • Yu Zhou

Abstract

Powder bed fusion (PBF) applies to various metallic materials used in the metal printing process of building a wide range of complex parts compared to other AM technologies. PBF process has several variants such as DMLS (direct metal laser sintering), EBM (electron beam melting), SHS (selective heat sintering), SLM (selective laser melting), and SLS (selective laser sintering). For PBF to reach its maximum potential, machine learning (ML) algorithms are used with suitable materials to achieve goals cost-effectively. Various applications of neural networks, including ANNs, CNNs, RNNs, and other popular techniques such as KNN, SVM, and GP were reviewed, and future challenges were discussed. Some special-purpose algorithms were listed as follows: GAN, SeDANN, SCNN, K-means, PCA, etc. This review presents the evolution, current status, challenges, and prospects of these technologies in terms of material, features, process parameters, applications, advantages, disadvantages, etc., to explain their significance and provide an in-depth understanding of the same.

Suggested Citation

  • Utkarsh Chadha & Senthil Kumaran Selvaraj & Abel Saji Abraham & Mayank Khanna & Anirudh Mishra & Isha Sachdeva & Swati Kashyap & S. Jithin Dev & R. Srii Swatish & Ayushma Joshi & Simar Kaur Anand & Ad, 2023. "Powder Bed Fusion via Machine Learning-Enabled Approaches," Complexity, Hindawi, vol. 2023, pages 1-25, April.
  • Handle: RePEc:hin:complx:9481790
    DOI: 10.1155/2023/9481790
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