Powder Bed Fusion via Machine Learning-Enabled Approaches

Utkarsh Chadha, S. Selvaraj, Abel Saji Abraham, Mayank Khanna, Anirudh Mishra, Isha Sachdeva, Swati Kashyap, S. J. Dev, R. S. Swatish, Ayushma Joshi, Simar Kaur Anand, Addisalem Adefris, R. Kumar, Jayakumar Kaliappan, S. Dhanalakshmi
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引用次数: 2

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.
通过机器学习实现粉末床融合
与其他增材制造技术相比,粉末床熔融(PBF)适用于制造各种复杂零件的金属打印过程中使用的各种金属材料。PBF工艺有DMLS(直接金属激光烧结)、EBM(电子束熔化)、SHS(选择性热烧结)、SLM(选择性激光熔化)和SLS(选择性激光烧结)等几种变体。为了使PBF发挥其最大潜力,机器学习(ML)算法与合适的材料一起使用,以经济有效地实现目标。回顾了神经网络的各种应用,包括ann、cnn、rnn和其他流行的技术,如KNN、SVM和GP,并讨论了未来的挑战。列举了一些专用算法:GAN、SeDANN、SCNN、K-means、PCA等。本文从材料、特征、工艺参数、应用、优缺点等方面介绍了这些技术的发展历程、现状、挑战和前景,阐述了它们的意义,并提供了对它们的深入理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.80
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