Machine learning techniques in additive manufacturing: a state of the art review on design, processes and production control

被引:0
作者
Sachin Kumar
T. Gopi
N. Harikeerthana
Munish Kumar Gupta
Vidit Gaur
Grzegorz M. Krolczyk
ChuanSong Wu
机构
[1] Indian Institute of Science (IISc) Bengaluru,Department of Mechanical Engineering
[2] Indian Institute of Technology (IIT) Palakkad,Department of Mechanical Engineering
[3] Nitte Meenakshi Institute of Technology Bengaluru,Department of Mechanical Engineering
[4] Opole University of Technology,Faculty of Mechanical Engineering
[5] Indian Institute of Technology (IIT) Roorkee,Department of Mechanical and Industrial Engineering
[6] Shandong University Jinan,MOE Key Lab for Liquid
来源
Journal of Intelligent Manufacturing | 2023年 / 34卷
关键词
Manufacturing; Industry 4.0; Machine learning; Additive manufacturing; Smart manufacturing;
D O I
暂无
中图分类号
学科分类号
摘要
For several industries, the traditional manufacturing processes are time-consuming and uneconomical due to the absence of the right tool to produce the products. In a couple of years, machine learning (ML) algorithms have become more prevalent in manufacturing to develop items and products with reduced labor cost, time, and effort. Digitalization with cutting-edge manufacturing methods and massive data availability have further boosted the necessity and interest in integrating ML and optimization techniques to enhance product quality. ML integrated manufacturing methods increase acceptance of new approaches, save time, energy, and resources, and avoid waste. ML integrated assembly processes help creating what is known as smart manufacturing, where technology automatically adjusts any errors in real-time to prevent any spillage. Though manufacturing sectors use different techniques and tools for computing, recent methods such as the ML and data mining techniques are instrumental in solving challenging industrial and research problems. Therefore, this paper discusses the current state of ML technique, focusing on modern manufacturing methods i.e., additive manufacturing. The various categories especially focus on design, processes and production control of additive manufacturing are described in the form of state of the art review.
引用
收藏
页码:21 / 55
页数:34
相关论文
共 599 条
  • [1] Acayaba GMA(2015)Prediction of surface roughness in low speed turning of AISI316 austenitic stainless steel CIRP Journal of Manufacturing Science Technology 11 62-67
  • [2] de Escalona PM(2014)Estimating the uncertainty of tensile strength measurement for a photocured material produced by additive manufacturing Metrological Measuring System 21 553-560
  • [3] Adamczak S(2007)A Naïve-Bayes classifier for damage detection in engineering materials Materials and Design 28 2379-2386
  • [4] Bochnia J(2019)3D printing of nonplanar layers for smooth surface generation IEEE International Conference Automative Science Enginerring 248 118475-20
  • [5] Kaczmarska B(2020)A novel support vector regression (SVR) model for the prediction of splice strength of the unconfined beam specimens Construction Building Materials 2 1-175
  • [6] Addin O(2018)Big data, 3D printing technology, and industry of the future International Journal of Big Data and Anal Healthcare 29 101313-362
  • [7] Sapuan SM(2020)An approach to predict the isobaric specific heat capacity of nitrides/ethylene glycol-based nanofluids using support vector regression Journal of Energy Storage 31 162-746
  • [8] Mahdi E(2012)Intelligent Naïve Bayes-based approaches for Web proxy caching Knowledge-Based System 27 353-328
  • [9] Othman M(2019)Simple method to construct process maps for additive manufacturing using a support vector machine Additive Manufacturing 27 735-14
  • [10] Ahlers D(2007)Measuring the economic effectiveness of flexible automation: A new approach International Journal of Production Research. 66 323-454