A critical review on applications of artificial intelligence in manufacturing

被引:0
作者
Omkar Mypati
Avishek Mukherjee
Debasish Mishra
Surjya Kanta Pal
Partha Pratim Chakrabarti
Arpan Pal
机构
[1] University of Nottingham,Rolls Royce University Technology Centre in Manufacturing and On
[2] Indian Institute of Technology Kharagpur,Wing Technology, Faculty of Engineering
[3] University of Connecticut,Advanced Technology Development Centre
[4] Indian Institute of Technology Kharagpur,Pratt & Whitney Institute of Advanced Systems Engineering
[5] Indian Institute of Technology Kharagpur,Department of Mechanical Engineering
[6] TATA Consultancy Services Research and Innovation,Department of Computer Science and Engineering
来源
Artificial Intelligence Review | 2023年 / 56卷
关键词
Manufacturing; Artificial intelligence; Machine learning; Deep learning; Industry 4.0; Cognitive manufacturing;
D O I
暂无
中图分类号
学科分类号
摘要
The fourth industrial revolution, Industry 4.0, has brought internet, artificial intelligence (AI), and machine learning (ML) concepts into manufacturing. There is an  immediate need to understand the capabilities of AI and ML and how they can be implemented in manufacturing domains. This article presents a detailed survey of AI algorithms and their use in manufacturing. The article treats casting, forming, machining, welding, additive manufacturing (AM), and supply chain management (SCM) as six manufacturing verticals. The horizontals in each vertical are the descriptions including, the evolution of each process from the mechanization era to the present-day scenario, and developments in the automation of processes by processing signal and image information and applying ML and AI algorithms. The evolution of robotics and cloud-based technologies is also discussed. The critical review gives a realistic view of manufacturing automation and benefits of AI. Further, the article discusses several manufacturing use cases where AI and ML algorithms are deployed. As a future research direction, human-like intelligence is introduced highlighting the necessity of cognitive skills in manufacturing. In a nutshell, a reader can logically explain why, when, and how far AI will define complete manufacturing.
引用
收藏
页码:661 / 768
页数:107
相关论文
共 986 条
[1]  
Abbas AT(2014)CNC machining path planning optimization for circular hole patterns via a hybrid ant colony optimization approach Mech Eng Res 42 3055-3076
[2]  
Hamza K(2004)Feasibility study of the tactical design justification for reconfigurable manufacturing systems using the fuzzy analytical hierarchical process Int J Prod Res 10 1009-1019
[3]  
Aly MF(2017)Data-driven weld nugget width prediction with decision tree algorithm Procedia Manuf 45 8969-8980
[4]  
Abdi MR(2022)A Critical survey of EEG-based BCI systems for applications in industrial internet of things IEEE Commun Surv Tutorials 6 065002-130
[5]  
Labib AW(2020)Estimation of casting mold interfacial heat transfer coefficient in pressure die casting process by artificial intelligence methods Arab J Sci Eng 17 115-41
[6]  
Ahmed F(2019)Optimization of wear behaviour using Taguchi and ANN of fabricated aluminium matrix nanocomposites by two-step stir casting Mater Res Express 79 27-106
[7]  
Kim K-Y(2020)Using Random forest to interpret out-of-control signals Acta Polytech Hungarica 32 91-51
[8]  
Ajmeria R(2015)A comparative study on modelling material removal rate by ANFIS and polynomial methods in electrical discharge machining process Comput Ind Eng 48 46-509
[9]  
Mondal M(2008)U.S. manufacturing aggregate energy intensity decomposition: the application of multivariate regression analysis Int J Energy Res 67 504-178
[10]  
Banerjee R(2015)Path planning and motion coordination for multi-robots system using probabilistic neuro-fuzzy IFAC-PapersOnLine 2 164-362