Abstract
In today's world, artificial intelligence (AI) is widely considered one of the highly innovative technologies. Usage of AI has been implemented nearly in all sectors such as manufacturing, R&D, education, smart cities, agriculture, etc. The new era of the Internet plus AI has resulted in the high-speed evolution of the central technologies, analyzed based on research regarding recent artificial intelligence (AI) applications in smart manufacturing. It is necessary to set up an industry that must be flexible with turbulent changes and adequately manage highly skilled employees and workers to design a more suitable working atmosphere for both men and technology. Google Scholar is widely used to explore several keywords and their combinations and search and examine the relevant articles, papers, journals, and study data for conducting this manuscript. The recent progress in intelligent manufacturing is discussed by observing the outlook of intelligent manufacturing technology and its applications. Lastly, the study talks about the scope of AI and how it is implemented in today's smart manufacturing sector of India, focusing on its present status, limitations, and suggestions for overcoming problems.
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Choudhury, A.S., Halder, T., Basak, A., Chakravarty, D. (2022). Implementation of Artificial Intelligence (AI) in Smart Manufacturing: A Status Review. In: Mehra, R., Meesad, P., Peddoju, S.K., Rai, D.S. (eds) Computational Intelligence and Smart Communication. ICCISC 2022. Communications in Computer and Information Science, vol 1672. Springer, Cham. https://doi.org/10.1007/978-3-031-22915-2_7
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