Autors: Ivanova, M. S., Ilieva, R. I.
Title: Understanding the Impact of Data Collection and Artificial Intelligence Usage in the Context of Electronics Manufacturing
Keywords: artificial intelligence, company managers, data analytics, decision making, education, manufacturing in electronics, smart manufacturing

Abstract: The implementation of smart manufacturing in electronics is based on the use of a number of technologies, including the use of machine learning and artificial intelligence (AI). Company managers must be able to understand both the advantages and disadvantages of these new technologies in order to organize efficient manufacturing process and creation of high-quality products. The role of training institutions is particularly important in preparing competent and responsible managers who can correctly make decisions on the extent and in what way to implement AI-based solutions. The aim of the paper is to present a survey regarding the opinions of students and experts on the use of AI in the electronics manufacturing and in the decision making process. The results show that the majority of respondents to the survey report both the advantages and challenging issues of AI. The attitudes are generally positive, emphasizing that AI should be used transparently, responsibly and ethically by company managers.

References

  1. Wang B Tao F Fang X Liu C Liu Y Freiheit T Manufacturing and intelligent manufacturing: a comparative review Engineering 2021 7 738 757 10.1016/j.eng.2020.07.017
  2. Gobinath, V.M., Ayyaswamy, K., Kathirvel, N.: Information communication technology and intelligent manufacturing industries perspective: an insight. Asian Sci. Bull., 36–45 (2024). https://doi.org/10.3923/asb.2024.36.45
  3. Kim SW et al. Recent advances of artificial intelligence in manufacturing industrial sectors: a review Int. J. Precis. Eng. Manuf. 2022 23 111 129 10.1007/s12541-021-00600-3
  4. Liu J Jiang X Shi M Yang Y Impact of artificial intelligence on manufacturing industry global value chain position Sustainability 2024 16 3 1341 10.3390/su16031341
  5. Akinsolu MO Applied artificial intelligence in manufacturing and industrial production systems: PEST considerations for engineering managers IEEE Eng. Manage. Rev. 2023 51 1 52 62 10.1109/EMR.2022.3209891
  6. Jing X Zhu R Lin J Yu B Lu M Education sustainability for intelligent manufacturing in the context of the new generation of artificial intelligence Sustainability 2022 14 21 14148 10.3390/su142114148

Issue

Lecture Notes in Networks and Systems, vol. 1799 LNNS, pp. 176-187, 2026, France, https://doi.org/10.1007/978-3-032-15743-0_15

Copyright Springer, Cham

Вид: книга/глава(и) от книга, публикация в издание с импакт фактор, публикация в реферирано издание, индексирана в Scopus