Incidence of CNC Technology in Industry 4.0

Authors

DOI:

https://doi.org/10.26423/rctu.v11i2.801

Keywords:

Modern manufacturing, Kitchenham method, organizational challenges, additive manufacturing

Abstract

The study analyzed the integration of CNC technology in the context of Industry 4.0, evaluating benefits, challenges and future trends. A survey and a case study were conducted to identify benefits such as improved efficiency, flexibility, cost reduction, and improved quality and traceability of processes. Organizational challenges were highlighted, including resistance to change, lack of strategic vision and budget constraints. Future trends included the integration of additive manufacturing, the adoption of augmented and virtual reality technologies, and the growing role of artificial intelligence in CNC process optimization. It was concluded that the integration of CNC with Industry 4.0 offers significant potential to improve manufacturing competitiveness and efficiency, provided that technical and organizational challenges are adequately addressed. Future research was suggested to develop strategies and best practices in this area.

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Published

2024-12-19

How to Cite

Sánchez Hayman, L. H. (2024). Incidence of CNC Technology in Industry 4.0. UPSE Scientific and Technological Magazine, 11(2), 145-155. https://doi.org/10.26423/rctu.v11i2.801