Intelligent Manufacturing with Quantum Sensors and AI A Path to Smart Industry 5.0

Authors

  • Sudheer Panyaram Sr. ERP Solution Architect, USA. Author

DOI:

https://doi.org/10.56472/ICCSAIML25-117

Keywords:

Quantum Sensors, Artificial Intelligence, Intelligent Manufacturing, Industry 5.0, Smart Factories

Abstract

The advent of Industry 5.0 marks a significant shift in the manufacturing landscape, moving beyond the automation-centric Industry 4.0 to a more human-centric, intelligent manufacturing ecosystem. A key enabler of this transformation is the integration of quantum sensors and artificial intelligence (AI). Quantum sensors, leveraging the principles of quantum mechanics, offer unparalleled precision and sensitivity in measuring various physical parameters, making them ideal for manufacturing applications that require highly accurate and real-time data. AI, on the other hand, empowers systems to analyse vast amounts of data, adapt to dynamic environments, and make autonomous decisions, driving efficiency and enhancing productivity. This paper explores the synergy between quantum sensors and AI, focusing on their roles in revolutionizing manufacturing processes, improving precision, optimizing production workflows, and enabling predictive maintenance. By integrating these technologies, manufacturers can realize significant improvements in product quality, operational efficiency, and resource optimization, while also fostering sustainability and reducing waste. We provide an in-depth analysis of various applications, such as process monitoring, non-destructive testing, and quality control, where quantum sensors and AI are currently making a significant impact. Additionally, the paper addresses the challenges associated with integrating these advanced technologies into existing manufacturing systems, including high implementation costs, data management complexities, and the need for skilled workforce development. The paper concludes by examining the future prospects of quantum sensors and AI in creating truly intelligent, autonomous manufacturing systems, paving the way for Industry 5.0. As these technologies evolve, they promise to deliver increasingly sophisticated solutions for the next generation of smart factories

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Published

2025-05-18

How to Cite

1.
Panyaram S. Intelligent Manufacturing with Quantum Sensors and AI A Path to Smart Industry 5.0. IJETCSIT [Internet]. 2025 May 18 [cited 2025 Sep. 13];:140-7. Available from: https://www.ijetcsit.org/index.php/ijetcsit/article/view/191

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