IoT and Predictive Maintenance in Industrial Engineering: A Data-Driven Approach

Authors

  • P.Vijaya Bharati
  • J.S.V.Siva Kumar
  • Sathish Kumar Anumula
  • P Vamshi Krishna
  • Sangam Malla

Keywords:

IoT, Predictive Maintenance, Industrial Engineering, Machine Learning, Data Analytics, Smart Manufacturing, Industry 4.0, Condition Monitoring, Preventive Maintenance, Fault Detection

Abstract

Fourth Industrial Revolution has brought in a new era of smart manufacturing, wherein, application of Internet of Things (IoT), and data-driven methodologies is revolutionizing the conventional maintenance. With the help of real-time data from the IoT and machine learning algorithms, predictive maintenance (PdM) allows industrial systems to predict failures and optimize machines’ life. This paper presents the synergy between the Internet of Things and predictive maintenance in industrial engineering with an emphasis on the technologies, methodologies, as well as data analytics techniques, that constitute the integration. A systematic collection, processing, and predictive modeling of data is discussed. The outcomes emphasize greater operational efficiency, decreased downtime, and cost-saving, which makes a good argument as to why predictive maintenance should be implemented in contemporary industries

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Published

2025-05-16

How to Cite

1.
Bharati P, Kumar J, Anumula SK, Krishna PV, Malla S. IoT and Predictive Maintenance in Industrial Engineering: A Data-Driven Approach. J Neonatal Surg [Internet]. 2025May16 [cited 2025Sep.21];14(24S):492-500. Available from: https://www.jneonatalsurg.com/index.php/jns/article/view/5984