Treffer: The role of data-driven insights in industrial control systems: Advancing predictive maintenance and operational efficiency in refinery processes
Copyright (c) 2024 Fidelis Othuke Onyeke, Oladipo Odujobi, Friday Emmanuel Adikwu, Tari Yvonne Elete
https://creativecommons.org/licenses/by-nc/4.0
English
10.51594/estj.v5i12.1775
1499887741
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Industrial control systems (ICS) are pivotal in refinery operations, ensuring process stability, resource optimization, and safety. With the advent of advanced data-driven technologies, the integration of predictive maintenance and operational efficiency strategies has become increasingly essential. This paper examines the theoretical underpinnings of predictive maintenance, highlighting its superiority over reactive and preventive approaches and its reliance on big data and machine learning for proactive equipment management. The role of data analytics in optimizing resource allocation, energy use, and process stability is explored, with a focus on addressing barriers such as data integration challenges and cybersecurity risks. Furthermore, the study delves into future trends, including the adoption of digital twins, IoT, and AI to enable real-time monitoring and autonomous decision-making. Recommendations for industry stakeholders emphasize investments in digital infrastructure, workforce development, cybersecurity, and sustainability-driven innovations. Refineries can leverage data-driven insights to enhance operational efficiency, mitigate risks, and contribute to a more sustainable industrial future. Keywords: Industrial Control Systems (ICS), Predictive Maintenance, Operational Efficiency, Data Analytics, Refinery Processes