AI-enabled predictive safeguards for offshore oil facilities: Enhancing safety and operational efficiency
1 Independent Researcher; Lagos Nigeria.
2 Department of Mechanical Engineering, Nnamdi Azikiwe University, Awka Nigeria.
3 Independent Researcher, United Kingdom.
4 Independent Researcher, Houston Texas, USA.
Review
Comprehensive Research and Reviews in Engineering and Technology, 2024, 02(01), 023–043.
Article DOI: 10.57219/crret.2024.2.1.0060
Publication history:
Received on 08 July 2024; revised on 17 August 2024; accepted on 20 August 2024
Abstract:
Offshore oil facilities operate in some of the most challenging environments, facing complex safety risks that can lead to catastrophic incidents if not properly managed. Traditional safety systems, while effective, often rely on reactive measures rather than proactive risk mitigation strategies. This paper explores the integration of Artificial Intelligence (AI) into predictive safety safeguards for offshore oil platforms, aiming to enhance both safety and operational efficiency. The proposed model focuses on the real-time monitoring of key operational parameters, data analytics, and machine learning algorithms to predict potential hazards before they escalate into critical incidents. By leveraging AI, operators can predict failures in equipment, detect anomalies in operational conditions, and optimize response strategies, thus minimizing downtime and preventing costly accidents. The paper presents a comprehensive framework for operationalizing AI-driven safety systems, highlighting the key components necessary for successful implementation, including data acquisition, sensor integration, and algorithm development. Machine learning models are trained on historical data from previous offshore operations, enabling predictive maintenance and early warning systems for critical equipment such as blowout preventers and pipelines. The model also incorporates a risk-based decision-making process that assesses real-time threats to inform the prioritization of safety actions. In addition to enhancing safety, the AI-enabled system promotes operational efficiency by reducing false alarms and enabling more precise resource allocation. The predictive nature of the system leads to reduced maintenance costs and extended asset life. The paper emphasizes the need for continuous data updating and human oversight to ensure that AI systems adapt to evolving operational conditions. The research concludes by outlining key challenges and future directions, such as improving the accuracy of AI models, addressing cybersecurity risks, and integrating AI with existing regulatory frameworks in the offshore oil sector. This study contributes to the growing body of knowledge on AI applications in industrial safety, providing a roadmap for the adoption of predictive safeguards in high-risk environments.
Keywords:
Offshore oil platforms; Artificial Intelligence; Predictive safety; Operational efficiency; Machine learning; Risk management; Safety systems; Data analytics; Predictive maintenance
Full text article in PDF:
Copyright information:
Copyright © 2024 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0