Evaluating Cost-Benefit Implications of Ai-Driven Predictive Analytics for Environmental Compliance and Sustainability in Oil and Gas Refinery Operations

Charles Bom *

Department of Economics and Finance, Grand Forks, North Dakota, University of North Dakota, USA.

Juliet Ngozi Chijioke-Churuba

Department of Business Administration, Business School Netherlands, Buren, Netherlands.

Jeremiah Matthews

Civil, Construction and Environmental Engineering School, University of Alabama, Tuscaloosa USA.

*Author to whom correspondence should be addressed.


Abstract

The oil and gas sector is coming under more pressure for sustainability, environmental compliance, and cost optimization. With increasing economic and regulatory pressures, refineries must find ways to address economic and environmental changes head-on. One application of AI technology that could help make refinery operations more efficient and less costly while also helping them comply with environmental regulations is the use of predictive analytics.

The present study seeks to assess the cost-benefit impact of AI on oil refinery operations, particularly as it pertains to cost optimization and environmental sustainability. A systematic review approach was used to study the current literature and case studies on the use of AI in the oil and gas sector in predictive maintenance, process optimization, emissions management, and supply chain management.

It was found in the review that there is a major impact of AI on the reduction of costs in maintenance and operational processes of operations. The application of AI in predictive maintenance has also yielded significant cost savings in operations by decreasing unscheduled downtime and emergency repairs while increasing the longevity of vital assets. AI process optimization has also contributed to energy efficiency and sustainability improvements through the minimization of waste, allowing refineries to reduce their environmental footprint while still achieving production targets. On the environmental regulatory front, AI technologies have demonstrated optimized real-time measurement of emissions, water consumption, and waste disposal to comply with regulations. Also, the use of AI within supply chains has streamlined logistics, enhanced inventory management, and decreased waste, resulting in cost efficiencies throughout the production cycle.

In summary, AI has been shown to be a powerful enabler to improve the efficiency and sustainability of how refineries operate. The study concludes with recommendations for refineries to adopt AI technologies as a means to make progressively better predictions of equipment status, resource allocation, and environmental compliance. They should also create a regulatory environment that encourages the adoption of AI while tackling issues about data privacy and data integration.

Keywords: AI, Predictive Analytics, oil and gas, cost optimization, environmental compliance, sustainability, refinery operations


How to Cite

Bom, Charles, Juliet Ngozi Chijioke-Churuba, and Jeremiah Matthews. 2025. “Evaluating Cost-Benefit Implications of Ai-Driven Predictive Analytics for Environmental Compliance and Sustainability in Oil and Gas Refinery Operations”. Current Journal of Applied Science and Technology 44 (7):91-103. https://doi.org/10.9734/cjast/2025/v44i74576.

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