Abstract The oil and gas industry in the Niger Delta faces significant challenges in asset integrity management due to aging infrastructure, harsh operating environments, vandalization and limited predictive capabilities of traditional methods. Traditional approaches, such as periodic inspections and reactive maintenance, often fail to predict potential failures effectively, thereby leading to increased operational costs, environmental risks, and downtime. This paper examines the role of AI in asset integrity management in Yoga Gas Plant in Niger Delta of Nigeria, highlighting its significance, challenges, and future potential. By integrating AI-driven analytics with real-time data monitoring, Yoga Gas Plant had significantly improved their asset integrity management practices, resulting in cost savings and enhanced operational performance. Application of AI in asset integrity management has become a crucial strategy in the oil and gas industry to maintain operational efficiency and protect asset integrity. This paper explores the transformative impact of artificial intelligence (AI) on asset integrity management, marking a shift toward proactive equipment management. The study further highlights the superior performance of AI-based predictive maintenance over traditional methods, demonstrating its potential to forecast equipment failures accurately and optimize maintenance schedules. By leveraging AI technologies, companies can predict equipment failures, reduce downtime, and optimize maintenance strategies, ultimately enhancing overall operational outcomes. The incorporation of AI into asset integrity management represents a paradigm shift, offering a more proactive approach to managing assets. With AI-powered analytics and real-time data monitoring, oil and gas facilities can strengthen their asset integrity management processes. Through predictive algorithms and machine learning models, these technologies enable companies to anticipate equipment failures with unmatched precision, facilitating timely interventions and risk mitigation. Looking ahead, the future of asset management in this sector is filled with potential. As AI technologies advance, we can expect further improvements in predictive analytics, fault detection, and decision support systems. This research bridges the gap between theoretical advancements in AI and practical applications in asset management in the Niger Delta Region.
Aribisala et al. (Mon,) studied this question.