1 Department of Supply Chain Management, Marketing, and Management, Wright State University, USA.
2 Department of Environmental Health and Management, University of New Haven,West Haven, USA.
3 Department of Chemical Engineering, Federal university of Petroleum Resources Effurun, Nigeria.
4 Department of Civil Enginnering, University of Cross River State, Nigeria.
5 Department of Environmental Sciences, Indiana University Bloomington, Indiana, USA.
6 Department of Chemical Engineering, Ladoke Akintola University of Technology, Nigeria.
World Journal of Advanced Research and Reviews, 2025, 26(02), 3394-3405
Article DOI: 10.30574/wjarr.2025.26.2.1938
Received on 02 April 2025; revised on 10 May 2025; accepted on 12 May 2025
This piece discusses how Artificial Intelligence facilitates oil and gas decommissioning and site renewal to allow for sustainability of the environment. With well over twenty peer-reviewed articles attested, the review describes how digital twin, machine learning, predictive analytics, and remote sensing technologies revolutionize back-end decommissioning to proactive and data-informed practices. Observations from empirical studies record Artificial Intelligence implementation reduces decommissioning expense by as much as 35%, flare volumes and fugitive methane by 40% minimum and remediation efficiency by 60% under ground and water pollution conditions. Decreases in emission by 20 metric tonnes of CO₂ equivalent per well and downtime by 25 to 40% were similarly recorded from case studies. This study credits Artificial Intelligence with empowering oil and gas operations with environment, social, and government considerations; as well as technical, economic, and ecological optimization at the oil and gas industry's end-of-life phase.
Artificial Intelligence; Decommissioning; Remediation; Carbon Emission; Methane Detection; Digital Twin
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Ifeanyi Kingsley Egbuna, Harrison Agboro, Ogechi Olive Nwachukwu, Freda Ekpenyong George, Joshua Babatunde Asere and Shola Abayomi Ogunkanmi. Artificial Intelligence for predictive analysis, efficiency improvement and reduction in carbon footprint during decommissioning and site remediation in oil and gas fields. World Journal of Advanced Research and Reviews, 2025, 26(2), 3394-3405. Article DOI: https://doi.org/10.30574/wjarr.2025.26.2.1938