Authors :
Dr. Ahmad Al-Harbi
Volume/Issue :
Volume 10 - 2025, Issue 1 - January
Google Scholar :
https://tinyurl.com/5n6mz3cs
Scribd :
https://tinyurl.com/3n8ea8vm
DOI :
https://doi.org/10.5281/zenodo.14769392
Abstract :
In my paper, I explore the transformative role of artificial intelligence (AI) within Saudi Arabia's energy sector,
focusing on its impact on optimizing oil and gas production and advancing renewable energy solutions. Given the
country's economic dependence on energy, I argue that AI not only enhances operational efficiency but also plays a crucial
role in facilitating the shift towards sustainable energy practices. Through a comprehensive analysis, I present the
historical context of AI in the oil and gas industry, examine its applications in predictive maintenance and data analytics,
and showcase successful case studies that illustrate AI's effectiveness in both traditional and renewable energy sectors. The
findings underscore AI's potential to drive economic sustainability and environmental goals, ultimately suggesting that
further research and policy support are essential for maximizing AI's benefits in Saudi Arabia's energy landscape.
Keywords :
Artificial Intelligence, Energy Sector, Oil and Gas Production, Renewable Energy, Saudi Arabia.
References :
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In my paper, I explore the transformative role of artificial intelligence (AI) within Saudi Arabia's energy sector,
focusing on its impact on optimizing oil and gas production and advancing renewable energy solutions. Given the
country's economic dependence on energy, I argue that AI not only enhances operational efficiency but also plays a crucial
role in facilitating the shift towards sustainable energy practices. Through a comprehensive analysis, I present the
historical context of AI in the oil and gas industry, examine its applications in predictive maintenance and data analytics,
and showcase successful case studies that illustrate AI's effectiveness in both traditional and renewable energy sectors. The
findings underscore AI's potential to drive economic sustainability and environmental goals, ultimately suggesting that
further research and policy support are essential for maximizing AI's benefits in Saudi Arabia's energy landscape.
Keywords :
Artificial Intelligence, Energy Sector, Oil and Gas Production, Renewable Energy, Saudi Arabia.