AI Solutions for Energy Efficiency in Petrochemical Production

Dharani Jaganathan, Sangwoo Jeon, Hemawathi Somasundaram, Min Dugki, Sufyan Yakubu

Abstract


AI solutions are revolutionizing energy efficiency in petrochemical production, enabling companies to reduce costs and minimize environmental impact. This paper examines the methodologies and technologies utilized in AI-driven energy management systems, focusing on their applications in process optimization, predictive analytics, and resource allocation. By presenting case studies, the paper highlights the benefits of implementing AI solutions, including reduced energy consumption, enhanced operational efficiency, and improved sustainability. Additionally, the challenges of integrating AI technologies into existing petrochemical operations are discussed, along with future prospects for their advancement.

Keywords


AI, energy efficiency, petrochemical production, sustainability.

References


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