Artificial Intelligence Applications in Natural Gas Industry: A Literature Review

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Siddhartha Nuthakki
Chinmay Shripad Kulkarni
Suraj Kumar
Satish Kathiriya
 Yudhisthir Nuthakki

Abstract

One of the more controversial uses of artificial intelligence (AI) in the petroleum industry has been in technological advancement. The gas business generates data on a constant basis from several operational procedures. The gas sector is now very concerned about recording these data and using them appropriately. Making decisions based on inferential and predictive data analytics facilitates timely and accurate decision-making. The gas business is seeing a significant increase in the use of data analytics for decision making despite numerous obstacles. Considerable progress has been made in the aforementioned field of study. With the use of artificial intelligence (AI) and machine learning (ML) techniques, many complicated issues may now be resolved with ease. This study, which looks at artificial intelligence applications in the natural gas sector, collected its data from numerous sources between 2005 and 2023. The current work might offer a technical framework for selecting pertinent technologies that will enable efficient information extraction from the massive amount of data produced by the gas industry.

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[1]
Siddhartha Nuthakki, Chinmay Shripad Kulkarni, Suraj Kumar, Satish Kathiriya, and  Yudhisthir Nuthakki , Trans., “Artificial Intelligence Applications in Natural Gas Industry: A Literature Review”, IJEAT, vol. 13, no. 3, pp. 64–70, Feb. 2024, doi: 10.35940/ijeat.C4383.13030224.
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How to Cite

[1]
Siddhartha Nuthakki, Chinmay Shripad Kulkarni, Suraj Kumar, Satish Kathiriya, and  Yudhisthir Nuthakki , Trans., “Artificial Intelligence Applications in Natural Gas Industry: A Literature Review”, IJEAT, vol. 13, no. 3, pp. 64–70, Feb. 2024, doi: 10.35940/ijeat.C4383.13030224.
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