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Keywords: well log
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Proceedings Papers
Publisher: Society of Petroleum Engineers (SPE)
Paper presented at the SPE Caspian Technical Conference and Exhibition, November 26–28, 2024
Paper Number: SPE-223381-MS
... Abstract The proposed paper introduces a novel machine learning-based approach that incorporates advanced data pre- and post-processing techniques to significantly enhance automated lithology classification using well log data. Through rigorous testing of various machine learning algorithms...
Proceedings Papers
Andrey Sevostyanov, Azamat Timirgalin, Roman Oshmarin, Georgiy Volkov, Iskander Mukminov, Artem Kondratev
Publisher: Society of Petroleum Engineers (SPE)
Paper presented at the SPE Annual Caspian Technical Conference, October 16–18, 2019
Paper Number: SPE-198410-MS
... fields, resulting in poor knowledge at core data and well logs. This fact makes it difficult to estimate AF geological properties and predict potential for drilling zones. While researching such a complex object engineers often try to fill in the data from analogous fields that sometimes increases error...
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