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Keywords: spwla-2022-0102
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Proceedings Papers
Sayyid Ahmad, Peter Barrett, Ahmed Fouda, Baris Guner, Venkat Jambunathan, Eric Van Beest, István Nagy-Korodi, Botond Kemény, Jon Haugestaul, Ádám Spitzmüller
Paper presented at the SPWLA 63rd Annual Logging Symposium, June 11–15, 2022
Paper Number: SPWLA-2022-0102
... be missed by just looking at resistivity-based images is also demonstrated. machine learning drilling fluid chemistry log analysis drilling fluid selection and formulation hydraulic fracturing upstream oil & gas well logging drilling fluids and materials spwla-2022-0102 quantitative...