New Artificial Neural Networks Model for Predicting Rate of Penetration in Deep Shale Formation
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- Fatick Nath & Sarker Monojit Asish & Deepak Ganta & Happy Rani Debi & Gabriel Aguirre & Edgardo Aguirre, 2022. "Artificial Intelligence Model in Predicting Geomechanical Properties for Shale Formation: A Field Case in Permian Basin," Energies, MDPI, vol. 15(22), pages 1-19, November.
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rate of penetration; shale formation; artificial neural network; mechanical parameters; mud properties;All these keywords.
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