Application of artificial intelligence to predict rock strength and drilling efficiency using in-cutter sensing data and vibration modes
Alexis Koulidis,
Guang Ooi,
Shehab Ahmed
Abstract:Drilling is a complex destructive action that induces vibrations due to the rock-bit interaction, which affects the overall drilling efficiency and wellbore quality. This study aims to enhance drilling efficiency by deploying artificial neural networks (ANNs) to integrate in-cutter force sensing and vibration data. Data is collected from experiments conducted with sharp cutters on rock samples of varying mechanical properties, measuring variables such as weight on bit, torque, rotational speed, in-cutter force… Show more
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