2024
DOI: 10.17794/rgn.2024.1.10
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Accurate Prediction of Drill Bit Penetration Rate in Rock Using Supervised Machine Learning Techniques Base on Laboratory Test Data

Shahrokh Khosravimanesh,
Akbar Esmaeilzadeh,
Masoud Akhyani
et al.

Abstract: Knowing the rate of penetration of a drill bit in rocks is among the most important parameters in their behaviour measurement. However, the direct measurement of ROP in rocks is a high-cost and time-intensive process. Therefore, obtaining the ROP parameter through a method other than direct measurement can be very useful and effective. Predictive machine learning methods are among the strong and precise techniques for the indirect measurement of ROP. To this end, 492 samples were tested under different UCS, µ,… Show more

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