Artificial neural networks models for rate of penetration prediction in rock drilling
Abstract
Prediction of the rate of penetration (ROP) is an important task in drilling economical assessments of mining and construction projects. In this paper, the predictability of the ROP for percussive drills was investigated using the artificial neural networks (ANNs) and the linear multivariate regression analysis. The “power pack” frequency, the revolution per minute (RPM), the feed pressure, the hammer frequency, and the impact energy were considered as input parameters. The results indicate that the ANN with the regression model predicts the ROP under different conditions with high accuracy. It also demonstrates that the ANN approach is a beneficial tool that can reduce cost, time and enhance structure reliability.
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Copyright (c) 2017 Hadi Fathipour Azar; Timo Saksala, Seyed-Mohammad Esmaiel Jalali
Det här verket är licensierat under en Creative Commons Erkännande-DelaLika 4.0 Internationell-licens.