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Journal ArticleDOI

Application of Real-Time Field Data to Optimize Drilling Hydraulics Using Neural Network Approach

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TLDR
In this article, an artificial neural network (ANN) model to predict hydraulics was implemented through the fitting tool of matlab and the sensitivity analysis of input parameters on the created model was investigated by using forward regression method.
Abstract
Real-time drilling optimization improves drilling performance by providing early warnings in operation Mud hydraulics is a key aspect of drilling that can be optimized by access to real-time data. Different from the investigated references, reliable prediction of pump pressure provides an early warning of circulation problems, washout, lost circulation, underground blowout, and kicks. This will help the driller to make necessary corrections to mitigate potential problems. In this study, an artificial neural network (ANN) model to predict hydraulics was implemented through the fitting tool of matlab. Following the determination of the optimum model, the sensitivity analysis of input parameters on the created model was investigated by using forward regression method. Next, the remaining data from the selected well samples was applied for simulation to verify the quality of the developed model. The novelty is this paper is validation of computer models with actual field data collected from an operator in LA. The simulation result was promising as compared with collected field data. This model can accurately predict pump pressure versus depth in analogous formations. The result of this work shows the potential of the approach developed in this work based on NN models for predicting real-time drilling hydraulics.

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Citations
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Journal ArticleDOI

Machine learning methods applied to drilling rate of penetration prediction and optimization - A review

TL;DR: An extensive review of the literature on ROP prediction, especially, with machine learning techniques, as well as how these models can be used to optimize the drilling activities is presented, enabling to see that machineLearning techniques can potentially outperform in terms of ROP-prediction accuracy on top of traditional or statistical models.
Journal ArticleDOI

Drilling rate of penetration prediction and optimization using response surface methodology and bat algorithm

TL;DR: In this paper, the simultaneous effect of six variables on penetration rate using real field drilling data has been investigated, and the bat algorithm was used to identify optimal range of factors in order to maximize drilling rate of penetration.
Journal ArticleDOI

Real Time Determination of Rheological Properties of Spud Drilling Fluids Using a Hybrid Artificial Intelligence Technique

TL;DR: The Artificial neural network technique was combined with the self-adaptive differential evolution algorithm (SaDe) to develop an optimum ANN model for each rheological property using 1029 data points, and the SaDe helped to optimize the best combination of parameters for the ANN models.
Journal ArticleDOI

A new methodology for optimization and prediction of rate of penetration during drilling operations

TL;DR: To predict penetration rate during drilling process, several ANN models were developed based on the data obtained from drilling of a gas well located in south of Iran and showed that the best model was selected for prediction of penetration rate.
References
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Journal ArticleDOI

The concept of specific energy in rock drilling

TL;DR: In this article, the authors studied the relationship between the specific energy required to excavate a unit volume of rock and the crushing strength of the medium drilled in, for rotary, percussive-rotary and roller-bit drilling.
Book ChapterDOI

Multiple Regression Analysis

Journal ArticleDOI

Non-Newtonian Flow in Eccentric Annuli

TL;DR: In this article, the flow behavior of drilling fluids and cement slurries in excentric annuli (directional and horizontal wells) is studied using a finite differences technique to obtain velocity and viscosity profiles of yield-power law fluids.
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