scispace - formally typeset
Journal ArticleDOI

Rock Strength Prediction in Real-Time While Drilling Employing Random Forest and Functional Network Techniques

TLDR
The developed PCA-based RF and FN models provide an accurate UCS estimation in real-time from the drilling data, saving time and cost, and enhancing the well stability by generating UCS log from the rig drilling data.
Abstract
\n The rock unconfined compressive strength (UCS) is one of the key parameters for geomechanical and reservoir modeling in the petroleum industry. Obtaining the UCS by conventional methods such as experimental work or empirical correlation from logging data are time consuming and highly cost. To overcome these drawbacks, this paper utilized the help of artificial intelligence (AI) to predict (in a real-time) the rock strength from the drilling parameters using two AI tools. Random forest (RF) based on principal component analysis (PCA), and functional network (FN) techniques were employed to build two UCS prediction models based on the drilling data such as weight on bit (WOB), drill string rotating speed (RS), drilling torque (T), stand-pipe pressure (SPP), mud pumping rate (Q), and the rate of penetration (ROP). The models were built using 2333 data points from well (A) with 70:30 training to testing ratio. The models were validated using unseen dataset (1300 data points) of well (B) which is located in the same field and drilled across the same complex lithology. The results of the PCA-based RF model outperformed the FN in terms of correlation coefficient (R) and average absolute percentage error (AAPE). The overall accuracy for PCA-based RF was R of 0.99 and AAPE of 4.3%, and for FN yielded R of 0.97 and AAPE of 8.5%. The validation results showed that R was 0.99 for RF and 0.96 for FN, while the AAPE was 4% and 7.9% for RF and FN models, respectively. The developed PCA-based RF and FN models provide an accurate UCS estimation in real-time from the drilling data, saving time and cost, and enhancing the well stability by generating UCS log from the rig drilling data.

read more

Citations
More filters
Journal ArticleDOI

Prediction of the Compressive Strength for Cement-Based Materials with Metakaolin Based on the Hybrid Machine Learning Method

TL;DR: In this article , a Random Forests (RF) and Firefly Algorithm (FA) hybrid machine learning model was proposed to predict the compressive strength of metakaolin cement-based materials.
Journal ArticleDOI

Assessment of Machine Learning Models for the Prediction of Rate-Dependent Compressive Strength of Rocks

TL;DR: The hybrid model that combines the particle swarm optimization (PSO) algorithm and SVR model obtained a higher prediction accuracy and a smaller prediction error than the other three models in terms of evaluation metrics, which showed the possibility of the model as a rate-dependent compressive strength prediction tool.
Journal ArticleDOI

Real-Time Prediction of Litho-Facies From Drilling Data Using an Artificial Neural Network: A Comparative Field Data Study With Optimizing Algorithms

TL;DR: The proposed model compares and assesses various first-order optimization algorithm's efficiency, such as Adaptive Moment Estimation, Adaptive Gradient, Root Mean Square Propagation, and Stochastic Gradient Descent with traditional artificial neural network in quantitative litho-facies detection.
Journal ArticleDOI

Application of machine learning to prediction of rate-dependent compressive strength of rocks

TL;DR: In this article , three machine learning models based on the support vector machine (SVM), back-propagation neural network (BPNN), and random forest (RF) algorithms were used to identify different input parameters, such as static compressive strength, P-wave velocity, specimen dimension, grain size, bulk density and strain rate, to identify their importance in the strength prediction.
References
More filters
Book

The jackknife, the bootstrap, and other resampling plans

Bradley Efron
TL;DR: The Delta Method and the Influence Function Cross-Validation, Jackknife and Bootstrap Balanced Repeated Replication (half-sampling) Random Subsampling Nonparametric Confidence Intervals as mentioned in this paper.
Posted Content

A Tutorial on Principal Component Analysis.

TL;DR: This manuscript focuses on building a solid intuition for how and why principal component analysis works, and crystallizes this knowledge by deriving from simple intuitions, the mathematics behind PCA.
Journal ArticleDOI

Relationships between compressional‐wave and shear‐wave velocities in clastic silicate rocks

TL;DR: In this article, the authors analyzed new velocity data in addition to literature data derived from sonic log, seismic, and laboratory measurements for clastic silicate rocks and demonstrated simple systematic relationships between compressional and shear wave velocities.
Book

Petroleum Related Rock Mechanics

TL;DR: In this article, the authors present a method for estimating the minimum number of men required to prevent a borehole from collapsing due to a failure, based on anisotropy and nonlinear elasticity.
Related Papers (5)