Formation Resistivity Prediction Using Decision Tree and Random Forest

被引:5
|
作者
Ibrahim, Ahmed Farid [1 ,2 ]
Abdelaal, Ahmed [1 ]
Elkatatny, Salaheldin [1 ,2 ]
机构
[1] King Fahd Univ Petr & Minerals, Coll Petr Engn & Geosci, Dhahran 31261, Saudi Arabia
[2] King Fahd Univ Petr & Minerals, Ctr Integrat Petr Res, Dhahran 31261, Saudi Arabia
关键词
Formation resistivity prediction; Logging parameters; Machine learning; Complex carbonate sections; RESERVOIR; DENSITY;
D O I
10.1007/s13369-022-06900-8
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Formation resistivity (R-t) is a vital property for formation evaluation and calculation of water saturation and hydrocarbon in places. R-t can be estimated using core analysis and well logging. However, these processes are expensive and time-consuming. In addition, due to tool failure, and poor wellbore conditions, part of the well logging records may be missed. Hence, the objective of this paper is to predict the true formation resistivity in complex carbonate sections using decision tree (DT) and Random Forests (RF) machine learning (ML) techniques as a function of available well logging data. A data set of 5500 data points were collected from two vertical wells in carbonate formation. The data includes gamma-ray, bulk density, neutron density, compressional wave transit time, shear transient time, and the corresponding R-t. Data from Well-1 were used to develop the DT and RF models with training to the testing splitting ratio of 70:30. Dataset from Well-2 was used to validate the optimized models. The results showed the capabilities of the ML models to predict the formation resistivity from well-logging data. The correlation coefficient (R) between the actual and the predicted output values and the root mean square error (RMSE) was used to evaluate the models performance. R value for the RF model was found to be 0.99, and 0.98 for the training and the testing stages with a validation R value of 0.94. The RMSE for the developed models was less than 0.38 for training, testing, and validation stages. Using ML to predict the formation resistivity can fill the missing gaps in log tracks and save money by removing resistivity logs running in all offset wells in the same field.
引用
收藏
页码:12183 / 12191
页数:9
相关论文
共 50 条
  • [31] Diabetes Prediction using Decision Tree, Random Forest, Support Vector Machine, K- Nearest Neighbors, Logistic Regression Classifiers
    Peerbasha, S.
    Raja, A. Saleem
    Praveen, K. P.
    Iqbal, Y. Mohammed
    Surputheen, Mohamed
    JOURNAL OF ADVANCED APPLIED SCIENTIFIC RESEARCH, 2023, 5 (04): : 42 - 54
  • [32] Bankruptcy prediction using decision tree
    Aoki, S
    Hosonuma, Y
    APPLICATION OF ECONOPHYSICS, PROCEEDINGS, 2004, : 299 - 302
  • [33] Text document categorisation using random forest and C4.5 decision tree classifier
    Pawar, Sumathi
    Rao, Manjula Gururaj
    Pandith, Karuna
    International Journal of Computational Systems Engineering, 2023, 7 (2-4) : 211 - 220
  • [34] Classification and assessment of power system static security using decision tree and random forest classifiers
    Sekhar, Pudi
    Mohanty, Sanjeeb
    INTERNATIONAL JOURNAL OF NUMERICAL MODELLING-ELECTRONIC NETWORKS DEVICES AND FIELDS, 2016, 29 (03) : 465 - 474
  • [35] The Predictive Model of Mental Illness using Decision Tree and Random Forest classification in Machine Learning
    Singh, Prithvipal
    Singh, Gurvinder
    Bharti, Sarveshwar
    2022 2nd International Conference on Advance Computing and Innovative Technologies in Engineering, ICACITE 2022, 2022, : 1440 - 1444
  • [36] Network Intrusion Detection System Using Random Forest and Decision Tree Machine Learning Techniques
    Bhavani, T. Tulasi
    Rao, M. Kameswara
    Reddy, A. Manohar
    FIRST INTERNATIONAL CONFERENCE ON SUSTAINABLE TECHNOLOGIES FOR COMPUTATIONAL INTELLIGENCE, 2020, 1045 : 637 - 643
  • [37] Comparative Study of Decision Tree, AdaBoost, Random Forest, Naive Bayes, KNN, and Perceptron for Heart Disease Prediction
    Maydanchi, Mohammad
    Ziaei, Armin
    Basiri, Mina
    Azad, Alireza Norouzi
    Pouya, Shaheen
    Ziaei, Mehrbod
    Haji, Fatemeh
    Sargolzaei, Saman
    SOUTHEASTCON 2023, 2023, : 204 - 208
  • [38] EMLARDE tree: ensemble machine learning based random de-correlated extra decision tree for the forest cover type prediction
    Guhan, T.
    Revathy, N.
    SIGNAL IMAGE AND VIDEO PROCESSING, 2024, 18 (12) : 8525 - 8536
  • [39] Decision Tree and Random Forest Implementations for Fast Filtering of Sensor Data
    Buschjaeger, Sebastian
    Morik, Katharina
    IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS I-REGULAR PAPERS, 2018, 65 (01) : 209 - 222
  • [40] Fully Homomorphic Training and Inference on Binary Decision Tree and Random Forest
    Shin, Hojune
    Choi, Jina
    Lee, Dain
    Kim, Kyoungok
    Lee, Younho
    COMPUTER SECURITY-ESORICS 2024, PT III, 2024, 14984 : 217 - 237