Title: Beyond conventional approach: hybrid supervised learning and feature selection algorithms for prediction sonic logs - a study in a tight gas sand, North of Oman
Authors: Suad Al-Handhali; Mohammed Al-Aamri; Narasimman Sundararajan
Addresses: Department of Earth Science, Sultan Qaboos University, Muscat, Oman ' Hydrocarbon Maturation Center, Petroleum Development Oman, Muscat, Oman ' Department of Earth Science, College of Science, Sultan Qaboos University, Muscat, Oman
Abstract: The sonic log is an essential petrophysical log, and it is used in many petroleum applications. Since sonic logs are expensive to run in all boreholes, oil companies conduct them in a few wells. Thus, several workflows incorporate sonic log synthetisation using conventional empirical correlations. However, these traditional approaches are less reliable than modern-day machine learning techniques. This study combines machine learning and feature selection algorithms to predict synthetic sonic logs from basic petrophysical logs. The implemented machine learning algorithms are multi-linear regression (MLR), artificial neural network (ANN), support vector machine (SVM) and random forest (RF). This study was implemented with data from seven wells in North Oman's tight gas sandstone. The models developed were built and evaluated. The results show that the hybrid random forest algorithm with a backward elimination feature selection approach was more robust and reliable for predicting sonic logs. [Received: November 22, 2022; Accepted: April 12, 2023]
Keywords: petrophysics; sonic; machine learning; feature selection; multi-linear regression; artificial neural network; support vector machine; random forest; tight sand; backward elimination.
DOI: 10.1504/IJOGCT.2023.135055
International Journal of Oil, Gas and Coal Technology, 2023 Vol.34 No.4, pp.359 - 385
Received: 21 Nov 2022
Accepted: 12 Apr 2023
Published online: 29 Nov 2023 *