Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil Wells

High-frequency induction logging is a crucial technique in subsurface exploration, particularly in the oil and gas industry. It involves transmitting electromagnetic signals into the ground and analyzing their responses to determine the geological structure, lithology, and fluid content of the forma...

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Main Authors: Zukhra Abdiakhmetova, Zhanerke Temirbekova
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/11005472/
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author Zukhra Abdiakhmetova
Zhanerke Temirbekova
author_facet Zukhra Abdiakhmetova
Zhanerke Temirbekova
author_sort Zukhra Abdiakhmetova
collection DOAJ
description High-frequency induction logging is a crucial technique in subsurface exploration, particularly in the oil and gas industry. It involves transmitting electromagnetic signals into the ground and analyzing their responses to determine the geological structure, lithology, and fluid content of the formation. However, one of the major technical challenges in processing digital sounding signals is the complexity of wave propagation paths, which can be influenced by multiple factors such as subsurface heterogeneity, noise interference, and signal attenuation. Traditional signal processing techniques often struggle to accurately interpret low-amplitude, high-frequency signals that contain valuable subsurface information. These signals can be obscured by noise or exhibit complex, non-stationary behavior, making them difficult to detect and analyze using conventional Fourier-based methods. Moreover, standard regression-based approaches for interpreting induction logging data may fail to capture intricate signal variations, limiting their effectiveness in real-time decision-making. To address these challenges, this research explores the application of machine learning and wavelet transform techniques for improving the accuracy and efficiency of digital signal processing in high-frequency induction logging. The wavelet transform, particularly the Daubechies, Morlet, and Galerkin wavelets, is employed to decompose signals into different frequency components while preserving time-domain information. This enables better identification of subtle variations and anomalies in the recorded data. Furthermore, machine learning models, including standard regression algorithms and neural networks, are leveraged to enhance signal interpretation and predictive capabilities. A key innovation of this study is the development of an algorithm that processes low-amplitude high-frequency signals, which are often difficult to detect with conventional methods. Additionally, a neural network-based forecasting algorithm utilizing the Daubechies wavelet transform is introduced to improve the predictive accuracy of subsurface characteristics. By integrating wavelet-based feature extraction with machine learning-driven analysis, this approach enhances the ability to detect complex wave propagation patterns, leading to more precise subsurface modeling. This advancement supports the implementation of smart field technology in Kazakhstan’s oil and gas industry, ultimately improving decision-making speed, operational efficiency, and resource optimization. The results were based on a set of three drilled oil wells, namely, West Kazakhstan region, Mangystau, publicly available well log dataset. The evaluation performed using R-square and root mean square error to validate the proposed approach revealed values of 0.887 and 0.0091. This implementation demonstrated the effectiveness of the proposed model, significantly outperforming traditional methods.
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spelling doaj-art-1b8dbdda035548d08e4216a5e36a2ead2025-08-20T02:19:38ZengIEEEIEEE Access2169-35362025-01-0113924299244410.1109/ACCESS.2025.357045111005472Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil WellsZukhra Abdiakhmetova0https://orcid.org/0000-0001-8702-511XZhanerke Temirbekova1https://orcid.org/0000-0003-3909-0210LLP DigitAlem, Almaty, KazakhstanComputer Science Department, Al-Farabi Kazakh National University, Almaty, KazakhstanHigh-frequency induction logging is a crucial technique in subsurface exploration, particularly in the oil and gas industry. It involves transmitting electromagnetic signals into the ground and analyzing their responses to determine the geological structure, lithology, and fluid content of the formation. However, one of the major technical challenges in processing digital sounding signals is the complexity of wave propagation paths, which can be influenced by multiple factors such as subsurface heterogeneity, noise interference, and signal attenuation. Traditional signal processing techniques often struggle to accurately interpret low-amplitude, high-frequency signals that contain valuable subsurface information. These signals can be obscured by noise or exhibit complex, non-stationary behavior, making them difficult to detect and analyze using conventional Fourier-based methods. Moreover, standard regression-based approaches for interpreting induction logging data may fail to capture intricate signal variations, limiting their effectiveness in real-time decision-making. To address these challenges, this research explores the application of machine learning and wavelet transform techniques for improving the accuracy and efficiency of digital signal processing in high-frequency induction logging. The wavelet transform, particularly the Daubechies, Morlet, and Galerkin wavelets, is employed to decompose signals into different frequency components while preserving time-domain information. This enables better identification of subtle variations and anomalies in the recorded data. Furthermore, machine learning models, including standard regression algorithms and neural networks, are leveraged to enhance signal interpretation and predictive capabilities. A key innovation of this study is the development of an algorithm that processes low-amplitude high-frequency signals, which are often difficult to detect with conventional methods. Additionally, a neural network-based forecasting algorithm utilizing the Daubechies wavelet transform is introduced to improve the predictive accuracy of subsurface characteristics. By integrating wavelet-based feature extraction with machine learning-driven analysis, this approach enhances the ability to detect complex wave propagation patterns, leading to more precise subsurface modeling. This advancement supports the implementation of smart field technology in Kazakhstan’s oil and gas industry, ultimately improving decision-making speed, operational efficiency, and resource optimization. The results were based on a set of three drilled oil wells, namely, West Kazakhstan region, Mangystau, publicly available well log dataset. The evaluation performed using R-square and root mean square error to validate the proposed approach revealed values of 0.887 and 0.0091. This implementation demonstrated the effectiveness of the proposed model, significantly outperforming traditional methods.https://ieeexplore.ieee.org/document/11005472/Data processingdigital datainductionloggingoil productiontransformation
spellingShingle Zukhra Abdiakhmetova
Zhanerke Temirbekova
Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil Wells
IEEE Access
Data processing
digital data
induction
logging
oil production
transformation
title Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil Wells
title_full Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil Wells
title_fullStr Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil Wells
title_full_unstemmed Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil Wells
title_short Integration of Machine Learning and Wavelet Algorithms for Processing Probing Signals: An Example of Oil Wells
title_sort integration of machine learning and wavelet algorithms for processing probing signals an example of oil wells
topic Data processing
digital data
induction
logging
oil production
transformation
url https://ieeexplore.ieee.org/document/11005472/
work_keys_str_mv AT zukhraabdiakhmetova integrationofmachinelearningandwaveletalgorithmsforprocessingprobingsignalsanexampleofoilwells
AT zhanerketemirbekova integrationofmachinelearningandwaveletalgorithmsforprocessingprobingsignalsanexampleofoilwells