Forecasting formation density from well logging data based on machine learning model

Formation density can reflect the pressure state and fluid migration of the reservoir, which is crucial for the re-development of depleted reservoirs. Although various prediction models have been developed using density inversion, the Terzaghi correction, and machine learning techniques, these model...

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Main Authors: Xiankang Cheng, Haoyu Zhang
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-06-01
Series:Frontiers in Earth Science
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Online Access:https://www.frontiersin.org/articles/10.3389/feart.2025.1530234/full
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author Xiankang Cheng
Haoyu Zhang
Haoyu Zhang
author_facet Xiankang Cheng
Haoyu Zhang
Haoyu Zhang
author_sort Xiankang Cheng
collection DOAJ
description Formation density can reflect the pressure state and fluid migration of the reservoir, which is crucial for the re-development of depleted reservoirs. Although various prediction models have been developed using density inversion, the Terzaghi correction, and machine learning techniques, these models are difficult to meet the high-precision requirements during the calculation process. This fact limits their effectiveness in oil and gas exploration and development. However, the formation density and the detector counting rate during well logging process exhibit a nonlinear relationship. A system structure integrating Convolutional neural network (CNN) and Transformer is suggested to accomplish the goal of automatic formation density prediction and solve the problem of insufficient model feature extraction ability under multiple logging data conditions. The reason for adopting the integrated structure is to enhance prediction accuracy and robustness through collaborative optimization of multiple models. The CNN mainly extracts feature regions of interest and Transformer encoder is utilized to assign high weights to the regions of interest. The CNN-Transformer model also includes the novel S-shaped Rectified Linear Activation Unit (S-ReLU) function. Based on the counting rates of the detector’s energy windows, the Pearson correlation coefficient method is applied for feature selection. Bayesian optimization combined with K-fold cross validation is used to fine-tune the key model hyperparameters. The proposed CNN-Transformer model is compared with the traditional inversion model, the CNN model and the Transformer model in terms of prediction accuracy. The results demonstrate that the CNN-Transformer model offers greater robustness and smaller prediction deviations than other machine learning models. This study provides a reliable and fast approach for predicting formation density while minimizing exploration cost and improving exploration efficiency for oil and gas.
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spelling doaj-art-7823e0770cf74ac0970b36a1075bb2632025-08-20T03:09:57ZengFrontiers Media S.A.Frontiers in Earth Science2296-64632025-06-011310.3389/feart.2025.15302341530234Forecasting formation density from well logging data based on machine learning modelXiankang Cheng0Haoyu Zhang1Haoyu Zhang2China Coal Research Insitute, Beijing, ChinaCollege of Geological and Surveying Engineering, Taiyuan University of Technology, Taiyuan, ChinaState Key Laboratory of Petroleum Resources and Prospecting, China University of Petroleum, Beijing, ChinaFormation density can reflect the pressure state and fluid migration of the reservoir, which is crucial for the re-development of depleted reservoirs. Although various prediction models have been developed using density inversion, the Terzaghi correction, and machine learning techniques, these models are difficult to meet the high-precision requirements during the calculation process. This fact limits their effectiveness in oil and gas exploration and development. However, the formation density and the detector counting rate during well logging process exhibit a nonlinear relationship. A system structure integrating Convolutional neural network (CNN) and Transformer is suggested to accomplish the goal of automatic formation density prediction and solve the problem of insufficient model feature extraction ability under multiple logging data conditions. The reason for adopting the integrated structure is to enhance prediction accuracy and robustness through collaborative optimization of multiple models. The CNN mainly extracts feature regions of interest and Transformer encoder is utilized to assign high weights to the regions of interest. The CNN-Transformer model also includes the novel S-shaped Rectified Linear Activation Unit (S-ReLU) function. Based on the counting rates of the detector’s energy windows, the Pearson correlation coefficient method is applied for feature selection. Bayesian optimization combined with K-fold cross validation is used to fine-tune the key model hyperparameters. The proposed CNN-Transformer model is compared with the traditional inversion model, the CNN model and the Transformer model in terms of prediction accuracy. The results demonstrate that the CNN-Transformer model offers greater robustness and smaller prediction deviations than other machine learning models. This study provides a reliable and fast approach for predicting formation density while minimizing exploration cost and improving exploration efficiency for oil and gas.https://www.frontiersin.org/articles/10.3389/feart.2025.1530234/fullformation density predictionreal-timewell logging parametersCNN-Transformer modelformation density error
spellingShingle Xiankang Cheng
Haoyu Zhang
Haoyu Zhang
Forecasting formation density from well logging data based on machine learning model
Frontiers in Earth Science
formation density prediction
real-time
well logging parameters
CNN-Transformer model
formation density error
title Forecasting formation density from well logging data based on machine learning model
title_full Forecasting formation density from well logging data based on machine learning model
title_fullStr Forecasting formation density from well logging data based on machine learning model
title_full_unstemmed Forecasting formation density from well logging data based on machine learning model
title_short Forecasting formation density from well logging data based on machine learning model
title_sort forecasting formation density from well logging data based on machine learning model
topic formation density prediction
real-time
well logging parameters
CNN-Transformer model
formation density error
url https://www.frontiersin.org/articles/10.3389/feart.2025.1530234/full
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