LAPSE:2024.0885v1
Published Article

LAPSE:2024.0885v1
New Method for Logging Evaluation of Total Organic Carbon Content in Shale Reservoirs Based on Time-Domain Convolutional Neural Network
June 7, 2024
Abstract
Total organic carbon (TOC) content is a key indicator for determining the hydrocarbon content of shale. The current model for calculating the TOC content of shale is relatively simplistic, the modeling process is cumbersome, and the parameters involved are influenced by subjective factors, which have certain shortcomings. To address this problem, a time-domain convolutional neural network (TCN) model for predicting total organic carbon content based on logging sequence information was established by starting from logging sequence information, conducting logging parameter sensitivity analysis experiments, prioritizing logging-sensitive parameters as model feature vectors, and constructing a TCN network. Meanwhile, to overcome the problem of an insufficient sample size, a five-fold cross-validation method was used to train the TCN model and obtain the weight matrix with the minimum error, and then a shale reservoir TOC content prediction model based on the TCN model was established. The model was applied to evaluate the TOC logging of the Lianggaoshan Formation in the Sichuan Basin, China, and the predicted results were compared with the traditional ΔlogR model. The results indicate that the TCN model predicts the TOC content more accurately than the traditional model, as demonstrated by laboratory tests. This leads to a better application effect. Additionally, the model fully explores the relationship between the logging curve and the total organic carbon content, resulting in improved accuracy of the shale TOC logging evaluation.
Total organic carbon (TOC) content is a key indicator for determining the hydrocarbon content of shale. The current model for calculating the TOC content of shale is relatively simplistic, the modeling process is cumbersome, and the parameters involved are influenced by subjective factors, which have certain shortcomings. To address this problem, a time-domain convolutional neural network (TCN) model for predicting total organic carbon content based on logging sequence information was established by starting from logging sequence information, conducting logging parameter sensitivity analysis experiments, prioritizing logging-sensitive parameters as model feature vectors, and constructing a TCN network. Meanwhile, to overcome the problem of an insufficient sample size, a five-fold cross-validation method was used to train the TCN model and obtain the weight matrix with the minimum error, and then a shale reservoir TOC content prediction model based on the TCN model was established. The model was applied to evaluate the TOC logging of the Lianggaoshan Formation in the Sichuan Basin, China, and the predicted results were compared with the traditional ΔlogR model. The results indicate that the TCN model predicts the TOC content more accurately than the traditional model, as demonstrated by laboratory tests. This leads to a better application effect. Additionally, the model fully explores the relationship between the logging curve and the total organic carbon content, resulting in improved accuracy of the shale TOC logging evaluation.
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Keywords
logging evaluation, shale reservoir, time-domain convolutional neural network, total organic carbon content
Suggested Citation
Yang W, Hu X, Liu C, Zheng G, Yan W, Zheng J, Zhu J, Chen L, Wang W, Wu Y. New Method for Logging Evaluation of Total Organic Carbon Content in Shale Reservoirs Based on Time-Domain Convolutional Neural Network. (2024). LAPSE:2024.0885v1
Author Affiliations
Yang W: Research Institute of Petroleum Exploration and Development, Xinjiang Oilfield Company, PetroChina, Karamay 834000, China [ORCID]
Hu X: Research Institute of Petroleum Exploration and Development, Xinjiang Oilfield Company, PetroChina, Karamay 834000, China
Liu C: Research Institute of Petroleum Exploration and Development, Xinjiang Oilfield Company, PetroChina, Karamay 834000, China
Zheng G: Research Institute of Petroleum Exploration and Development, Xinjiang Oilfield Company, PetroChina, Karamay 834000, China
Yan W: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China; National Key Laboratory for Multi-Resources Collaborative Green Production of Continental Shale Oil, Daqing 163453, China
Zheng J: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Zhu J: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Chen L: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Wang W: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Wu Y: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Hu X: Research Institute of Petroleum Exploration and Development, Xinjiang Oilfield Company, PetroChina, Karamay 834000, China
Liu C: Research Institute of Petroleum Exploration and Development, Xinjiang Oilfield Company, PetroChina, Karamay 834000, China
Zheng G: Research Institute of Petroleum Exploration and Development, Xinjiang Oilfield Company, PetroChina, Karamay 834000, China
Yan W: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China; National Key Laboratory for Multi-Resources Collaborative Green Production of Continental Shale Oil, Daqing 163453, China
Zheng J: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Zhu J: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Chen L: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Wang W: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Wu Y: PetroChina Daqing Oilfield Co., Ltd., Daqing 163453, China
Journal Name
Processes
Volume
12
Issue
3
First Page
610
Year
2024
Publication Date
2024-03-19
ISSN
2227-9717
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PII: pr12030610, Publication Type: Journal Article
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LAPSE:2024.0885v1
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https://doi.org/10.3390/pr12030610
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[v1] (Original Submission)
Jun 7, 2024
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