Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an Example

The total organic carbon content (TOC) is a core indicator for shale gas reservoir evaluations. Machine learning-based models can quickly and accurately predict TOC, which is of great significance for the production of shale gas. Based on conventional logs, the measured TOC values, and other data of...

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Main Authors: Jia Rong, Zongyuan Zheng, Xiaorong Luo, Chao Li, Yuping Li, Xiangfeng Wei, Quanchao Wei, Guangchun Yu, Likuan Zhang, Yuhong Lei
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Geofluids
Online Access:http://dx.doi.org/10.1155/2021/6794213
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spelling doaj-7e4dc4fa80e649178774d91afc65f9732021-10-04T01:59:23ZengHindawi-WileyGeofluids1468-81232021-01-01202110.1155/2021/6794213Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an ExampleJia Rong0Zongyuan Zheng1Xiaorong Luo2Chao Li3Yuping Li4Xiangfeng Wei5Quanchao Wei6Guangchun Yu7Likuan Zhang8Yuhong Lei9Key Laboratory of Petroleum Resources ResearchKey Laboratory of Petroleum Resources ResearchKey Laboratory of Petroleum Resources ResearchKey Laboratory of Petroleum Resources ResearchExploration Branch Company of SINOPECExploration Branch Company of SINOPECExploration Branch Company of SINOPECExploration Branch Company of SINOPECKey Laboratory of Petroleum Resources ResearchKey Laboratory of Petroleum Resources ResearchThe total organic carbon content (TOC) is a core indicator for shale gas reservoir evaluations. Machine learning-based models can quickly and accurately predict TOC, which is of great significance for the production of shale gas. Based on conventional logs, the measured TOC values, and other data of 9 typical wells in the Jiaoshiba area of the Sichuan Basin, this paper performed a Bayesian linear regression and applied a random forest machine learning model to predict TOC values of the shale from the Wufeng Formation and the lower part of the Longmaxi Formation. The results showed that the TOC value prediction accuracy was improved by more than 50% by using the well-trained machine learning models compared with the traditional ΔLogR method in an overmature and tight shale. Using the halving random search cross-validation method to optimize hyperparameters can greatly improve the speed of building the model. Furthermore, excluding the factors that affect the log value other than the TOC and taking the corrected data as input data for training could improve the prediction accuracy of the random forest model by approximately 5%. Data can be easily updated with machine learning models, which is of primary importance for improving the efficiency of shale gas exploration and development.http://dx.doi.org/10.1155/2021/6794213
collection DOAJ
language English
format Article
sources DOAJ
author Jia Rong
Zongyuan Zheng
Xiaorong Luo
Chao Li
Yuping Li
Xiangfeng Wei
Quanchao Wei
Guangchun Yu
Likuan Zhang
Yuhong Lei
spellingShingle Jia Rong
Zongyuan Zheng
Xiaorong Luo
Chao Li
Yuping Li
Xiangfeng Wei
Quanchao Wei
Guangchun Yu
Likuan Zhang
Yuhong Lei
Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an Example
Geofluids
author_facet Jia Rong
Zongyuan Zheng
Xiaorong Luo
Chao Li
Yuping Li
Xiangfeng Wei
Quanchao Wei
Guangchun Yu
Likuan Zhang
Yuhong Lei
author_sort Jia Rong
title Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an Example
title_short Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an Example
title_full Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an Example
title_fullStr Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an Example
title_full_unstemmed Machine Learning Method for TOC Prediction: Taking Wufeng and Longmaxi Shales in the Sichuan Basin, Southwest China as an Example
title_sort machine learning method for toc prediction: taking wufeng and longmaxi shales in the sichuan basin, southwest china as an example
publisher Hindawi-Wiley
series Geofluids
issn 1468-8123
publishDate 2021-01-01
description The total organic carbon content (TOC) is a core indicator for shale gas reservoir evaluations. Machine learning-based models can quickly and accurately predict TOC, which is of great significance for the production of shale gas. Based on conventional logs, the measured TOC values, and other data of 9 typical wells in the Jiaoshiba area of the Sichuan Basin, this paper performed a Bayesian linear regression and applied a random forest machine learning model to predict TOC values of the shale from the Wufeng Formation and the lower part of the Longmaxi Formation. The results showed that the TOC value prediction accuracy was improved by more than 50% by using the well-trained machine learning models compared with the traditional ΔLogR method in an overmature and tight shale. Using the halving random search cross-validation method to optimize hyperparameters can greatly improve the speed of building the model. Furthermore, excluding the factors that affect the log value other than the TOC and taking the corrected data as input data for training could improve the prediction accuracy of the random forest model by approximately 5%. Data can be easily updated with machine learning models, which is of primary importance for improving the efficiency of shale gas exploration and development.
url http://dx.doi.org/10.1155/2021/6794213
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