Reconstruction Modeling-Driven Analysis of Shale Oil Production Dynamics Using Explainable Machine Learning CatBoost-SHAP: A Case Study from the Bohai Bay Basin

Yunliang Yu , Hongchen Cai , Changwei Chen , Quansheng Guan , Yueqi Dong , Fei Yang , Yu Cui , Mengyu Li , Zhongjie Xu , Jiacheng Zhang

Journal of Earth Science ›› 2026, Vol. 37 ›› Issue (2) : 923 -927.

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Journal of Earth Science ›› 2026, Vol. 37 ›› Issue (2) :923 -927. DOI: 10.1007/s12583-026-0606-1
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Reconstruction Modeling-Driven Analysis of Shale Oil Production Dynamics Using Explainable Machine Learning CatBoost-SHAP: A Case Study from the Bohai Bay Basin
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Yunliang Yu, Hongchen Cai, Changwei Chen, Quansheng Guan, Yueqi Dong, Fei Yang, Yu Cui, Mengyu Li, Zhongjie Xu, Jiacheng Zhang. Reconstruction Modeling-Driven Analysis of Shale Oil Production Dynamics Using Explainable Machine Learning CatBoost-SHAP: A Case Study from the Bohai Bay Basin. Journal of Earth Science, 2026, 37(2): 923-927 DOI:10.1007/s12583-026-0606-1

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