Explainable Machine Learning-Based Method for Fracturing Prediction of Horizontal Shale Oil Wells

Author:

Liu Xinju12,Zhang Tianyang3ORCID,Yang Huanying1,Qian Shihao3ORCID,Dong Zhenzhen3,Li Weirong3ORCID,Zou Lu3,Liu Zhaoxia4,Wang Zhengbo4,Zhang Tao2,Lin Keze2

Affiliation:

1. Petrochina Changqing Oilfield Company, Xi’an 710021, China

2. State Key Laboratory of Oil and Gas Resources and Exploration, China University of Petroleum (Beijing), Beijing 102249, China

3. Ptroleum Engineering Department, Xi’an Shiyou University, Xi’an 710065, China

4. Research Institute of Petroleum Exploration and Development, PetroChina, Beijing 100083, China

Abstract

Hydraulic fracturing is a crucial method in shale oil development, and predicting production after hydraulic fracturing is one of the challenges in shale oil development. Conventional methods for predicting production include analytical methods and numerical simulation methods, but these methods involve many parameters, have high uncertainty, and are time-consuming and costly. With the development of shale oil development, there are more and more sample data on the geological parameters, engineering parameters, and development parameters of shale oil hydraulic fracturing, making it possible to use machine learning methods to predict production after hydraulic fracturing. This article first analyzes the impact of different parameters on initial production and recoverable reserves based on field data from Chang-7 shale oil in the Ordos Basin of China. Then, using the Particle Swarm Optimization (PSO) algorithm and the Gradient Boosting Decision Tree (GBDT) algorithm, machine learning models for initial production and recoverable reserves are established. The Local Interpretable Model-Agnostic Explanations (LIME) and Shapley Additive exPlanations (SHAP) explanation methods are used to explain the models. The study found that initial production is highly correlated with parameters such as the number of fracturing stages and fracturing fluid volume, while recoverable reserves are significantly related to parameters such as well spacing, area, and reserver-controlled. The PSO-GBDT model established in this study has an accuracy of over 85% and can be used for production prediction and subsequent parameter optimization research. By comparing the LIME and SHAP local explanation methods, it is shown that different explanation methods can obtain reasonable and credible local explanation results. This article establishes a high-precision shale oil well production prediction model and two model interpretation methods, which could provide technical support for shale oil well production prediction and production analysis.

Publisher

MDPI AG

Subject

Process Chemistry and Technology,Chemical Engineering (miscellaneous),Bioengineering

Reference30 articles.

1. Development potential and technical strategy of continental shale oil in China;Hu;Pet. Explor. Dev.,2020

2. Lu, Y. (2016). Advances and Applications of Fracturing Technology in Shale Reservoirs, Petroleum Industry Press.

3. Li, Z., Li, F., and Huang, Z. (2010). The key role of hydraulic fracturing in oil and gas field exploration and development. Oil Gas Geol. Recovery, 17.

4. Liang, Z. (2022). Dense cutting and multi-cluster volume fracturing technology for horizontal wells in well block 30 of Dongsheng gas field. Pet. Geol. Eng., 36.

5. Ling, T. (2022). Study on Optimization of Horizontal Well Fracturing in Shale Oil, Northeastern Petroleum University.

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