Interpretable machine learning optimization (InterOpt) for operational parameters: A case study of highly-efficient shale gas development

被引:6
作者
Chen, Yun-Tian [1 ]
Zhang, Dong-Xiao [1 ,2 ,3 ,5 ]
Zhao, Qun [4 ]
Liu, De-Xun [4 ]
机构
[1] Eastern Inst Adv Study, Ningbo 315200, Zhejiang, Peoples R China
[2] Peng Cheng Lab, Dept Math & Theories, Shenzhen 518055, Guangdong, Peoples R China
[3] Southern Univ Sci & Technol, Natl Ctr Appl Math Shenzhen NCAMS, Shenzhen 518055, Guangdong, Peoples R China
[4] CNPC, Res Inst Petr Explorat & Dev, Beijing 100083, Peoples R China
[5] Eastern Inst Adv Study, Ningbo 315200, Zhejiang, Peoples R China
基金
中国国家自然科学基金;
关键词
Interpretable machine learning; Operational parameters optimization; Shapley value; Shale gas development; Neural network; NUMERICAL-SIMULATION; SWEET SPOTS; LEAVE-ONE; MODEL; STABILITY; INSIGHTS;
D O I
10.1016/j.petsci.2022.12.017
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
An algorithm named InterOpt for optimizing operational parameters is proposed based on interpretable machine learning, and is demonstrated via optimization of shale gas development. InterOpt consists of three parts: a neural network is used to construct an emulator of the actual drilling and hydraulic fracturing process in the vector space (i.e., virtual environment); the Sharpley value method in interpretable machine learning is applied to analyzing the impact of geological and operational parameters in each well (i.e., single well feature impact analysis); and ensemble randomized maximum likelihood (EnRML) is conducted to optimize the operational parameters to comprehensively improve the efficiency of shale gas development and reduce the average cost. In the experiment, InterOpt provides different drilling and fracturing plans for each well according to its specific geological conditions, and finally achieves an average cost reduction of 9.7% for a case study with 104 wells.& COPY; 2023 The Authors. Publishing services by Elsevier B.V. on behalf of KeAi Communications Co. Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/ 4.0/).
引用
收藏
页码:1788 / 1805
页数:18
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