An efficient data-driven global sensitivity analysis method of shale gas production through convolutional neural network

被引:0
|
作者
Liang Xue [1 ,2 ]
Shuai Xu [1 ,2 ]
Jie Nie [3 ]
Ji Qin [1 ,2 ]
JiangXia Han [1 ,2 ]
YueTian Liu [1 ,2 ]
QinZhuo Liao [1 ,2 ]
机构
[1] State Key Laboratory of Petroleum Resources and Engineering, China University of Petroleum (Beijing)
[2] Department of Oil-Gas Field Development Engineering, College of Petroleum Engineering, China University of Petroleum (Beijing)
[3] Chuanqing Drilling Engineering CoLtd, China National Petroleum
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中图分类号
TP183 [人工神经网络与计算]; TE328 [油气产量与可采储量];
学科分类号
摘要
The shale gas development process is complex in terms of its flow mechanisms and the accuracy of the production forecasting is influenced by geological parameters and engineering parameters. Therefore, to quantitatively evaluate the relative importance of model parameters on the production forecasting performance, sensitivity analysis of parameters is required. The parameters are ranked according to the sensitivity coefficients for the subsequent optimization scheme design. A data-driven global sensitivity analysis(GSA) method using convolutional neural networks(CNN) is proposed to identify the influencing parameters in shale gas production. The CNN is trained on a large dataset, validated against numerical simulations, and utilized as a surrogate model for efficient sensitivity analysis. Our approach integrates CNN with the Sobol' global sensitivity analysis method, presenting three key scenarios for sensitivity analysis: analysis of the production stage as a whole, analysis by fixed time intervals, and analysis by declining rate. The findings underscore the predominant influence of reservoir thickness and well length on shale gas production. Furthermore, the temporal sensitivity analysis reveals the dynamic shifts in parameter importance across the distinct production stages.
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页码:2475 / 2484
页数:10
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