4.6 Article

A deep-learning-based prediction method of the estimated ultimate recovery (EUR) of shale gas wells

Journal

PETROLEUM SCIENCE
Volume 18, Issue 5, Pages 1450-1464

Publisher

KEAI PUBLISHING LTD
DOI: 10.1016/j.petsci.2021.08.007

Keywords

Shale gas; Estimated ultimate recovery; Deep learning; Deep feedforward neural network

Funding

  1. National Science and Technology Major Projects of China [2016ZX05037-006-005, 2016ZX05037-006, 2016ZX05035-004]

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This paper develops a deep-learning algorithm for predicting the EUR of shale gas wells based on geological, hydraulic fracturing, and production data. The approach shows high accuracy and is influenced by various factors such as input parameters and network structure. The proposed method can be extended to other shale fields with similar technical processes.
The estimated ultimate recovery (EUR) of shale gas wells is influenced by many factors, and the accurate prediction still faces certain challenges. As an artificial intelligence algorithm, deep learning yields notable advantages in nonlinear regression. Therefore, it is feasible to predict the EUR of shale gas wells based on a deep-learning algorithm. In this paper, according to geological evaluation data, hydraulic fracturing data, production data and EUR evaluation results of 282 wells in the WY shale gas field, a deep-learning-based algorithm for EUR evaluation of shale gas wells was designed and realized. First, the existing EUR evaluation methods of shale gas wells and the deep feedforward neural network algorithm was systematically analyzed. Second, the technical process of a deep-learning-based algorithm for EUR prediction of shale gas wells was designed. Finally, by means of real data obtained from the WY shale gas field, several different cases were applied to testify the validity and accuracy of the proposed approach. The results show that the EUR prediction with high accuracy. In addition, the results are affected by the variety and number of input parameters, the network structure and hyperparameters. The proposed approach can be extended to other shale fields using the similar technic process. (c) 2021 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 license (http://creativecommons.org/licenses/by/4.0/).

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