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Research Article

Prediction of gas production potential based on machine learning in shale gas field: a case study

, ORCID Icon, , , &
Pages 6581-6601 | Received 07 Apr 2022, Accepted 07 Jul 2022, Published online: 18 Jul 2022
 

ABSTRACT

Productivity prediction is an important aspect of oil and gas exploration and development. As the amount of field data has increased, traditional engineering methods have begun to face challenges. The prediction of shale gas well production is influenced by geological, drilling, and completion characteristics. The relationship between variables is highly nonlinear and non-intuitive. In this study, 384 production well data were collected, including 14 input features and one output feature, with a total of 5,760 data points, 80% of which were used for training processes and 20% for testing processes. Four machine learning methods, namely an extreme gradient lifting tree, random forest, artificial neural network and support vector machine, were used to construct a shale gas well productivity prediction model. It was found that the machine learning method could accurately can well reflect the nonlinear relationship between the influencing factors and productivity. After the data were entered into the model training, regression evaluation indexes, such as the determination coefficient R2, were used for measurement. Compared with other models, the support vector machine regression model with gamma (kernel coefficient) and C (punish coefficient) values of 1 and kernel function as the radial basis function have smaller errors. The mean absolute, mean square, and root mean square errors were 0.062, 0.006, and 0.077, respectively. The R2 values for the training and testing sets were 0.861 and 0.843, respectively. The results indicated that the prediction accuracy of the support vector machine regression model is higher, and the accuracy of the training set reached 86%. The productivity prediction method we provide has a good guiding significance for other gas well productivity predictions while greatly reducing the uncertainty of gas field development and production.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

This work was supported by the National Natural Science Foundation of China [51304032].

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