Assessment of big data analytics based ensemble estimator module for the real-time prediction of reservoir recovery factor

Title

Assessment of big data analytics based ensemble estimator module for the real-time prediction of reservoir recovery factor

Subject

Machine learning
Gasoline
Recovery
Big data
Uncertainty analysis
Gas industry
Mean square error
Decision trees
Data Analytics
Radial basis function networks
Random errors

Description

Production of oil & gas depends upon the recoverable amount of hydrocarbon existing beneath the underlying reservoir. Reservoir recovery factor provides of the production potential of 'proven reservoirs' which helps the planning of field development and production. Estimation of reservoir recovery factor, with a good degree of accuracy, is still a challenging task for engineers due to the high level of uncertainty, large inexactness, noise, and high dimensionality associated with reservoir measurements. In this paper, we propose a big data-driven 'ensemble estimator' (E2) module, comprising of wavelet associated ensemble models for the estimation of reservoir recovery factor. All the ensemble models in E2 were trained on big reservoir data and tested with unknown reservoir data samples obtained from U.S.A. oil & gas fields. Bagging and Random forest ensembles have been utilized to correlate several reservoir properties with reservoir recovery factor. Further, E2 utilizes Relief algorithm to understand the significance of reservoir properties effecting the recovery factor of a reservoir. The proposed E2 module has provided impressive estimation results for the determination of reservoir recovery factor with minimum prediction error. Random forest has given the highest coefficient of correlation (R2=0.9592) and minimum estimation errors viz. mean absolute error (MAE=0.0234) and root mean square error (RMSE=0.0687). The performance of the proposed E2 module was also compared with conventional estimators viz. Radial basis function, Multilayer perceptron, Regression tree and Support vector regression. The experimental results have demonstrated the supremacy of E2 over conventional learners for the estimation of reservoir recovery factor. 2019, Society of Petroleum Engineers.
2019-March

Creator

Tewari, Saurabh
Dwivedi, U.D.
Shiblee, Mohammed

Publisher

SPE Middle East Oil and Gas Show and Conference 2019, MEOS 2019, March 18, 2019 - March 21, 2019

Date

2019

Type

conferencePaper

Identifier

10.2118/194996-ms

Citation

Tewari, Saurabh, Dwivedi, U.D., and Shiblee, Mohammed, “Assessment of big data analytics based ensemble estimator module for the real-time prediction of reservoir recovery factor,” Lamar University Midstream Center Research, accessed May 18, 2024, https://lumc.omeka.net/items/show/28509.

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