IEEE Access (Jan 2020)

The Connectivity Evaluation Among Wells in Reservoir Utilizing Machine Learning Methods

  • Shuyi Du,
  • Ruifei Wang,
  • Chenji Wei,
  • Yuhe Wang,
  • Yuanchun Zhou,
  • Jiulong Wang,
  • Hongqing Song

DOI
https://doi.org/10.1109/ACCESS.2020.2976910
Journal volume & issue
Vol. 8
pp. 47209 – 47219

Abstract

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Machine learning is becoming prevalent increasingly for reservoir characteristics analysis in the petroleum industry. This investigation proposes an alternative way for evaluating interwell connectivity in oil fields utilizing machine learning. In this study, three-dimensional convolutional neural network (CNN) was utilized to establish a deep learning model, which can invert interwell connectivity combining with dynamic production data. Different from traditional methods that try to construct mathematical formulas to calculate the connectivity among wells basing on physical laws, deep learning model can capture autonomously the changing characteristics of dynamic production data by training continuously and provide a potential to characterize the interwell connectivity accurately without physical model. At the same time, the back propagation (BP) neural network has also been built to analyze the prediction performance, which are compared with CNN. The results demonstrate that CNN has better performance in predicting the connectivity with the overall AARD below 15.35%. Moreover, the connectivity predicted by CNN is closest to the real connectivity factor compared with some traditional methods. The evaluation method on interwell connectivity proposed by this paper provides effective guidance for the secondary development of both conventional and unconventional reservoirs.

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