4.5 Article

A vector-to-sequence based multilayer recurrent network surrogate model for history matching of large-scale reservoir

期刊

出版社

ELSEVIER
DOI: 10.1016/j.petrol.2022.110548

关键词

History matching; Surrogate modeling; Recurrent neural network; Normalization method

资金

  1. National Natural Science Foundation of China [51722406, 52074340, 51874335]
  2. Shan-dong Provincial Natural Science Foundation [JQ201808]
  3. Fundamental Research Funds for the Central Universities [18CX02097A]
  4. Major Scientific and Technological Projects of CNPC [ZD 2019-183-008]
  5. Science and Technology Support Plan for Youth Innovation of University in Shandong Province [2019KJH002]
  6. National Science and Technology Major Project of China [2016ZX05025001-006]
  7. 111 Project [B08028]

向作者/读者索取更多资源

This study focuses on utilizing recurrent neural networks (RNN) to construct a surrogate model for history matching. The proposed multilayer RNN surrogate model, MLGRU, is used to approximate the mapping from geological realizations to production data. The efficiency and effectiveness of the MLGRU model are analyzed and validated through numerical experiments on both 2D and large-scale 3D reservoir models.
History matching can estimate the parameter of spatially varying geological properties and provide reliable numerical models for reservoir development and management. However, in practice, high-dimension, multiple-solutions and computational cost are key issues that restrict the application of history matching methods. Recently, the combination of deep-learning-based surrogate model and sampling algorithm has been widely studied in history matching to overcome the limitations. Considering that real-world large-scale reservoirs often have hundreds of thousands or even millions of grid-based uncertain parameters, extracting spatial features using convolutional neural networks requires a lot of computational cost and storage requirements. Therefore, in this work, we mainly study how to use the recurrent neural network (RNN) to construct the surrogate model for history matching. Specifically, we propose a multilayer RNN surrogate model based on a vector-to-sequence modeling framework. The multilayer RNN surrogate model with gated recurrent unit (GRU), termed MLGRU, is developed to approximate the mapping from feature vector of geological realizations to the production data. The feature vector is the low-dimensional representation of geological parameter fields after using the re-parameterization method, while production data are the simulation results of historical period. In addition, we design a log-transformation-based windowed normalization (LTWN) method for the production data, which can enhance the learnability and features of production data. The MLGRU model is incorporated into a multi -modal estimation of distribution algorithm (MEDA) to formulate a history matching workflow. The hyper-parameters and performance of the proposed MLGRU model are analyzed by numerical experiments on a 2D reservoir model. Furthermore, numerical experiments performed on the Brugge benchmark model, a large-scale 3D reservoir model, demonstrated the performance of the proposed surrogate model and history matching method.

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