Field Development Optimization Using Machine Learning Methods to Identify the Optimal Water Flooding Regime

Alexey Vasilievich Timonov, A. R. Shabonas, Sergey Alexandrovich Schmidt
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Abstract

The main technology used to optimize field development is hydrodynamic modeling, which is very costly in terms of computing resources and expert time to configure the model. And in the case of brownfields, the complexity increases exponentially. The paper describes the stages of developing a hybrid geological-physical-mathematical proxy model using machine learning methods, which allows performing multivariate calculations and predicting production including various injection well operating regimes. Based on the calculations, we search for the optimal ratio of injection volume distribution to injection wells under given infrastructural constraints. The approach implemented in this work takes into account many factors (some features of the geological structure, history of field development, mutual influence of wells, etc.) and can offer optimal options for distribution of injection volumes of injection wells without performing full-scale or sector hydrodynamic simulation. To predict production, we use machine learning methods (based on decision trees and neural networks) and methods for optimizing the target functions. As a result of this research, a unified algorithm for data verification and preprocessing has been developed for feature extraction tasks and the use of deep machine learning models as input data. Various machine learning algorithms were tested and it was determined that the highest prediction accuracy is achieved by building machine learning models based on Temporal Convolutional Networks (TCN) and gradient boosting. Developed and tested an algorithm for finding the optimal allocation of injection volumes, taking into account the existing infrastructure constraints. Different optimization algorithms are tested. It is determined that the choice and setting of boundary conditions is critical for optimization algorithms in this problem. An integrated approach was tested on terrigenous formations of the West Siberian field, where the developed algorithm showed effectiveness.
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使用机器学习方法确定最佳水驱方案的油田开发优化
用于优化油田开发的主要技术是流体动力学建模,这在计算资源和专家配置模型的时间方面非常昂贵。在棕地的情况下,复杂性呈指数增长。本文描述了利用机器学习方法开发地质-物理-数学混合代理模型的各个阶段,该模型可以进行多变量计算并预测包括各种注水井操作方案在内的产量。在此基础上,在给定的基础设施约束条件下,寻找最佳的注水量分配比。本研究采用的方法考虑了许多因素(地质构造的某些特征、油田开发历史、井间相互影响等),无需进行全尺寸或分段水动力模拟,即可为注水井的注入量分布提供最佳选择。为了预测产量,我们使用机器学习方法(基于决策树和神经网络)和优化目标函数的方法。作为这项研究的结果,已经开发了一种统一的数据验证和预处理算法,用于特征提取任务和使用深度机器学习模型作为输入数据。对各种机器学习算法进行了测试,并确定通过基于时间卷积网络(TCN)和梯度增强的机器学习模型实现了最高的预测精度。在考虑现有基础设施限制的情况下,开发并测试了一种算法,用于寻找注入量的最佳分配。测试了不同的优化算法。确定了边界条件的选择和设置是该问题优化算法的关键。在西西伯利亚油田的陆源地层中测试了一种综合方法,开发的算法显示了有效性。
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