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An Application of Feed Forward Neural Network as Nonlinear Proxies for the Use During the History Matching Phase

机译:饲料前瞻性神经网络作为历史匹配阶段使用中的非线性代理的应用

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Reservoir simulation is an important tool used in the industry for reservoir management. While developing a field, a reservoir simulation model is used as a decision tool to select the best development scheme and also to forecast the oil, gas, and water production expected for the field. Uncertainties are much higher at the early phases and, when production data are gathered during the field development phase, most of the time the initial reservoir simulation model needs to be reviewed once the field observed data is not as the same as the predicted by the model. Some of these uncertainties of these input parameters are related to the reservoir rock reservoir heterogeneities. History matching techniques are used by reservoir engineers to mitigate/minimize the difference between the observed field data and the predicted data and thus assessing the uncertainties. When reservoir models become too big in terms of number of cells and features, the elapsed simulation time increases very much, making the history matching process very cumbersome and, in some cases, very difficult to achieve in an acceptable time. Parallel processing features of some commercial simulators can perform lots of simulation runs at the same time but cannot address and cannot solve the problem in a proper way. This paper presents an alternative proposition to speed up the history matching process: the application of feed-forward neural networks as nonlinear proxies of reservoir simulation. Neural networks can map the response surface in multidimensional spaces of a reservoir model (i.e. water production, bottom hole pressure etc.) or of an objective function with few number of simulations. The mapped response is then used as a substitute of reservoir simulation runs during the history matching process. The focus of this work is to shown the steps of choosing the best number of hidden layers, the neurons and the training method. An application case is presented using the workflow presented is this work and showing the validity of the proposed methodology for this complex nonlinear problem.
机译:储层仿真是水库管理行业中使用的重要工具。在开发领域时,将储层模拟模型用作决策工具,以选择最佳的开发方案,并预测该领域预期的石油,天然气和水产。早期阶段的不确定性要高得多,并且当在现场开发阶段收集生产数据时,大部分时间都需要审查初始储层模拟模型,一旦现场观察的数据与模型预测的那样相同。这些输入参数的一些不确定性与储层岩石储层异质性有关。储存匹配技术被储库工程师使用,以减轻/最小化观察到的现场数据和预测数据之间的差异,从而评估不确定性。当水库模型在细胞和特征的数量变得太大时,经过的仿真时间非常增加,使历史匹配过程非常麻烦,并且在某些情况下,在可接受的时间内很难实现。某些商业模拟器的并行处理功能可以同时执行大量的模拟运行,但无法以适当的方式解决问题,无法解决问题。本文介绍了加快历史匹配过程的替代命题:前馈神经网络的应用作为储层模拟的非线性代理。神经网络可以在储存模型的多维空间中映射响应面(即水生产,底部孔压力等)或几数量的模拟函数。然后将映射响应用作历史匹配过程中的储库仿真的替代。这项工作的重点是在选择最佳数量的隐藏层,神经元和训练方法的步骤。使用呈现的工作流呈现了一个应用程序,是这项工作,并显示了该复杂非线性问题所提出的方法的有效性。

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