Machine Learning for Proxy Modeling of Dynamic Reservoir Systems: Deep Neural Network DNN and Recurrent Neural Network RNN Applications

Soumi Chaki, Yevgeniy Zagayevskiy, Xuebei Shi, Wong Terry, Zainub Noor
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引用次数: 8

Abstract

A methodology to construct deep neural network- (DNN) and recurrent neural network- (RNN) based proxy flow models is presented; these can reduce computational time of the flow simulation runs in the routine reservoir engineering workflows, such as history matching or optimization. A comparison of these two techniques shows that the DNN model generates predictions more quickly, but the RNN model provides better quality. In addition, RNN-based proxy flow models can make predictions for times after those included in the training data set. Both approaches can reduce computational time by a factor of up to 100 in comparison to the full-physics flow simulator. An example of the proxy flow model application is successfully demonstrated in an exhaustive search history matching exercise. All developments are shown on a synthesized Brugge petroleum reservoir.
动态储层系统代理建模的机器学习:深度神经网络DNN和循环神经网络RNN应用
提出了一种基于深度神经网络(DNN)和递归神经网络(RNN)的代理流模型构建方法;这可以减少常规油藏工程工作流程中流动模拟运行的计算时间,例如历史匹配或优化。这两种技术的比较表明,深度神经网络模型生成预测更快,但RNN模型提供更好的质量。此外,基于rnn的代理流模型可以在训练数据集中包含的时间之后进行预测。与全物理流模拟器相比,这两种方法都可以将计算时间减少多达100倍。在详尽的搜索历史匹配练习中,成功地演示了代理流模型应用程序的一个示例。所有的开发都显示在一个合成的布鲁日油藏上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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