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首页> 外文期刊>Journal of Petroleum Science & Engineering >Predictive model for bottomhole pressure based on machine learning
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Predictive model for bottomhole pressure based on machine learning

机译:基于机器学习的井井压力预测模型

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The objective of this work is to develop a predictive model for multiphase wellbore flows using the machine learning approach. The artificial neural network is developed and then trained on the dataset generated using the numerical simulator of the full-scale transient wellbore flows. After the training is completed, the neural network is used to predict one of the key parameters of the wellbore flow, namely, the bottomhole pressure. The novelty of this work is related to the application of the neural network to analyze highly transient processes taking place in wellbores. In such processes, most of the parameters of interest can be represented by interdependent time series of variables linked through complex physical phenomena pertinent to the nature of multiphase flows. The proposed neural network with two hidden layers demonstrated the capability to predict the bottomhole pressure within 5% of the normalized root mean squared error for many complex wellbore configurations and flows. It is also shown that relatively higher prediction errors are mainly observed in the case of slug flows where the transient nature of flows is pronounced the most. Finally, the developed model is tested on data affected by noise. It is demonstrated that although the error of prediction slightly increases in contrast to the data without noise, the model captures essential features of the studied transient process. Description of the developed models, analysis of various test use cases, and possible future research directions are outlined.
机译:这项工作的目的是使用机器学习方法开发用于多相井筒流动的预测模型。开发人工神经网络,然后在使用全尺寸瞬态井筒流动的数值模拟器生成的数据集上培训。在完成训练之后,神经网络用于预测井筒流动的关键参数之一,即底孔压力。这项工作的新颖性与神经网络的应用有关,分析韦尔伯勒斯发生的高瞬态过程。在这样的过程中,大多数感兴趣的参数可以通过与多相流的性质相关的复杂物理现象链接的相互依存时间序列来表示。具有两个隐藏层的所提出的神经网络证明了预测井下压力在归一化井筒配置和流量的归一化根部均方误差的5%内的能力。还示出了在裂隙流的情况下主要观察到相对较高的预测误差,其中流动的瞬态性质最发音。最后,开发的模型在受噪声影响的数据上进行测试。据证明,尽管预测误差与没有噪声的数据相比略微增加,但是模型捕获所研究的瞬态过程的基本特征。开发模型的描述,概述了各种测试用例的分析,以及可能的未来研究方向。

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