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Tree-Based Ensembles for Predicting the Bottomhole Pressure of Oil and Gas Well Flows

机译:基于树的集成体,用于预测油气井流的井底压力

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In this paper, we develop a predictive model for the multiphase wellbore flows based on ensembles of decision trees like Random Forest or XGBoost. The tree-based ensembles are trained on the time series of different physical parameters generated using the numerical simulator of the full-scale transient wellbore flows. Once the training is completed, the ensemble is used to predict one of the key parameters of the wellbore flow, namely, the bottomhole pressure. According to our recent experiments with complex wellbore configurations and flows, the normalized root mean squared error (NRMSE) of prediction below 5% can be achieved and beaten by ensembles of decision trees in comparison to artificial neural networks. Moreover, the obtained solution is more scalable and demonstrate good noise-tolerance properties. The error analysis shows that the prediction becomes particularly challenging in the case of highly transient slug flows. Some hints for overcoming these challenges and research prospects are provided.
机译:在本文中,我们基于决策树(如随机森林或XGBoost)的集合为多相井筒流量开发了预测模型。基于树的集合在使用全尺寸瞬态井筒流数值模拟器生成的不同物理参数的时间序列上进行训练。训练完成后,将使用集合体预测井眼流动的关键参数之一,即井底压力。根据我们最近对复杂井眼配置和流量进行的实验,与人工神经网络相比,决策树的集成可以达到并击败预测值的标准化均方根误差(NRMSE)低于5%。而且,所获得的解决方案具有更大的可扩展性,并表现出良好的耐噪声性能。误差分析表明,在高瞬变弹塞流的情况下,预测变得特别具有挑战性。提供了克服这些挑战和研究前景的一些提示。

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