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Prediction performance advantages of deep machine learning algorithms for two-phase flow rates through wellhead chokes

机译:深层机器学习算法的预测性能优势通过井口扼流圈的两相流率

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Two-phase flow rate estimation of liquid and gas flow through wellhead chokes is essential for determining and monitoring production performance from oil and gas reservoirs at specific well locations. Liquid flow rate (QL) tends to be nonlinearly related to these influencing variables, making empirical correlations unreliable for predictions applied to different reservoir conditions and favoring machine learning (ML) algorithms for that purpose. Recent advances in deep learning (DL) algorithms make them useful for predicting wellhead choke flow rates for large field datasets and suitable for wider application once trained. DL has not previously been applied to predict QL?from a large oil field. In this study, 7245 multi-well data records from Sorush oil field are used to compare the QL?prediction performance of traditional empirical, ML and DL algorithms based on four influencing variables: choke size (D64), wellhead pressure (Pwh), oil specific gravity (γo) and gas–liquid ratio (GLR). The prevailing flow regime for the wells evaluated is critical flow. The DL algorithm substantially outperforms the other algorithms considered in terms of QL?prediction accuracy. The DL algorithm predicts QL?for the testing subset with a root-mean-squared error (RMSE) of 196 STB/day and coefficient of determination (R2) of 0.9969 for Sorush dataset. The QL?prediction accuracy of the models evaluated for this dataset can be arranged in the descending order: DL?>?DT?>?RF?>?ANN?>?SVR?>?Pilehvari?>?Baxendell?>?Ros?>?Glbert?>?Achong. Analysis reveals that input variable GLR has the greatest, whereas input variable D64?has the least relative influence on dependent variable QL.
机译:通过井口扼流圈的液体和气体流量的两相流量估计对于在特定井位置的油气储层确定和监测生产性能至关重要。液体流速(Q1)往往与这些影响变量是非线性相关的,这对于应用于不同的储层条件和利用机器学习(ML)算法的预测来实现经验相关性。深度学习的最新进展(DL)算法使它们有用用于预测大型现场数据集的井口扼流圈流速,并适合培训曾经更广泛的应用。以前没有应用DL以预测QL?来自大型油田。在本研究中,来自Sorush油田的7245个多孔数据记录用于比较QL?基于四个影响变量的传统经验,ML和DL算法的预测性能:Choke尺寸(D64),井口压力(PWH),油比重(γO)和气液比(GLR)。评估的井的主要流动制度是临界流。 DL算法基本上优于QL所考虑的其他算法?预测精度。 DL算法预测QL?对于具有196 STB / Day的根均方误差(RMSE)的测试子集和索利子数据集的0.9969的确定系数(R2)。 QL?对该数据集进行评估的模型的预测精度可以按降序排列:DL?>?>?>?rf?>?Ann?>?svr?>?鼠瓦里?>?Baxendell?>? >?glbert?> achong。分析表明,输入变量GLR最大,而输入变量D64?对从属变量QL的相对影响最小。

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