用人工神经网络计算井口油流量的一种新关联

Reda Abdel Azim
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引用次数: 0

摘要

分离器和多相流量计被认为是测量地面油流量最精确的工具。然而,这些工具既昂贵又耗时。因此,本研究旨在建立一种关系式,以便准确、快速地评价井面流量,从而得出井流入动态关系。为了达到上述目的,本研究将人工神经网络(ANN)用于人工举升井的流量预测,特别是在没有井口压力数据的情况下。利用从尼罗河三角洲和埃及西部沙漠的多个油田收集的350个数据点开发和验证了人工神经网络模型,输入包括;井口温度、气液比、含水率、地面和井底温度、含水率、地面产量、油管横截面面积和井深。本研究结果表明,收集到的数据分布如下:60%用于培训,30%用于测试,10%用于验证过程,R2为0.96,均方误差(MSE)为0.02。将新的人工神经网络相关性与其他已发表的相关性(Gilbert, Ros和Achong相关性)进行比较研究,以显示所开发的相关性的稳健性。结果表明,所建立的相关关系能够以最小的均方误差准确预测油流量。
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A new correlation for calculating wellhead oil flow rate using artificial neural network

A separator and multiphase flow meters are considered the most accurate tools used to measure the surface oil flow rates. However, these tools are expensive and time consuming. Thus, this study aims to develop a correlation for accurate and quick evaluation of well surface flow rates and consequently the well inflow performance relationship. In order to achieve the abovementioned aim, this study uses artificial neural network (ANN) for flow rates prediction particularly in artificial lifted wells especially in the absence of wellhead pressure data. The ANN model is developed and validated by utilizing 350 data points collected from numerous fields located in Nile Delta and Western Desert of Egypt with inputs include; wellhead temperature, gas liquid ratio, water cut, surface and bottomhole temperatures, water cut, surface production rates, tubing cross section area, and well depth. The results of this study show that, the collected data are distributed as follows; 60% for training, 30% for testing and 10% for the validation processes with R2 of 0.96 and mean square error (MSE) of 0.02. A comparison study is implemented between the new ANN correlation and other published correlations (Gilbert, Ros and Achong correlations) to show the robustness of the developed correlation. The results show that the developed correlation able to predict oil flow rates accurately with the lowest mean square error.

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