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The Application of Artificial Neural Networks for the Prediction of Oil Production Flow Rate

机译:人工神经网络在产油量预测中的应用

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摘要

Estimation of oil production flow rate, where direct rate measurement is not feasible, is a challenge faced by petroleum engineers in some fields throughout the world. In such situations, oil flow rate is commonly estimated using empirical correlations. In some cases, significant error is inherent in application of the empirical correlations and yields inaccurate results. This study presents a new methodology for prediction of oil flow rate in two-phase flow of oil and gas through wellhead chokes using the artificial neural network technique. The developed model predicts oil flow rate as functions of choke upstream pressure, choke size, and producing gas to oil ratio. The accuracy of the developed model was compared with some popular empirical correlations. Results of comparison showed that oil flow rates predicted by the new model are in excellent agreement with actual measured data.
机译:在无法进行直接速率测量的情况下,估算石油生产流量是世界各地某些领域的石油工程师面临的挑战。在这种情况下,通常使用经验相关性估算机油流速。在某些情况下,经验相关性的应用会固有很大的误差,从而导致结果不准确。这项研究提出了一种新的方法,用于使用人工神经网络技术预测通过井口扼流圈的油气两相流中的油流量。所开发的模型预测油流量是节流上游压力,节流阀尺寸和生产气油比的函数。将开发模型的准确性与一些流行的经验相关性进行了比较。比较结果表明,新模型预测的油流量与实际测得的数据非常吻合。

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