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The Application of Artificial Neural Networks in Determination of Bubble Point Pressure for Iranian Crude Oils

机译:人工神经网络在伊朗原油起泡点压力测定中的应用

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摘要

Reservoir fluid characterization is an important issue in reservoir and production engineering calculations. Accurate determination of bubble point pressure is of major importance since it affects phase behavior of crude, which is indeed influential in further upstream and downstream computations. Several correlations have been proposed in the recent years to predict fluid properties using linear or non-linear regression and graphical techniques. In this study, artificial neural network is applied to predict bubble point pressure from reservoir temperature, solution gas oil ratio, oil API gravity, and gas specific gravity. A predictor model is developed based on 157 PVT data sets from southwest Iranian oil fields. Investigations of different network architectures show that a network with two hidden layers of six and three neurons has the best efficiency. Predictions of the developed neural network model are compared to empirical correlations. Results show that new model gives highest correlation coefficient and lowest average absolute relative error in estimation of bubble point pressure.
机译:储层流体表征是储层和生产工程计算中的重要问题。准确确定起泡点压力至关重要,因为它会影响原油的相态行为,而这实际上对进一步的上游和下游计算有影响。近年来已经提出了几种相关性,以使用线性或非线性回归和图形技术来预测流体性质。在这项研究中,将人工神经网络用于根据储层温度,溶液瓦斯油比,石油API重力和天然气比重来预测泡点压力。基于来自伊朗西南部油田的157个PVT数据集,开发了一个预测器模型。对不同网络体系结构的研究表明,具有六个和三个神经元的两个隐藏层的网络效率最高。将开发的神经网络模型的预测与经验相关性进行比较。结果表明,该模型在估计泡点压力时具有最高的相关系数和最低的平均绝对相对误差。

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