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The Development of an Artificial Neural Network Model for Prediction of Crude Oil Viscosities

机译:预测原油粘度的人工神经网络模型的开发

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摘要

Oil viscosity is one of the main parameters that plays a governing role in reservoir fluid calculations, fluid flow through porous media, enhanced oil recovery methods, pipeline designs, etc., so it is of great importance to use an accurate method to calculate the oil viscosity at various operating conditions. In the literature, several empirical correlations have been proposed for predicting oil viscosity. However, these correlations are not able to predict the oil viscosity adequately for a wide range of conditions. In the present work, extensive experimental data of dead, saturated, and undersaturated oil viscosities from different samples of Iranian oil reservoirs were applied to develop an artificial neural network (ANN) model to predict and calculate the oil viscosity. By comparing the obtained results using the developed ANN model and other correlations with experimental data, it was observed that there is more qualitative and quantitative agreement between ANN model results and experimental data. Furthermore, the developed ANN model shows more accurate prediction over a wide range of operating conditions.
机译:油粘度是在储层流体计算,通过多孔介质的流体流量,提高采油率的方法,管道设计等方面起主导作用的主要参数之一,因此使用精确的方法来计算油是非常重要的。在各种操作条件下的粘度。在文献中,已经提出了几种经验相关性来预测油的粘度。但是,这些相关性不能在广泛的条件下充分预测油的粘度。在目前的工作中,伊朗石油储层不同样品中死,饱和和不饱和油粘度的大量实验数据被用于开发人工神经网络(ANN)模型,以预测和计算油的粘度。通过使用开发的ANN模型将获得的结果与其他相关性与实验数据进行比较,可以观察到ANN模型的结果与实验数据之间存在更多的定性和定量一致性。此外,已开发的ANN模型可在各种运行条件下显示出更准确的预测。

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