首页> 外文会议>ASME Fluids Engineering Division summer meeting >MACHINE LEARNING APPROACH TO PREDICT THE FLOW RATE FOR AN IMMISCIBLE TWO-PHASE FLOW AT PORE SCALE FOR ENHANCED OIL RECOVERY APPLICATION
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MACHINE LEARNING APPROACH TO PREDICT THE FLOW RATE FOR AN IMMISCIBLE TWO-PHASE FLOW AT PORE SCALE FOR ENHANCED OIL RECOVERY APPLICATION

机译:机器学习方法来预测两相流不相交的流量,以提高采油率

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Due to global demand for energy, there is a need to maximize oil extraction from wet reservoir sedimentary formations, which implies the efficient extraction of oil at the pore scale. The approach involves pressurizing water into the wetting oil pore of the rock for displacing and extracting the oil. The two-phase flow is complicated because of the behavior of the fluid flow at the pore scale, and capillary quantities such as surface tension, viscosities, pressure drop, radius of the medium, and contact angle become important. In the present work, we use machine learning algorithms in TensorFlow to predict the volumetric flow rate for a given pressure drop, surface tension, viscosity and geometry of the pores. The TensorFlow software library was developed by the Google Brain team and is one of the most powerful tools for developing machine learning workflows. Machine learning models can be trained on data and then these models are used to make predictions. In this paper, the predicted values for a two-phase flow of various pore sizes and liquids are validated against the numerical and experimental results in the literature.
机译:由于全球对能量的需求,需要最大化从湿储层沉积地层中采油,这意味着在孔隙规模上有效地采油。该方法涉及将水加压到岩石的润湿油孔中,以驱替和提取油。由于流体在孔尺度上的流动特性,两相流变得复杂,并且毛细管量(例如表面张力,粘度,压降,介质半径和接触角)变得很重要。在当前工作中,我们使用TensorFlow中的机器学习算法来预测给定压降,表面张力,黏度和孔隙几何形状的体积流量。 TensorFlow软件库由Google Brain团队开发,是用于开发机器学习工作流程的最强大的工具之一。可以在数据上训练机器学习模型,然后使用这些模型进行预测。在本文中,针对各种孔径和液体的两相流的预测值已针对文献中的数值和实验结果进行了验证。

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