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Prediction of reservoir brine properties using radial basis function (RBF) neural network

机译:使用径向基函数(RBF)神经网络预测储层盐水特性

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摘要

Aquifers, which play a prominent role as an effective tool to recover hydrocarbon from reservoirs, assist the production of hydrocarbon in various ways. In so-called water flooding methods, the pressure of the reservoir is intensified by the injection of water into the formation, increasing the capacity of the reservoir to allow for more hydrocarbon extraction. Some studies have indicated that oil recovery can be increased by modifying the salinity of the injected brine in water flooding methods. Furthermore, various characteristics of brines are required for different calculations used within the petroleum industry. Consequently, it is of great significance to acquire the exact information about PVT properties of brine extracted from reservoirs. The properties of brine that are of great importance are density, enthalpy, and vapor pressure. In this study, radial basis function neural networks assisted with genetic algorithm were utilized to predict the mentioned properties. The root mean squared error of 0.270810, 0.455726, and 1.264687 were obtained for reservoir brine density, enthalpy, and vapor pressure, respectively. The predicted values obtained by the proposed models were in great agreement with experimental values. In addition, a comparison between the proposed model in this study and a previously proposed model revealed the superiority of the proposed GA-RBF model.
机译:含水层作为从储层中开采碳氢化合物的有效工具发挥着重要作用,它以各种方式辅助碳氢化合物的生产。在所谓的注水方法中,通过将水注入地层中来增强储层的压力,从而增加了储层的容量以允许更多的烃提取。一些研究表明,通过注水方法改变注入盐水的盐度可以提高采油率。此外,对于石油工业中使用的不同计算,需要盐水的各种特性。因此,获得有关从储层中提取的盐水的PVT特性的准确信息具有重要意义。盐水非常重要的特性是密度,焓和蒸气压。在这项研究中,径向基函数神经网络结合遗传算法被用来预测所提到的特性。对于储层盐水密度,焓和蒸气压,均方根误差为0.270810、0.455726和1.264687。提出的模型获得的预测值与实验值非常吻合。此外,本研究中提出的模型与先前提出的模型之间的比较揭示了提出的GA-RBF模型的优越性。

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