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首页> 外文期刊>Petroleum Science and Technology >A CSA-LSSVM Model to Estimate Diluted Heavy Oil Viscosity in the Presence of Kerosene
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A CSA-LSSVM Model to Estimate Diluted Heavy Oil Viscosity in the Presence of Kerosene

机译:用CSA-LSSVM模型估算存在煤油的稀释重油粘度

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Viscosity is one of the properties that has important role in enhanced oil recovery processes, simulating reservoirs, and designing production facilities. Therefore, measurement and calculation of its accurate value is worthwhile. While the experimental methods for measurement of viscosity are expensive and time consuming, some credible correlations were developed to predict the viscosity with enough accuracy. For this purpose, in this study a balky data bank was gathered from open literature sources, and then one machine learning based approach called least square support vector machine (LSSVM) was utilized for prediction of heavy and extra-heavy crude oil viscosity. The parameters of proposed model were optimized by couple simulated annealing (CSA) optimization approach. The inputs of this model are temperature and kerosene mass fraction and the only output is viscosity.
机译:粘度是在提高石油采收率,模拟油藏和设计生产设备方面具有重要作用的特性之一。因此,对其准确值进行测量和计算是值得的。虽然用于测量粘度的实验方法既昂贵又费时,但已开发出一些可靠的相关关系以足够的精度预测粘度。为此,在本研究中,从公开的文献资源中收集了一个粗俗的数据库,然后将一种基于机器学习的方法称为最小二乘支持向量机(LSSVM)来预测重质和超重质原油的粘度。通过耦合模拟退火优化方法对提出的模型参数进行了优化。该模型的输入是温度和煤油的质量分数,唯一的输出是粘度。

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