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A soft computing approach for the determination of crude oil viscosity: Light and intermediate crude oil systems

机译:确定原油粘度的软计算方法:轻中级原油系统

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摘要

Crude oil viscosity is a key property needed for petroleum engineering analysis such as evaluation of fluid flow in porous media, reservoir performance, reservoir simulation, etc. This property is traditionally measured through expensive and time consuming laboratory measurements. In this communication, about 1500 dead oil viscosity data points of light and intermediate crude oil systems from various geological locations have been collected. Afterward, a soft computing approach, namely least square support vector machine (LSSVM), has been utilized to develop two distinct viscosity models for temperatures below and above 313.15 K. The parameters of these models have been optimized using coupled simulated annealing (CSA) optimization tool. The results of this study indicated that the developed models can predict dead oil viscosity at all temperatures and oil API gravities with enough accuracy. In addition, statistical and graphical error analyses illustrated that the proposed CSA-LSSCM models outperform all of pre-existing models. Besides, the relevancy factor showed that oil API gravity has the greatest effect on dead oil viscosity. Finally, the Leverage approach demonstrated that the proposed models are statistically valid and acceptable, and only 2% of the data points may be regarded as the probable outliers. (C) 2015 Taiwan Institute of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:原油粘度是石油工程分析所需的关键属性,例如评估多孔介质中的流体流动,储层性能,储层模拟等。传统上,该属性是通过昂贵且耗时的实验室测量来测量的。通过这种通信,已经收集了来自各个地质位置的轻质和中间原油系统的大约1500个死油粘度数据点。之后,采用了一种软计算方法,即最小二乘支持向量机(LSSVM),针对温度低于313.15 K的情况开发了两个不同的粘度模型。这些模型的参数已使用耦合模拟退火(CSA)优化进行了优化。工具。这项研究的结果表明,所开发的模型可以足够准确地预测在所有温度和API重力下的死油粘度。此外,统计和图形错误分析表明,建议的CSA-LSSCM模型优于所有现有模型。另外,相关因子表明,API油比重对死油粘度的影响最大。最后,杠杆方法证明了所提出的模型在统计上是有效的并且可以接受,只有2%的数据点可被视为可能的异常值。 (C)2015台湾化学工程师学会。由Elsevier B.V.发布。保留所有权利。

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