用稀释法降低重质原油粘度:预测共混物运动粘度的新关系式

S. Mohammadi, M. A. Sobati, M. Sadeghi
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引用次数: 3

摘要

稀释是现有的各种降低重质原油粘度的方法之一。在这种方法中,重质原油与溶剂或较轻的油混合,以达到一定的粘度。因此,需要精确的混合规则来估计共混物的粘度。在这项工作中,建立了计算原油和稀释剂共混物运动粘度的新经验模型。利用遗传算法确定模型的参数。共混物粘度的850个数据点(即717个基于重量分数的数据和133个基于体积分数的数据)从文献中获得。基于体积分数的模型预测的绝对平均相对偏差(AARD(%))为8.73。基于权重分数模型的二元和三元共混物的AARD值(AARD %)分别为7.30和10.15。提出的相关性与文献中其他可用的相关性进行了比较,如Koval, Chevron, Parkash, Maxwell, Wallace和Henry,以及Cragoe。对比结果证实了新提出的相关性预测精度较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Viscosity Reduction of Heavy Crude Oil by Dilution Methods: New Correlations for the Prediction of the Kinematic Viscosity of Blends
Dilution is one of the various existing methods in reducing heavy crude oil viscosity. In this method, heavy crude oil is mixed with a solvent or lighter oil in order to achieve a certain viscosity. Thus, precise mixing rules are needed to estimate the viscosity of blend. In this work, new empirical models are developed for the calculation of the kinematic viscosity of crude oil and diluent blends. Genetic algorithm (GA) is utilized to determine the parameters of the proposed models. 850 data points on the viscosity of blends (i.e. 717 weight fraction-based data and 133 volume fraction-based data) were obtained from the literature. The prediction result for the volume fraction-based model in terms of the absolute average relative deviation (AARD (%)) was 8.73. The AARD values of the binary and ternary blends of the weight fraction-based model (AARD %) were 7.30 and 10.15 respectively. The proposed correlations were compared with other available correlations in the literature such as Koval, Chevron, Parkash, Maxwell, Wallace and Henry, and Cragoe. The comparison results confirm the better prediction accuracy of the newly proposed correlations.
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