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首页> 外文期刊>The Journal of Supercritical Fluids >Vapor liquid equilibrium prediction of carbon dioxide and hydrocarbon systems using LSSVM algorithm
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Vapor liquid equilibrium prediction of carbon dioxide and hydrocarbon systems using LSSVM algorithm

机译:用LSSVM算法预测二氧化碳和碳氢化合物系统的汽液相平衡。

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Many supercritical processes, like monomer separation depends crucially on VLE data. The need of simple, robust and general method, which can overcome deficiencies of EOSs, especially in critical regions, is obvious. In this study, a mathematical algorithm based on Least-Squares Support Vector Machine (LSSVM) has been developed for simulating 425 VLE data of seven CO2/hydrocarbon binary mixtures in supercritical or near critical conditions. The target value, bubble point/dew point pressure, is considered as a function of reduced temperature, hydrocarbon mole fraction and the hydrocarbons acentric factor and critical pressure. The proposed LSSVM model with its magnificent R-2 of 0.9932 and AARD% of 3.61 is proving able to predict VLE data of CO2/hydrocarbon binary mixture in a very precise manner. In addition, comparison of LSSVM with EOSs indicates its supremacy over conventional methods. A sensitivity analysis, with three different methods, was performed on the independent variables in an effort to determine the relative importance of each one. At the end with the aid of Leverage statistical algorithm, the statistical validity of the model was guaranteed and proved that the majority of the data points are in the applicability domain of the proposed LSSVM. (C) 2014 Elsevier B.V. All rights reserved.
机译:许多超临界过程,例如单体分离,都主要取决于VLE数据。很明显,需要简单,稳健和通用的方法来克服EOS的不足,尤其是在关键区域。在这项研究中,开发了一种基于最小二乘支持向量机(LSSVM)的数学算法,用于在超临界或接近临界条件下模拟7种CO2 /烃二元混合物的425 VLE数据。目标值,气泡点/露点压力,被认为是降低的温度,碳氢化合物的摩尔分数以及碳氢化合物的无心因素和临界压力的函数。所提出的LSSVM模型的R-2值为0.9932,AARD%为3.61,被证明能够以非常精确的方式预测CO2 /烃二元混合物的VLE数据。另外,LSSVM与EOS的比较表明它比传统方法具有更高的优势。为了确定每个变量的相对重要性,对独立变量执行了三种不同方法的敏感性分析。最后借助杠杆统计算法,保证了模型的统计有效性,并证明了大多数数据点都在所提出的LSSVM的适用范围内。 (C)2014 Elsevier B.V.保留所有权利。

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