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Evolving LSSVM and ELM models to predict solubility of non - hydrocarbon gases in aqueous electrolyte systems

机译:不断发展的LSSVM和ELM模型以预测非烃类气体在水性电解质系统中的溶解度

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Due to lack of a comprehensive and accurate predictive model for estimation of non-hydrocarbon (N-2 and CO2) solubility in the aqueous system, the main aim of the present study is the suggestion of new estimation tools for non-hydrocarbons solubility in the different aqueous solutions. To this end, two computational-based models, including extreme learning machine (ELM) and least-squares support vector machine (LSSVM), have been implemented. These models have excellent backgrounds in the estimation of behaviors of fluids. The non-hydrocarbon solubility values of LSSVM and ELM algorithms have been compared with this dataset in visual and mathematical methods. Furthermore, the sensitivity analysis has been employed to identify the amount of impacts of aforementioned parameters on solubility of non-hydrocarbons. These reliable investigations can help researchers to successfully estimate the main thermodynamic parameters which have important roles in optimization of design of industrial plants such as natural gas processing units. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于缺乏估计在水系统中的非烃(N-2和CO2)溶解度的全面和准确的预测模型,本研究的主要目的是对非碳氢化合物溶解性的新估算工具的建议不同的水溶液。为此,已经实现了两个基于计算的基于计算的模型,包括极限学习机(ELM)和最小二乘支持向量机(LSSVM)。这些模型在估计流体的行为中具有出色的背景。将LSSVM和ELM算法的非烃溶解度值与视觉和数学方法中的该数据集进行了比较。此外,已经采用敏感性分析来鉴定上述参数对非烃溶解度的影响。这些可靠的调查可以帮助研究人员成功地估计主要的热力学参数,这些参数具有重要作用,以优化天然气处理单元等工业设备的设计。 (c)2020 elestvier有限公司保留所有权利。

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