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An intelligent modeling approach for prediction of thermal conductivity of CO2

机译:一种预测CO2导热系数的智能建模方法

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In the design of a carbon dioxide capture and storage (CCS) process, the thermal conductivity of carbon dioxide is of special concern. Hence, it is quite important to search for a quick and accurate determination of thermal conductivity of CO2 for precise modeling and evaluation of such a process. To achieve this aim, a robust computing methodology, entitled least square support vector machine (LSSVM) modeling, which is coupled with an optimization approach, was used to model this transport property. The model was constructed and evaluated employing a comprehensive data bank (more than 550 data series) covering wide ranges of pressures and temperatures. Before constructing the model, outlier detection was performed on the whole data bank to diagnose and delete erroneous measurements and doubtful data from the experimental dataset. It was found that the proposed LSSVM model had a very accurate prediction of thermal conductivity of CO2 with an average absolute relative error of 0.79% and a coefficient of determination of 0.999. In addition, more than 90% of the experimental data points were estimated with an absolute relative error smaller than 2% by the developed model. (C) 2015 Elsevier B.V. All rights reserved.
机译:在二氧化碳捕集与封存(CCS)过程的设计中,二氧化碳的热导率是特别值得关注的。因此,寻找一种快速,准确地确定CO2导热系数以进行此类过程的精确建模和评估非常重要。为了实现此目标,使用了一种名为最小二乘支持向量机(LSSVM)建模的鲁棒计算方法,并结合了一种优化方法来对该传输特性进行建模。该模型的构建和评估使用了涵盖广泛压力和温度范围的综合数据库(550多个数据系列)。在构建模型之前,对整个数据库进行离群值检测,以诊断和删除实验数据集中的错误测量值和可疑数据。发现所提出的LSSVM模型具有非常精确的CO2导热系数预测,平均绝对相对误差为0.79%,确定系数为0.999。此外,开发的模型估计超过90%的实验数据点的绝对相对误差小于2%。 (C)2015 Elsevier B.V.保留所有权利。

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