首页> 外文期刊>International Journal of Greenhouse Gas Control >Evaluation of density, viscosity, surface tension and CO2 solubility for single, binary and ternary aqueous solutions of MDEA, PZ and 12 common ILs by using artificial neural network (ANN) technique
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Evaluation of density, viscosity, surface tension and CO2 solubility for single, binary and ternary aqueous solutions of MDEA, PZ and 12 common ILs by using artificial neural network (ANN) technique

机译:使用人工神经网络(ANN)技术评估MDEA,PZ和12种常见IL的单一,二元和三元水溶液的密度,粘度,表面张力和CO2溶解度

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In this study, density, viscosity, surface tension and CO2 solubility for single, binary and ternary aqueous solutions of N-methyldiethanolamine (MDEA), piperazine (PZ) and 12 common ionic liquids (ILs) were predicted by applying artificial neural network (ANN) technique. The input data included operating temperature (293.15-373.15K) and pressure (0.177-3938.400 kPa) in addition to the weight fractions of aqueous solutions of MDEA, PZ and ILs which were respectively in the range of (0.0-1.0), (0.0-0.09) and (0.0-1.0) as well as the molecular weight of ILs (148.18-505.00 g/mol) and their acentric factors (0.325-1.261). More than 2600 experimental data points for density, viscosity, surface tension and CO2 solubility were collected from literature. By using the Levenberg-Marquardt back-propagation and tan-sigmoid as learning algorithm and transfer function, respectively, four ANN models were examined to treat these data. It was found that the best ANN architectures for predicting these properties were respectively (7:3:0:1), (7:6:0:1), (7:4:0:1) and (7:10:0:1). The calculated properties were compared with the corresponding experimental data which indicated a negligible error. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在这项研究中,通过应用人工神经网络(ANN)预测了N-甲基二乙醇胺(MDEA),哌嗪(PZ)和12种常见离子液体(ILs)的单,二元和三元水溶液的密度,粘度,表面张力和CO2溶解度)技术。输入数据包括MDEA,PZ和ILs水溶液的重量分数分别在(0.0-1.0),(0.0)范围内的工作温度(293.15-373.15K)和压力(0.177-3938.400 kPa) -0.09)和(0.0-1.0)以及IL的分子量(148.18-505.00 g / mol)及其无心因子(0.325-1.261)。从文献中收集了2600多个密度,粘度,表面张力和CO2溶解度的实验数据点。通过分别使用Levenberg-Marquardt反向传播和tan乙状结肠作为学习算法和传递函数,检查了四个ANN模型来处理这些数据。发现用于预测这些属性的最佳ANN架构分别是(7:3:0:1),(7:6:0:1),(7:4:0:1)和(7:10:0 :1)。将计算出的特性与相应的实验数据进行比较,表明误差可以忽略不计。 (C)2016 Elsevier Ltd.保留所有权利。

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