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Phase equilibria prediction of solid solute in supercritical carbon dioxide with and without a cosolvent: The use of artificial neural network

机译:有或没有助溶剂的超临界二氧化碳中固体溶质的相平衡预测:人工神经网络的使用

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In this study, a back-propagation multi-layer neural network was developed to predict the solubility of solid solute in supercritical carbon dioxide with and without cosolvent. The solubility of anthracene in CO_2 with cosolvents, acetone, ethanol and cyclohexane were employed as model systems to investigate the supercritical carbon dioxide behaviour in ternary systems over a wide range of temperatures. The back-propagation neural network operated in a supervised learning mode. A number of networks were trained and tested with different network parameters using training and testing data sets. To establish the network applicability, a validating data set was used and the predictability of the network was statistically evaluated. Statistical estimations showed that the neural network predictions had an excellent agreement with experimental data. The calculated average relative deviation (ARD) and the root mean squared error (RMSD) for tested ANNs data points were 5.45% and 0.74%, respectively. A minimum number of data points have been employed to train the ANN. The predicted ARD and RMSD for the employed ternary systems were 7.83% and 0.07%, respectively. The results obtained in this work indicate that ANN is a superior technique with high level of accuracy for prediction of solubility of solid solute in ternary systems.
机译:在这项研究中,建立了一个反向传播的多层神经网络来预测固体溶质在有或没有助溶剂的情况下在超临界二氧化碳中的溶解度。蒽在二氧化碳中的溶解度与助溶剂,丙酮,乙醇和环己烷一起用作模型系统,以研究在宽温度范围内三元系统中超临界二氧化碳的行为。反向传播神经网络以监督学习模式运行。使用训练和测试数据集,使用不同的网络参数对许多网络进行了训练和测试。为了建立网络的适用性,使用了验证数据集,并对网络的可预测性进行了统计评估。统计估计表明,神经网络预测与实验数据具有极好的一致性。经测试的人工神经网络数据点的计算平均相对偏差(ARD)和均方根误差(RMSD)分别为5.45%和0.74%。已采用最少数量的数据点来训练ANN。使用的三元系统的预测ARD和RMSD分别为7.83%和0.07%。在这项工作中获得的结果表明,人工神经网络是一种用于预测三元系统中固体溶质溶解度的高精度的高级技术。

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