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首页> 外文期刊>Kemija u industriji >Modelling of Adsorption of Methane, Nitrogen, Carbon Dioxide, Their Binary Mixtures, and Their Ternary Mixture on Activated Carbons Using Artificial Neural Network
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Modelling of Adsorption of Methane, Nitrogen, Carbon Dioxide, Their Binary Mixtures, and Their Ternary Mixture on Activated Carbons Using Artificial Neural Network

机译:使用人工神经网络对甲烷,氮,二氧化碳,二氧化碳,二元混合物及其三元混合物的建模

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This work examines the use of neural networks in modelling the adsorption process of gas mixtures (CO2( CH4, and N2) on different activated carbons.Seven feed-forward neural network models, characterized by different structures, were constructed with the aim of predicting the adsorption of gas mixtures.A set of 417, 625, 143, 87, 64, 64, and 40 data points for NN1 to NN7, respectively, were used to test the neural networks.Of the total data, 60 %, 20 %, and 20 % were used, respectively, for training, validation, and testing of the seven models.Results show a good fit between the predicted and experimental values for each model;good correlations were found (R = 0.99656 for NN1, R = 0.99284 for NN2, R = 0.99388 for NN3, R = 0.99639 for Q, for NN4, R = 0.99472 for Q2 for NN4, R = 0.99716 for Q, for NN5, R = 0.99752 for Q3 for NN5, R = 0.99746 for Q2 for NN6, R = 0.99783 for Q3 for NN6, R = 0.9946 for Q1 for NN7, R = 0.99089 for Q2 for NN7, and R = 0.9947 for Q3 for NN7).Moreover, the comparison between the predicted results and the classical models (Cibbs model, Generalized dual-site Langmuir model, and Ideal Adsorption Solution Theory) shows that the neural network models gave far better results.
机译:本作品探讨了神经网络在模拟气体混合物的吸附过程中的使用(CO2(CH4和N2)的不同活化碳。饲料前馈神经网络模型,其特征在于不同的结构,以预测的目的为目的构建气体混合物的吸附分别用于NN1至NN7的417,625,143,87,64,64和40个数据点,用于测试神经网络。总数据,60%,20%,分别用于培训,验证和测试七种模型的20%。结果显示了每个模型的预测和实验值之间的良好拟合;找到了良好的相关性(用于NN1的R = 0.99656,R = 0.99284对于NN4,对于NN4,对于NN4,对于NN4,Q2的Q2,对于NN5,对于NN5的NN5,R = 0.99752,对于NN5的Q3,对于NN5的Q2,R = 0.99752的NN4,R = 0.99716,用于NN6的NN5,R = 0.99752,用于NN6的Q3,用于NN6的Q2,对于NN6的Q3 Q3的R = 0.99783,对于NN7的Q1,对于NN7的Q1,对于NN7的Q1,对于NN7的Q2,对于NN7的Q3的Q2,对于NN7的Q 3的Q1).Moreover,Comp在预测结果和经典模型(CIBBS模型,广义双站点Langmuir模型和理想吸附解决方案理论)之间的途径表明,神经网络模型给出了更好的结果。

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