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Modelling of adsorption in rotating packed bed using artificial neural networks (ANN)

机译:使用人工神经网络(ANN)对旋转填充床中的吸附进行建模

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Rotating packed bed (RPB) exhibits good performance for absorption, distillation and extraction. However, the development of RPB was restricted by complicated liquid flow pattern on activated carbon in adsorption. Therefore, a model of artificial neural network (ANN) was adopted to predict the adsorption in RPB. The experimental data were classified into two groups, and they were training ones for establishing the model and testing ones for validating the model. Different types of ANN models, including Cascade-forward back propagation neural network (CFBPNN), Elman-forward back propagation neural network (EFBPNN) and Feed-forward back propagation neural network (FFBPNN), were investigated in this study. High gravity factor, liquid Reynolds number, adsorption time to the maximum adsorption time and packing density to liquid concentration were used as input data. While, the adsorption amount to the maximum adsorption amount was taken as output data for each model. Optimal hidden neurons for FFBPNN, EBPNN, CFBPNN were 9,12 and 8, respectively. Experimental adsorption amount data were in good agreement with the predicted data indicating that the ANN models had a superior performance. Besides, the ANN models exhibited a more accurate prediction and had more generalization ability than multiple nonlinear regression model (MNR). The proposed FFBPNN model of absorption in RPB will provide an optimization tool to maximize the adsorption amount. (C) 2016 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:旋转填充床(RPB)表现出良好的吸收,蒸馏和萃取性能。然而,RPB的发展受到吸附过程中活性炭上复杂的液体流态的限制。因此,采用了人工神经网络(ANN)模型来预测RPB中的吸附。实验数据分为两组,分别是训练模型建立模型和测试模型验证模型。本研究研究了不同类型的ANN模型,包括级联正向反向传播神经网络(CFBPNN),埃尔曼正向反向传播神经网络(EFBPNN)和前馈反向传播神经网络(FFBPNN)。高重力因子,液体雷诺数,最大吸附时间的吸附时间和液体浓度的堆积密度用作输入数据。同时,将最大吸附量的吸附量作为每个模型的输出数据。 FFBPNN,EBPNN,CFBPNN的最佳隐藏神经元分别为9,12和8。实验吸附量数据与预测数据吻合良好,表明人工神经网络模型具有优越的性能。此外,与多元非线性回归模型(MNR)相比,人工神经网络模型具有更准确的预测能力和更强的泛化能力。提出的RPBP中FFBPNN吸收模型将提供一个优化工具,以使吸附量最大化。 (C)2016年化学工程师学会。由Elsevier B.V.发布。保留所有权利。

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