Use of Polymer Membranes for Modeling Desulfurization in the Process of Pervaporation through Artificial Neural Network

M. Kazemimoghadam, N. Sadeghi
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引用次数: 2

Abstract

The present study considered the amount of thiophene_alkane separation within the process of pervaporation by use of-of membrane polyethylene glycol and polydimethylsiloxane-polyacrylonitrile with the help of Artificial Neural Network Modeling. In this research, the effects of such parameters as Volumetric flow rate and temperature, as well as feedstuff properties (separation factor and flux) on the Desulfurization process efficiency were evaluated, and the Multi Layers Perceptron (MLP) neural network feed forward along with Propagation learning algorithm and Levenberg-Marquardt function with inputs and outputs were implemented. Tansig activation algorithm was used for the hidden layer, and Purelin algorithm was utilized for the output layer. Furthermore, 5 neurons were defined for the hidden layer. After processing the data, 70 percent were allocated for learning, 15% were allocated for validity, and the remaining 15% was allocated for the experience. The achieved results with the aforementioned method had a suitable accuracy. The graphs of the error percentage for the actual values of the separation factor and flux outputs were compared to the achieved values from modeling through related membranes for evaluating the efficiency of pervaporation process in a separation of ethanol, Acetone, and butanol from the water. Finally, the graphs were drawn.
利用人工神经网络模拟聚合物膜在渗透蒸发过程中的脱硫作用
本研究利用人工神经网络模型研究了膜聚乙二醇和聚二甲基硅氧烷-聚丙烯腈渗透汽化过程中噻吩烷的分离量。研究了体积流量、温度、原料性质(分离因子、通量)等参数对脱硫过程效率的影响,实现了具有输入和输出的多层感知器(MLP)神经网络前馈与传播学习算法和Levenberg-Marquardt函数。隐藏层采用Tansig激活算法,输出层采用Purelin算法。进一步,定义5个神经元作为隐藏层。数据处理后,70%分配给学习,15%分配给效度,剩下的15%分配给体验。用上述方法得到的结果具有合适的精度。将分离因子和通量输出的实际值的误差百分比图与通过相关膜模拟获得的值进行比较,以评估乙醇、丙酮和丁醇从水中分离的渗透蒸发过程的效率。最后,绘制了图形。
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