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Prediction of permeate flux and ionic compounds rejection of sugar beet press water nanofiltration using artificial neural networks

机译:利用人工神经网络预测甜菜压榨水的纳滤渗透通量和离子化合物截留率

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摘要

Artificial neural network (ANN) models were used to predict the permeate flux and rejection of ionic compounds (Na~+, K~+, Ca~(2+), Mg~(2+), SO_4~(2-), Cl~-) of sugar beet press water through polyamide nanofiltration membrane. Experimental data was obtained at different transmembrane pressures (10,15 and 20 bar), temperatures (25, 40 and 55℃) and feed concentrations (1-3 °Bx). The effect of the number of training points, the number of hidden neurons (H), type of transfer function and learning rule on the accuracy of prediction were studied. According to the results obtained for the best ANNs, 15% of the data was used to generate the model for the prediction of flux, and cross validation was performed with 40% of the total data. Independent flux predictions were also determined for the remaining 45% of the data. While for the prediction of the rejection of ionic compounds, 50%, 25% and 25% of the total data was used to learn the network, cross validation and testing ANN model, respectively. The modeling results showed that the overall agreement between ANN predictions and experimental data was excellent for both permeate flux and rejections (r = 0.998 and r = 0.974, respectively). Furthermore, sensitivity analysis indicated that temperature and Brix have the most effect on the prediction of flux and rejections (except for Ca rejection) by ANN, respectively.
机译:人工神经网络(ANN)模型用于预测离子化合物(Na〜+,K〜+,Ca〜(2 +),Mg〜(2 +),SO_4〜(2-),Cl 〜-)的甜菜压榨水通过聚酰胺纳米过滤膜。在不同的跨膜压力(10、15和20 bar),温度(25、40和55℃)和进料浓度(1-3°Bx)下获得实验数据。研究了训练点数,隐藏神经元数(H),传递函数类型和学习规则对预测准确性的影响。根据获得最佳ANN的结果,将15%的数据用于生成流量预测模型,并使用总数据的40%进行交叉验证。还确定了剩余数据的45%的独立通量预测。预测离子化合物的排斥反应时,分别使用总数据的50%,25%和25%来学习网络,交叉验证和测试ANN模型。建模结果表明,人工神经网络预测和实验数据之间的总体一致性对于渗透通量和截留率都是极好的(分别为r = 0.998和r = 0.974)。此外,敏感性分析表明,温度和白利糖度分别对ANN预测通量和除渣(除Ca除渣)影响最大。

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