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Effect of surfactant on wetting due to fouling in membrane distillation membrane: Application of response surface methodology (RSM) and artificial neural networks (ANN)

机译:表面活性剂对膜蒸馏膜结垢润湿的影响:响应表面方法(RSM)和人工神经网络(ANN)的应用

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摘要

Membrane wetting is a bottleneck that limits the widespread application of membrane distillation (MD) technologies. However, the prediction of membrane wetting is difficult, due to its unpredictable behavior with the chemical species in feed waters. We used response surface methodology (RSM) and artificial neural networks (ANN) to predict the wetting phenomena in direct contact membrane distillation (DCMD) for the treatment of synthetic wastewater. Experiments were performed at various concentrations of NaCl, CaSO4, humic acid, alginate, and sodium dodecyl sulfate (SDS) to examine their effects on the wetting. The RSM and ANN models were established using the experimental data and statistically validated by the analysis of variance (ANOVA). The results showed that both RSM and ANN are able to predict the time of wetting and recovery for the range of input variables. The model predictions suggested that the concentration of NaCl and SDS has the greatest influence on the prediction parameters. When the concentration of SDS was less than 5 mg/L, the concentration of NaCl was the dominant role in the wetting. On the other hand, the concentration of SDS was the predominant factor when the concentration of SDS was higher than 5 mg/L.
机译:膜润湿是限制膜蒸馏(MD)技术广泛应用的瓶颈。然而,由于其与给水中化学物质的不可预测行为,很难预测膜的润湿性。我们使用响应表面方法(RSM)和人工神经网络(ANN)来预测直接接触膜蒸馏(DCMD)用于处理合成废水的润湿现象。在各种浓度的NaCl,CaSO4,腐殖酸,藻酸盐和十二烷基硫酸钠(SDS)中进行实验,以检查它们对润湿的影响。使用实验数据建立RSM和ANN模型,并通过方差分析(ANOVA)进行统计验证。结果表明,RSM和ANN都能预测输入变量范围的润湿和恢复时间。模型预测表明,NaCl和SDS的浓度对预测参数的影响最大。当SDS的浓度小于5 mg / L时,NaCl的浓度是润湿的主要作用。另一方面,当SDS的浓度高于5mg / L时,SDS的浓度是主要因素。

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