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A comparison between semi-theoretical and empirical modeling of cross-flow microfiltration using ANN

机译:基于人工神经网络的错流微滤半理论模型与经验模型的比较

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摘要

The applicability of semi-empirical and artificial neural network (ANN) modeling techniques for predicting the characteristics of a microfiltration system was assessed. Flux decline under various operating parameters in cross-flow microfiltration of BSA (bovine serum albumin) was measured. Two hydrophobic membranes were used: PES (polyethersulfone) and MCE (mixed cellulose ester) with average pore diameters of 0.22 μm and 0.45 μm, respectively. The experiments were carried out to investigate the effect of protein solution concentration and pH, trans-membrane pressure (TMP), cross-flow velocity (CFV), and membrane pore size on the trend of flux decline and membrane rejection at constant trans-membrane pressure and ambient temperature. Subsequently, the experimental flux data were modeled using both classical pore blocking and feed forward ANN models. Semi-empirical models based on classic mechanisms of fouling have been proposed. It was shown that these mechanisms could predict the microfiltration flux for a specified period of processing time; while through appropriate selection of ANN parameters such as the network structure and training algorithm, the ANN-based models are competent in modeling membrane filtration systems for all operating conditions and the entire filtration time with desired accuracy.
机译:评估了半经验和人工神经网络(ANN)建模技术在预测微滤系统特性方面的适用性。测量了在BSA(牛血清白蛋白)的交叉流微滤中各种操作参数下的通量下降。使用了两种疏水膜:PES(聚醚砜)和MCE(混合纤维素酯),其平均孔径分别为0.22μm和0.45μm。进行实验以研究蛋白质溶液浓度和pH,跨膜压(TMP),错流速度(CFV)和膜孔径对恒定跨膜通量下降和膜截留趋势的影响压力和环境温度。随后,使用经典的孔阻塞和前馈ANN模型对实验通量数据进行建模。已经提出了基于经典结垢机理的半经验模型。结果表明,这些机制可以预测特定处理时间段内的微滤通量。通过适当选择ANN参数(例如网络结构和训练算法),基于ANN的模型可以胜任所有工作条件和整个过滤时间的膜过滤系统建模,并具有所需的精度。

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