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Modelling of submerged membrane flocculation hybrid systems using statistical and artificial neural networks methods

机译:使用统计和人工神经网络方法对淹没膜絮凝混合系统建模

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摘要

Hybrid membrane filtration processes involve complex physical, chemical and biological phenomena, thus their mechanistic modelling is challenging. The chief advantages of statistical and artificial neural networks (ANN) models (data-driven models) are that they do not require assumptions and simplifications to establish relationships from data. This paper investigates the characteristics and performance of several data-driven methods to model a hybrid membrane system. The focus is on the application of regression analysis and artificial intelligence based methods to a steady-state system. Among empirically based approaches, ANN neural networks methods were found to be very useful to predict permeate quality and membrane fouling. In the past multivariate nonlinear regression had barely been investigated for process modelling in water and waste water treatment. In this study polynomial multivariate nonlinear regression showed a superior performance. Multivariate parametric nonlinear models could match the performance of the nonparametric ANN models in the empirical modelling of complex systems, especially when combined with advanced optimization methods. This paper gives the methodology of how one could optimize a membrane hybrid system using ANN, validating it with one set of data. The same procedure/methodology can be applied to similar systems.
机译:混合膜过滤过程涉及复杂的物理,化学和生物现象,因此其机械模型具有挑战性。统计和人工神经网络(ANN)模型(数据驱动模型)的主要优点是,它们不需要进行假设和简化即可从数据建立关系。本文研究了几种数据驱动方法来模拟混合膜系统的特性和性能。重点是将回归分析和基于人工智能的方法应用于稳态系统。在基于经验的方法中,发现ANN神经网络方法对于预测渗透质量和膜污染非常有用。过去,对于水和废水处理的过程建模,几乎没有研究多元非线性回归。在这项研究中,多项式多元非线性回归显示出优异的性能。多元参数非线性模型可以在复杂系统的经验建模中匹配非参数ANN模型的性能,特别是与先进的优化方法结合使用时。本文提供了一种方法,该方法可以使用ANN优化膜混合系统,并用一组数据对其进行验证。相同的过程/方法可以应用于相似的系统。

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