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A Neuro-Fuzzy Model for a Dynamic Prediction of Milk Ultrafiltration Flux and Resistance

机译:动态预测牛奶超滤通量和阻力的神经模糊模型

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摘要

A neuro-fuzzy modeling tool (ANFIS) has been used to dynamically model cross flow ultrafiltration of milk. It aims to predict permeate flux and total hydraulic resistance as a function of transmembrane pressure, pH, temperature, fat, molecular weight cut off, and processing time. Dynamic modeling of ultrafiltration performance of colloidal systems (such as milk) is very important for designing of a new process and better understanding of the present process. Such processes show complex non-linear behavior due to unknown interactions between compounds of a colloidal system. In this paper, ANFIS, Multilayer Perceptron (MLP) and FIS were applied to compare results. The ANFIS approximation gave some advantage over the other methods. The results reveal that there is an excellent agreement between the tested (not used in training) and modeled data, with a good degree of accuracy. Furthermore, the trained ANFIS are capable of accurately capture the non-linear dynamics of milk ultrafiltration even for a new condition that has not been used in the training process (tested data). In addition, ANFIS and Multilayer Perceptron (MLP) are compared and the Matlab software was adopted to implement the method.
机译:神经模糊建模工具(ANFIS)已用于动态建模牛奶的交叉流超滤。它旨在预测渗透通量和总水力阻力与跨膜压力,pH,温度,脂肪,截留分子量和处理时间的关系。胶体系统(例如牛奶)超滤性能的动态建模对于设计新工艺和更好地理解当前工艺非常重要。由于胶体系统化合物之间未知的相互作用,这种过程显示出复杂的非线性行为。本文采用ANFIS,多层感知器(MLP)和FIS进行比较。与其他方法相比,ANFIS逼近具有一些优势。结果表明,测试数据(在训练中未使用)和建模数据之间具有很好的一致性,并且准确性很高。此外,经过训练的ANFIS即使在训练过程中尚未使用的新条件(测试数据)下,也能够准确捕获牛奶超滤的非线性动力学。此外,比较了ANFIS和多层感知器(MLP),并采用Matlab软件来实现该方法。

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