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首页> 外文期刊>Journal of food engineering >Modeling the performance of batch ultrafiltration of synthetic fruit juice and mosambi juice using artificial neural network
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Modeling the performance of batch ultrafiltration of synthetic fruit juice and mosambi juice using artificial neural network

机译:使用人工神经网络对合成果汁和莫桑比克果汁的批次超滤性能进行建模

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Neural network models have been used to describe the permeate flux and permeate concentration (total soluble solid) profiles during the ultrafiltration of synthetic fruit juice and mosambi juice dynamically. It aims to predict the permeate flux and total soluble solid of the permeate as a function of transmembrane pressure, sucrose, pectin concentration in the feed and the processing time. A multi-layer feed forward network structure with input, output and hidden layer(s) is used in this study. The back-propagation algorithm is utilized in training of ANN models. Two neural network models are constructed to predict the permeate flux and the total soluble solids in the permeate using the filtration data of the synthetic juice. The modeling results showed that there is an agreement between the experimental data and predicted values, with mean absolute errors less than 1% of the experimental data. Also the trained networks are able to capture accurately the non-linear dynamics of synthetic fruit juice and the actual mosambi juice even for a new condition that has not been used in the training process.
机译:神经网络模型已用于动态描述合成果汁和莫桑比克果汁的超滤过程中的渗透通量和渗透浓度(总可溶性固体)分布。它旨在预测渗透液的通量和总可溶性固形物与跨膜压力,蔗糖,果胶在饲料中的浓度和加工时间的关系。本研究使用具有输入,输出和隐藏层的多层前馈网络结构。反向传播算法用于训练ANN模型。使用合成汁液的过滤数据,构建了两个神经网络模型来预测渗透流量和渗透物中的总可溶性固体。建模结果表明,实验数据与预测值之间存在一致性,平均绝对误差小于实验数据的1%。而且,即使对于训练过程中未使用的新条件,受过训练的网络也能够准确捕获合成果汁和实际莫桑比果汁的非线性动力学。

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