Prediction of RO Membrane Performances by Use of Adaptive Network-Based Fuzzy Interference Systems

Vahid Mojjaradi, S. Sahraei
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引用次数: 1

Abstract

This study aims to develop an Adaptive Network-based Fuzzy Inference System technique (ANFIS) and using the parameters of a complex mathematical model in the RO membrane performances. The ANFIS was constructed by using a subtractive clustering method to generate initial fuzzy inference systems. The model trained by 70% of the data set and then its validity is examined by remained 30% data set. The result indicated that this method could predict the performance of the RO membrane faster and more accurately than previous numerical techniques. The squared correlation coefficient between real data and predicted data of this technique was 0.9973 for separation factor, 0.9916 for NP and 0.9975 NT, which are better in comparison with numerical methods, and previous Artificial Neural network used by the author to model these membranes. It was observed that the squash factor, reject ratio, and accept ratio has no significant effect on ANFIS performance. Results showed that for all cases better performances achieved when this parameter has a value of more than 0.5, as 0.86 for separation factor, 0.91 for net pre flux, and 0.83 for total flux. This technique just takes a few seconds to model RO membrane performance which is very faster than other numerical methods. So, this technique could be a powerful method to predict RO membranes.
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基于自适应网络模糊干扰系统的反渗透膜性能预测
本研究旨在开发一种基于自适应网络的模糊推理系统技术(ANFIS),并利用复杂的数学模型参数来研究反渗透膜的性能。采用减法聚类方法构造模糊推理系统,生成初始模糊推理系统。用70%的数据集训练模型,然后用剩下的30%的数据集检验模型的有效性。结果表明,该方法可以比以往的数值方法更快、更准确地预测反渗透膜的性能。该方法的分离因子、NP和NT的平方相关系数分别为0.9973、0.9916和0.9975,均优于数值方法和前人人工神经网络模型。结果表明,挤压系数、拒绝率和接受率对ANFIS性能无显著影响。结果表明,在所有情况下,当该参数大于0.5时,分离因子为0.86,净预通量为0.91,总通量为0.83,获得了较好的性能。该技术只需要几秒钟的时间来模拟反渗透膜的性能,比其他数值方法快得多。因此,该技术可能是预测反渗透膜的一种有效方法。
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1.20
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审稿时长
8 weeks
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