首页> 外文期刊>Eurasian Journal of Analytical Chemistry >Application of Adaptive Neural Fuzzy Inference System and Fuzzy C- Means Algorithm in Simulating the 4-Chlorophenol Elimination from Aqueous Solutions by Persulfate/Nano Zero Valent Iron Process
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Application of Adaptive Neural Fuzzy Inference System and Fuzzy C- Means Algorithm in Simulating the 4-Chlorophenol Elimination from Aqueous Solutions by Persulfate/Nano Zero Valent Iron Process

机译:自适应神经模糊推理系统和模糊C均值算法在过硫酸盐/纳米零价铁工艺模拟水溶液中4-氯苯酚消除中的应用

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This study investigated the application of adaptive neural fuzzy inference system (ANFIS) and Fuzzy c- means (FCM) algorithm for the simulation and prediction of 4-chlorophenol elimination in aqueous media by the persulfate/Nano zero valent iron process. The structure of developed model which resulted to the minimum value of mean square error was a Gaussian membership function with a total number 10 at input layer, a linear membership function at output layer and a hybrid optimum method, which is a combination of backpropagation algorithm and least squares estimation, for optimization of Gaussian membership function parameters. The prediction of developed model in elimination 4-chlorophenol was significantly close to the observed experimental results with R2 value of 0.9942. The results of sensitivity analysis indicated that all operating variables had a strong effect on the output of model (4-CP elimination). However, the most effective variable was pH followed by persulfate, NZVI dosage, reaction time and 4-CP concentration. The performance of developed model was also compared with a quadratic model generated in a study by Response Surface Methodology (RSM). The results indicated that the ANFIS-FCM model was superior to the quadratic model in terms of prediction accuracy and capturing the behavior of the process.
机译:本研究研究了自适应神经模糊推理系统(ANFIS)和模糊c均值(FCM)算法在过硫酸盐/纳米零价铁工艺对水介质中4-氯苯酚消除的模拟和预测中的应用。导致均方误差最小值的已开发模型的结构是在输入层具有总数为10的高斯隶属函数,在输出层具有线性隶属函数以及混合最优方法,该方法是反向传播算法与最小二乘估计,用于优化高斯隶属函数参数。建立的消除4-氯苯酚模型的预测值与观察到的实验结果非常接近,R2值为0.9942。敏感性分析的结果表明,所有操作变量都对模型输出(消除4-CP)有很大影响。然而,最有效的变量是pH,然后是过硫酸盐,NZVI剂量,反应时间和4-CP浓度。还通过响应曲面方法(RSM)将开发模型的性能与研究中生成的二次模型进行了比较。结果表明,ANFIS-FCM模型在预测精度和捕获过程行为方面优于二次模型。

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