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Development of a four-layered ANN for simulation of an electrochemical water treatment process

机译:开发四层人工神经网络以模拟电化学水处理过程

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摘要

This work is dealing with the performance and modeling of an electrochemical water treatment process. A bench-scale electrochemical reactor with working volume of 0.5L was applied to treat an azo dye, acid brown 14, as a typical pollutant in aqueous media. For the dye initial concentration of 50mg/L, the experimental data showed the optimum conditions of the process as: [NaCl]=5g/L, pH 6.4, and V=4V. Under the conditions, after 18min and consuming of low energy amount of 0.24Wh/L, 92% of decolorization efficiency (DE) was obtained. To model the process and simulate the obtained results, artificial neural network (ANN) method was used. Five effective operational parameters, i.e. reaction time, initial pH, applied voltage, supporting electrolyte, and the dye initial concentrations were considered as the network inputs; meanwhile, both of the DE and energy consumption (EC) criteria, were considered as the relevant network outputs. A four-layered feed-forward ANN, consisting of trainbfg learning algorithm and tansig as the transfer function in both hidden and output layers, was constructed. The neuron number structure of 5:4:6:2 and the iteration number of 600, showed best model-calibration ability. The K-fold cross-validation method showed high correlation coefficients (R-2) of 0.988 and 0.983 for the simulation of the DE and EC criteria, respectively.
机译:这项工作涉及电化学水处理过程的性能和建模。使用工作容积为0.5L的台式电化学反应器处理偶氮染料酸性棕14,这是水性介质中的典型污染物。对于染料初始浓度为50mg / L,实验数据表明该工艺的最佳条件为:[NaCl] = 5g / L,pH 6.4,V = 4V。在此条件下,经过18分钟消耗了0.24Wh / L的低能量后,可获得92%的脱色效率(DE)。为了模拟过程并模拟获得的结果,使用了人工神经网络(ANN)方法。网络输入是五个有效的操作参数,即反应时间,初始pH,施加电压,支持电解质和染料初始浓度。同时,DE和能耗(EC)标准都被视为相关的网络输出。构造了一个由trainbfg学习算法和tansig组成的四层前馈ANN,作为隐藏层和输出层的传递函数。 5:4:6:2的神经元数结构和600的迭代数显示出最佳的模型校准能力。 K-fold交叉验证方法对于DE和EC标准的模拟分别显示0.988和0.983的高相关系数(R-2)。

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