Faculty of Materials and Chemical Engineering, GIK Institute of Engineering Sciences and Technology, Topi, 23460, Pakistan; Institute of Chemistry Araraquara, São Paulo State University (UNESP), Av. Prof. Francisco Degni 55, Araraquara, SP, 14800-060, Brazil.
Faculty of Materials and Chemical Engineering, GIK Institute of Engineering Sciences and Technology, Topi, 23460, Pakistan.
Chemosphere. 2020 Aug;253:126673. doi: 10.1016/j.chemosphere.2020.126673. Epub 2020 Apr 5.
In this study, computational and statistical models were applied to optimize the inherent parameters of an electrochemical decontamination of synozol red. The effect of various experimental variables such as current density, initial pH and concentration of electrolyte on degradation were assessed at Ti/RuOTiOO anode. Response surface methodology (RSM) based central composite design was applied to investigate interdependency of studied variables and train an artificial neural network (ANN) to envisage the experimental training data. The presence of fifteen neurons proved to have optimum performance based on maximum R, mean absolute error, absolute average deviation and minimum mean square error. In comparison to RSM and empirical kinetics models, better prediction and interpretation of the experimental results were observed by ANN model. The sensitive analysis revealed the comparative significance of experimental variables are pH = 61.03%>current density = 17.29%>molar concentration of NaCl = 12.7%>time = 8.98%. The optimized process parameters obtained from genetic algorithm showed 98.6% discolorization of dye at pH 2.95, current density = 5.95 mA cm, NaCl of 0.075 M in 29.83 min of electrolysis. The obtained results revealed that the use of statistical and computational modeling is an adequate approach to optimize the process variables of electrochemical treatment.
在这项研究中,应用计算和统计模型来优化 Synozol 红电化学净化的固有参数。在 Ti/RuOTiOO 阳极上评估了电流密度、初始 pH 值和电解质浓度等各种实验变量对降解的影响。基于中心复合设计的响应面法 (RSM) 用于研究研究变量的相互依赖性,并训练人工神经网络 (ANN) 来设想实验训练数据。基于最大 R、平均绝对误差、绝对平均偏差和最小均方误差,发现存在十五个神经元的情况表现出最佳性能。与 RSM 和经验动力学模型相比,ANN 模型更好地预测和解释了实验结果。敏感性分析表明,实验变量的相对重要性为 pH = 61.03%>电流密度 = 17.29%>NaCl 摩尔浓度 = 12.7%>时间 = 8.98%。遗传算法得到的优化工艺参数显示,在 pH 2.95、电流密度 = 5.95 mA cm、NaCl 为 0.075 M 的条件下,电解 29.83 min 后,染料的脱色率达到 98.6%。所得结果表明,统计和计算建模的使用是优化电化学处理工艺变量的一种适当方法。