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首页> 外文期刊>Journal of Environmental Management >Modeling azo dye removal by sono-fenton processes using response surface methodology and artificial neural network approaches
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Modeling azo dye removal by sono-fenton processes using response surface methodology and artificial neural network approaches

机译:使用响应面方法和人工神经网络方法模拟通过声芬顿法去除偶氮染料

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摘要

Textile industry wastewaters, which cause serious problems in the environment and human health, include synthetic dyes, complex organic pollutants, surfactants, and other toxic chemicals and therefore must be removed by advanced treatment methods. Determination of appropriate treatment conditions for efficient use of advanced treatment methods is an important and necessary step. In the last thirty years, the Artificial Neural Network-Genetic Algorithm (ANN-GA) and Response Surface Methodology (RSM) have emerged as the most effective empirical modeling and optimization methods especially for nonlinear systems. Reactive Red 195 azo dyestuff was chosen as the target pollutant. The color removal efficiency was modeled and optimized as a function of Sono-Fenton conditions such as H2O2 dosage, Fe2+ dosage, initial pH value, ultrasound power, and ultrasound frequency, using ANN-GA and RSM. The generalization and predictive ability of these methods were compared using the results of the 46 experimental sets generated by the Box-Behnken design. The mean square errors for these models are 3.01612 and 0.00295, and the regression coefficients showing the superiority of ANN in determining nonlinear behavior are 0.9856 and 0.9164, respectively, In optimal conditions, the prediction errors with hybrid ANN-GA and RSM models are 0.002% and 3.225%, respectively.
机译:在环境和人类健康中造成严重问题的纺织工业废水包括合成染料,复杂的有机污染物,表面活性剂和其他有毒化学物质,因此必须通过先进的处理方法进行去除。确定适当的治疗条件以有效使用先进的治疗方法是重要且必要的步骤。在过去的三十年中,人工神经网络遗传算法(ANN-GA)和响应表面方法论(RSM)成为了最有效的经验建模和优化方法,尤其是对于非线性系统。选择活性红195偶氮染料作为目标污染物。使用ANN-GA和RSM根据Sono-Fenton条件(例如H2O2剂量,Fe2 +剂量,初始pH值,超声功率和超声频率)对脱色效率进行建模和优化。使用Box-Behnken设计生成的46个实验集的结果比较了这些方法的通用性和预测能力。这些模型的均方误差为3.01612和0.00295,显示ANN在确定非线性行为方面的优越性的回归系数分别为0.9856和0.9164。在最佳条件下,混合ANN-GA和RSM模型的预测误差为0.002%和3.225%。

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