Modelling and optimization of Fenton processes through neural network and genetic algorithm

被引:0
作者
Hüseyin Cüce
Fulya Aydın Temel
Ozge Cagcag Yolcu
机构
[1] Giresun University,Department of Geomatic Engineering, Faculty of Engineering
[2] Giresun University,Department of Environmental Engineering, Faculty of Engineering
[3] Marmara University,Department of Statistics, Faculty of Sciences and Arts
来源
Korean Journal of Chemical Engineering | 2021年 / 38卷
关键词
Fenton; Multilayer Perceptron; Sigma Pi Neural Network; Particle Swarm Optimization; Genetic Algorithm; Response Surface Methodology;
D O I
暂无
中图分类号
学科分类号
摘要
Response surface methodology (RSM), multi-layer perceptron trained by Levenberg-Marquardt (MLP-LM); multi-layer perception and Sigma-Pi neural networks trained by particle swarm optimization (PSO) were used to effectively and reliably predict the performance of Classical-Fenton and Photo-Fenton processes. H2O2 doses, Fe(II) doses, and H2O2/Fe(II) rates were determined as independent variables in batch reactors. The performance of models was compared by using RMSE and MAE error criteria. The performance of models was also evaluated in terms of some properties of regression analysis and scatter that showed high linear relationship between the predictions of SP-PSO and the actual removal values. As a distinctive aspect of this study, SPNN trained by PSO was used for the first time in the literature in this area and the best predictive results for almost all cases were generated. Moreover, the genetic algorithm (GA) was applied for SP-PSO model results to determine the optimum values of the study. According to the results of GA, under the optimum conditions Photo-Fenton processes had higher performance in each experiment. Thereby, SP-PSO produced satisfactory prediction results without the need for any additional experiments in the case that experimental designs are difficult or costly for wastewater treatment.
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页码:2265 / 2278
页数:13
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