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Artificial neural network for modelling the removal of pollutants A review

机译:用于建模污染物审查的人工神经网络

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Modeling of pollutant degradation using artificial neural networks (ANN) has been done well. The techniques used to model degradation vary. This literature review was done to examine the development of the use of ANN modeling from year to year. It will provide an overview of predictive studies from a degradation treatment condition that will produce optimal conditions. These conditions will be supported by experimental data so that costs and time can be reduced at laboratory scale. Some relevant techniques include separation methods, coagulation, advanced oxidation processes, and chemical oxidation. The algorithmic approaches used are ANN-LM, ANN-BP, ANN-BP (SCG), and ANN-BFGS. Modelling using ANN has very high potential for further development. The perfomance indicator of an ANN method is a strong coefficient of determination (R2), with good RMSE, MAPE, and MSE values.
机译:使用人工神经网络(ANN)的污染物劣化建模已经很好。用于模型降级的技术变化。此文献综述是为审查了年度到年份使用ANN建模的使用的开发。它将提供从将产生最佳条件的降解处理条件的预测研究概述。这些条件将由实验数据支持,以便在实验室规模降低成本和时间。一些相关技术包括分离方法,凝固,晚期氧化过程和化学氧化。使用的算法方法是Ann-LM,Ann-BP,Ann-BP(SCG)和Ann-BFGS。使用ANN建模具有很大的进一步发展潜力。 ANN方法的Perfomance指示剂是强烈的测定系数(R2),具有良好的RMSE,MAPE和MSE值。

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