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首页> 外文期刊>Water Science and Technology >Application of central composite design and artificial neural network in modeling of reactive blue 21 dye removal by photo-ozonation process
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Application of central composite design and artificial neural network in modeling of reactive blue 21 dye removal by photo-ozonation process

机译:中心复合设计和人工神经网络在光臭氧氧化法去除活性蓝21染料中的应用

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摘要

The present study deals with use of central composite design (CCD) and artificial neural network (ANN) in modeling and optimization of reactive blue 21 (RB21) removal from aqueous media under photo-ozonation process. Four effective operational parameters (including: initial concentration of RB21, O-3 concentration, UV light intensity and reaction time) were chosen and the experiments were designed by CCD based on response surface methodology (RSM). The obtained results from the CCD model were used in modeling the process by ANN. Under optimum condition (O-3 concentration of 3.95 mg L-1, UV intensity of 20.5 W m(-2), reaction time of 7.77 min and initial dye concentration of 40.21 mg L-1), RB21 removal efficiency reached to up 98.88%. A topology of ANN with a three-layer consisting of four input neurons, 14 hidden neurons and one output neuron was designed. The relative significance of each major factor was calculated based on the connection weights of the ANN model. Dye and ozone concentrations were the most important variables in the photo-ozonation of RB21, followed by reaction time and UV light intensity. The comparison of predicted values by CCD and ANN with experimental results showed that both methods were highly efficient in the modeling of the process.
机译:本研究涉及中央复合设计(CCD)和人工神经网络(ANN)在光臭氧化过程中从水性介质中去除活性蓝21(RB21)的建模和优化中的使用。选择了四个有效的操作参数(包括:RB21的初始浓度,O-3浓度,紫外光强度和反应时间),并根据响应面方法(RSM)采用CCD设计了实验。从CCD模型获得的结果用于ANN建模过程。在最佳条件下(O-3浓度为3.95 mg L-1,紫外线强度为20.5 W m(-2),反应时间为7.77分钟,初始染料浓度为40.21 mg L-1),RB21去除效率达到98.88。 %。设计了具有三层结构的人工神经网络拓扑结构,该结构由四个输入神经元,14个隐藏神经元和一个输出神经元组成。根据ANN模型的连接权重计算每个主要因素的相对重要性。染料和臭氧浓度是RB21光臭氧化过程中最重要的变量,其次是反应时间和紫外线强度。 CCD和ANN的预测值与实验结果的比较表明,两种方法在过程建模中都是非常有效的。

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