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首页> 外文期刊>Journal of Environmental Management >Modeling and optimization of V_2O_5/TiO_2 nanocatalysts for NH_3-Selective catalytic reduction (SCR) of NOx by RSM and ANN techniques
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Modeling and optimization of V_2O_5/TiO_2 nanocatalysts for NH_3-Selective catalytic reduction (SCR) of NOx by RSM and ANN techniques

机译:RSM和ANN技术对V_2O_5 / TiO_2纳米催化剂进行NH_3-选择性催化还原NOx的建模和优化

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In the present study, two statistical methods including the response surface method (RSM) and artificial neural network (ANN), were employed for modeling and optimization of selective catalytic reduction of NOx with NH3 (NH3-SCR) over V2O5/TiO2 nanocatalysts. The relationship between catalyst preparation variables, such as metal loading, impregnation temperature, and calcination temperature on NO conversion were investigated. The R-2 value of 0.9898 was obtained for quadratic a 12,SM model, which proves the high agreement of the model with the experimental data. The results of Pareto analysis revealed that three factors including calcination temperature, V loading, and impregnation temperature have a considerable impact on the response. Deduced from the established RSM model, the order of influence on the NO conversion was as follows: calcination followed by V loading and impregnation temperature. The optimum condition of catalyst preparation for maximum NO conversion over V2O5/TiO2 nanocatalysts was predicted to be at 0.0051 mol of V loading, an impregnation temperature of 50 degrees C and a calcination temperature of 491 degrees C. Moreover, an ANN model was created by a feedforward back propagation network (with the topology 4, 12 and 1) to model the relation between the selected catalyst preparation variables and NH3-SCR process temperature. The R-2 values for training, validation as well as test sets, were 0.99, 0.9810 and 0.9733. These high values proved the accuracy of the AAN model in modeling and estimating the NO conversion over V2O5/TiO2 nanocatalysts. According to the ANN model, the relative significance of each variable on NO conversion is calcination temperature, process temperature loading, and impregnation temperature from high to low importance, respectively, corroborating the obtained results from RSM.
机译:在本研究中,采用了两种统计方法,包括响应面法(RSM)和人工神经网络(ANN),对V2O5 / TiO2纳米催化剂上的NH3(NH3-SCR)选择性催化还原NOx进行建模和优化。研究了催化剂制备变量(例如金属负载量,浸渍温度和煅烧温度)与NO转化率之间的关系。二次12,SM模型的R-2值为0.9898,证明该模型与实验数据高度吻合。帕累托分析的结果表明,煅烧温度,V负荷和浸渍温度等三个因素对响应有很大影响。从建立的RSM模型推导,对NO转化的影响顺序如下:煅烧,然后是V负载和浸渍温度。预测在V2O5 / TiO2纳米催化剂上实现最大NO转化率的催化剂制备的最佳条件为V负载为0.0051 mol,浸渍温度为50摄氏度,煅烧温度为491摄氏度。前馈反向传播网络(具有拓扑4、12和1),以对所选催化剂制备变量与NH3-SCR工艺温度之间的关系进行建模。训练,验证以及测试集的R-2值分别为0.99、0.9810和0.9733。这些高值证明了AAN模型在建模和估计V2O5 / TiO2纳米催化剂上的NO转化率方面的准确性。根据ANN模型,每个变量对NO转化的相对意义分别是煅烧温度,工艺温度负荷和浸渍温度(从高到低),从而证实了从RSM获得的结果。

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