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Optimization for Preparation Conditions of Mn-Ce Catalyst Based on BP Artificial Neural Network Model

机译:基于BP神经网络模型的Mn-Ce催化剂制备条件的优化。

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摘要

Three influencing factors (roasting temperature, roasting time, and metal ratio) which affect the preparation conditions of Mn-Ce catalysts for catalytic wet air oxidation was investigated. A BP artificial neural network model was established, in which the input conditions were selected as roasting temperature, roasting time, and metal ratio, and the output condition was TOC removal of n-butyric. The highest TOC removal was regarded as the optimization aim, along with constraints of each factor's bounds. The model validation results showed that there was only less than 5% of average relative deviation existed between the values of BP model predicted and experimental ones. The determination coefficient between the fitting curve and the Nash-Suttcliffe simulation efficiency coefficient (NSC) were 0.8324 and 0.8116 (>0.80) respectively, indicating the model predicted well. Meanwhile, two-factor and three-factor optimization of Mn-Ce catalyst preparation was executed through genetic algorithms, and the value of TOC removal over catalytic wet air oxidation of n-butyric could increased by more than 10% compared to the experimental one under the optimal reaction conditions.
机译:研究了三个因素(焙烧温度,焙烧时间和金属比)对Mn-Ce催化剂湿法氧化制取条件的影响。建立了BP人工神经网络模型,选择焙烧温度,焙烧时间和金属比作为输入条件,输出条件为正丁醇的TOC去除。最高的TOC去除率以及每个因素范围的约束条件都被视为优化目标。模型验证结果表明,BP模型预测值与实验值之间的平均相对偏差仅不到5%。拟合曲线与Nash-Suttcliffe模拟效率系数(NSC)之间的确定系数分别为0.8324和0.8116(> 0.80),表明模型预测良好。同时,通过遗传算法对Mn-Ce催化剂的制备进行了两因素和三因素优化,与正丁醇相比,在正丁醇的催化湿空气氧化作用下,TOC去除率可提高10%以上。最佳反应条件。

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