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Genetic Algorithms and Neural Networks Based Optimization Applied to the Wastewater Decolorization by Photocatalytic Reaction

机译:遗传算法和神经网络优化在光催化反应废水脱色中的应用

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This paper proposes a genetic algorithm and a neural network based procedure to estimate the optimal conditions for a dyestuff wastewater treatmentprocess consisting of a heterogeneous photocatalytic oxidation.A simulated dyestuff effluent containing the azo dye Reactive Black 5 is decolorized by a photocatalytic reaction using TiO2P-25 as catalyst in the presence of Fe~(+3)and H2O2 A simple feed forward neural network with one hidden layer was projected and used to predict the evolution in time of the decolorization of this type of wastewater.The neural model was included in the optimization procedure solved with a simple genetic algorithm.The goal of the optimization is to calculate the optimal reaction conditions(illumination time and amounts of reagents)which assure an imposed value for the transmittance.
机译:本文提出了一种遗传算法和基于神经网络的程序,以估算由多相光催化氧化组成的染料废水处理工艺的最佳条件。通过偶氮染料TiO2P-25的光催化反应将含有偶氮染料活性黑5的模拟染料废水脱色。在Fe〜(+3)和H2O2存在下作为催化剂的存在一个简单的带有一层隐蔽层的前馈神经网络被投影并用于预测这种类型的废水脱色的时间演变。优化的过程是用简单的遗传算法求解的。优化的目的是计算最佳的反应条件(照射时间和试剂的用量),以确保透射率的强制性值。

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