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ANN model for predicting acrylonitrile wastewater degradation in supercritical water oxidation

机译:ANN模型预测超临界水氧化中丙烯腈废水的降解

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The discharged acrylonitrile wastewater had aroused more and more attention due to the increasingly serious water pollution. Supercritical water oxidation (SCWO) was an effective and fast way to degrade it completely without secondary pollution. To better illustrate the performances of SCWO of acrylonitrile wastewater, the experimental research covered the effects of different operation conditions on TOC reduction, such as reduced temperature (T/Tc), reduced pressure (P/Pc), initial total organic carbon concentration (TOC_0), stoichiometric ratio (SR) and residence time (t). For a more accurate prediction of the emissions, two kinds of artificial neural network (ANN) models were adopt to simulate the TOC reductions in the processes of SCWO of acrylonitrile wastewater, including the Cascade-forward back propagation neural network (CFBPNN) and Feed-forward back propagation neural network (FFBPNN). The input parameters of ANN models were T/Tc, P/Pc, TOC_0. SR and t. The output parameter was TOC reduction (η). The mean square error (E~2) and the coefficient of determination (R~2) were used to evaluate the model performances, respectively. Both the model and the experiment results had shown the TOC reduction could be greatly improved by reduced temperature, reduced pressure, initial TOC concentration, stoichiometric ratio and residence time. The FFBPNN model with the hidden neurons numbers of 12 was shown much better performances than the CFBPNN model.
机译:由于日益严重的水污染,排放的丙烯腈废水引起了越来越多的关注。超临界水氧化(SCWO)是一种有效且快速的方法,可将其完全降解而不会造成二次污染。为了更好地说明丙烯腈废水的SCWO性能,实验研究涵盖了不同操作条件对降低TOC的影响,例如降低的温度(T / Tc),降低的压力(P / Pc),初始总有机碳浓度(TOC_0) ),化学计量比(SR)和停留时间(t)。为了更准确地预测排放量,采用了两种人工神经网络(ANN)模型来模拟丙烯腈废水SCWO过程中的TOC降低,包括串级正向反向传播神经网络(CFBPNN)和Feed-前向后传播神经网络(FFBPNN)。 ANN模型的输入参数为T / Tc,P / Pc,TOC_0。 SR和t。输出参数是TOC减少量(η)。均方差(E〜2)和确定系数(R〜2)分别用于评估模型性能。模型和实验结果均表明,降低温度,降低压力,初始TOC浓度,化学计量比和停留时间可以大大改善TOC的降低。隐藏神经元数为12的FFBPNN模型比CFBPNN模型具有更好的性能。

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