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Effluent COD of SBR Process Prediction Model Based on Fuzzy-Neural Network

机译:基于模糊神经网络的SBR过程预测模型流出鳕鱼

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The measurements of many key parameters and effluent qualities in WWTP(Wastewater Treatment Plant) are impossible due to the lack of precise online sensors and strong time-delay of WWTP process. The Fuzzy-Neural Network (FNN) based effluent COD(Chemical Oxygen Demand) of activated sludge SBR (Sequential Batch Reactor) prediction model is built in this paper, before which preprocessing of SBR simulation data is done using PCA (Principal Component Analysis) to extract the valid information of vast multi-dimension data. The gaining principal components are treated as the inputs of the FNN model to predict effluent COD with an Adaptive Genetic Algorithm (AGA) method to rectify the prediction model. The result indicates that hybrid FNN can extract valid information from dataset and describe complex non-linear properties of WWTP to predict effluent qualities accurately.
机译:由于缺乏精确的在线传感器和WWTP过程的强时延迟,WWTP(废水处理厂)许多关键参数和污水素质的测量是不可能的。本文建立了激活污泥SBR(顺序批量反应器)预测模型的模糊神经网络(FNN)流出鳕鱼(化学需氧量),在使用PCA(主成分分析)完成SBR仿真数据的预处理之前提取大量多维数据的有效信息。获得的主成分被视为FNN模型的输入,以预测具有自适应遗传算法(AGA)方法的污水鳕鱼来纠正预测模型。结果表明,混合FNN可以从数据集中提取有效信息,并描述WWTP的复杂非线性特性以准确地预测流出质量。

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