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Prediction of Chemical Oxygen Demand in Sewage Based on Support Vector Machine and Neural Network

机译:基于支持向量机和神经网络的污水中化学需氧量预测

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Aiming at the problem that the detection accuracy of effluent COD (chemical oxygen demand) in sewage treatment needs to be further improved, a combined model based on support vector machine and neural network is proposed to predict effluent COD. It can reduce the influence of local optimum on the global scope so as to improve the accuracy of prediction. Firstly, the sample data are divided into two categories by support vector machine. Then the BP neural network model and the Echo Suite Network (ESN) model are established on two sub-samples respectively. Compared with single neural network model, the mean absolute error and root mean square error of combined model are both reduced. Besides, the proposed model has better comprehensive prediction performance and can meet the actual demand of effluent COD prediction in sewage treatment.
机译:针对污水处理中的流出鳕鱼(化学需氧量)的检测精度的问题,提出了一种基于支持向量机和神经网络的组合模型来预测流出鳕鱼。它可以减少局部最佳对全局范围的影响,以提高预测的准确性。首先,通过支持向量机将样本数据分为两类。然后,分别在两个子样本上建立了BP神经网络模型和回声套件网络(ESN)模型。与单个神经网络模型相比,组合模型的平均绝对误差和均方根误差都减少。此外,拟议的模型具有更好的综合预测性能,可以满足污水处理中流出鳕鱼预测的实际需求。

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