首页> 外文会议>Knowledge Acquisition and Modeling Workshop,KAM,2008 IEEE International Symposium on >Support Vector Machine Applying in the Prediction of Effluent Quality of Sewage Treatment Plant with Cyclic Activated Sludge System Process
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Support Vector Machine Applying in the Prediction of Effluent Quality of Sewage Treatment Plant with Cyclic Activated Sludge System Process

机译:支持向量机在循环活性污泥系统法预测污水处理厂出水水质中的应用。

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Sewage treatment system is a complicated nonlinear system with multi-variables, chemical reaction, biological process and altered loads, hard to describe mathematically. Thus prediction of the effluent quality of sewage treatment plant through a mathematical model has being a challenge. In this paper we adopts regression support vector machine (SVM) to set up a prediction model of a sewage treatment plant with a popular process Cyclic Activated Sludge System (CASS). Kernel function of the prediction model is radial basic function, and parameters of the kernel function are optimally determined by cross-validation. Then the prediction model is used to predict effluent quality of the sewage treatment plant with CASS process. Test result of the case study shows that the prediction model works well and the regression SVM is powerful in predicting effluent quality of CASS process sewage treatment plant with small sample learning ability and good generalization.
机译:污水处理系统是一个复杂的非线性系统,具有多变量,化学反应,生物过程和变化的负荷,很难用数学方法来描述。因此,通过数学模型预测污水处理厂的污水质量已成为一个挑战。在本文中,我们采用回归支持向量机(SVM)来建立带有流行过程循环活性污泥系统(CASS)的污水处理厂的预测模型。预测模型的核函数是径向基本函数,并且核函数的参数是通过交叉验证最佳确定的。然后将预测模型用于通过CASS工艺预测污水处理厂的出水水质。案例研究的测试结果表明,该模型预测效果良好,回归支持向量机在样本学习能力小,推广性强的情况下,对CASS工艺污水处理厂出水水质的预测具有较强的预测能力。

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