会议专题

Groundwater Quality Assessment Based on Support Vector Machine

Water quality assessment is a multivariate nonlinear system. Based on statistical learning theory, support vector machine (SVM) can transform the learning process into a convex quadratic planning problem to get a global optimization by using the rule of minimum structure risk, which is appropriate to solve small-sample, nonlinear classification and regression issues. Applying SVM in water quality assessment, the multiple-factor water quality assessment model based on SVM is established. According to groundwater quality assessment standard, water quality is divided into five grades. Eight assessment factors are selected to randomly generate sample set. All test samples are classified correctly after training the model. The model is applied for the assessment of karst groundwater sample at the Niangziguan fountain region of Haihe River basin to obtain the grade of water quality assessment. The result shows that such a method solves the complex nonlinear relationship between assessment factor and water quality grade. It offers high prediction accuracy and is a reasonable and feasible assessment method.

groundwater water quality assessment support vector machine

LIU Junping CHANG Mingqi MA Xiaoyan

College of Civil Engineering and Architecture, Zhejiang University of Technology, Hangzhou, China, 3 Research Institute of Water Development, Changan University, Xian, China, 710064 China Irrigation

国际会议

2009 International Symposium of HAIHE Basin Integrated Water and Environment Management(GEF 海河流域水资源与水环境综合管理研讨会)

北京

英文

173-178

2009-10-16(万方平台首次上网日期,不代表论文的发表时间)