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基于支持向量机的巢湖富营养化程度评价研究
引用本文:王冉,杨道军.基于支持向量机的巢湖富营养化程度评价研究[J].环境科学与管理,2011,36(5):181-184.
作者姓名:王冉  杨道军
作者单位:马鞍山市环境科学研究所;中钢集团马鞍山矿山研究院有限公司;
摘    要:由于湖泊富营养化程度影响因素多,评价因素与富营养化等级之间关系复杂而且具有非线性特征。支持向量机是由Vapnik等人提出的建立在统计学习理论基础上的一种新的机器学习方法,由于其使用结构风险最小化原则代替经验风险最小化原则,解决了一些神经网络遗留的问题,又由于其应用了核函数思想,它可以较好地解决非线性问题,利用支持向量机多类分类算法,构建巢湖富营养化程度评价模型,取得较好的结果。

关 键 词:支持向量机  核函数  富营养化

The Research on the Level of Eutrophication of Chaohu Lake Based On the Support Vector Machine
Wang Ran,Yang Daojun.The Research on the Level of Eutrophication of Chaohu Lake Based On the Support Vector Machine[J].Environmental Science and Management,2011,36(5):181-184.
Authors:Wang Ran  Yang Daojun
Institution:Wang Ran1,Yang Daojun2(1.Maanshan Institute of Environmental Sciences,Maanshan 243000,China,2.Sinosteel Maanshan Institute of Mining Research co.,ltd,China)
Abstract:The level of a lake's eutrophication is affeccted by many factors,the relationship between assessment indexs and the level of eutrophication is often compicated with non-linear features.The support vector machine,which is a kind of new machine learning methods based on statistical learning theory,and put forward by Vapnik and his fellows,it brings the concept such as structural risk minimization principle instead of experimental ones,therefore,it solved some problems whick neural network can't,plus,it also ...
Keywords:supports vector machine  kernel fuction  eutrophication  
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