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首页> 外文期刊>Journal of Environmental Protection >Support Vector Regression Model of Chlorophyll-a during Spring Algal Bloom in Xiangxi Bay of Three Gorges Reservoir, China
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Support Vector Regression Model of Chlorophyll-a during Spring Algal Bloom in Xiangxi Bay of Three Gorges Reservoir, China

机译:三峡水库湘西湾春季藻华过程中叶绿素-a的支持向量回归模型

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To study the relationship between chlorophyll-a and environmental variables during spring algal bloom in Xiangxi Bay of Three Gorges Reservoir, the support vector regression (SVR) model was established. In surveys, 11 stations have been investigated and 264 samples were collected weekly from March 4 to May 13 in 2007 and February 16 to May 10 in 2008. The parameters in SVR model were optimized by leave one out cross validation. The squared correlation coefficient R2 and the cross validated squared correlation coefficient Q2 of the optimal SVR model are 0.8202 and 0.7301, respectively. Compared with stepwise multiple linear regression and back propagation artificial neural network models using external validation, the SVR model has been shown to perform well for regression with the predictive squared correlation coefficient R2pred value of 0.7842 for the test set.
机译:为了研究三峡水库湘西湾春季藻华期间叶绿素a与环境变量的关系,建立了支持向量回归模型。在调查中,从2007年3月4日至5月13日和2008年2月16日至5月10日,每周调查了11个站点,并收集了264个样本。通过不留交叉验证,对SVR模型中的参数进行了优化。最佳SVR模型的平方相关系数R2和交叉验证的平方相关系数Q2分别为0.8202和0.7301。与使用外部验证的逐步多元线性回归和反向传播人工神经网络模型相比,SVR模型在测试集的预测平方相关系数R2pred值为0.7842时表现出很好的回归性能。

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