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基于支持向量机的浮游植物密度预测研究
引用本文:冯剑丰,王洪礼,李胜朋.基于支持向量机的浮游植物密度预测研究[J].海洋环境科学,2007,26(5):438-441.
作者姓名:冯剑丰  王洪礼  李胜朋
作者单位:1. 天津大学,环境科学与工程学院,天津,300072
2. 天津大学,机械工程学院,天津,300072
摘    要:利用支持向量机方法对具有非线性及突发性特点的浮游植物密度进行了预测,同时与人工神经网络方法预测的结果进行了比较.结果表明,无论是拟和能力还是预测能力,支持向量机方法都明显优于人工神经网络方法,支持向量机方法比较适合于具有小样本、非线性特点的浮游植物密度预测研究.

关 键 词:支持向量机  浮游植物  预测  支持向量机方法  浮游植物  密度  预测研究  phytoplankton  prediction  Research  support  vector  machines  小样本  预测能力  比较  结果  网络方法  人工神经  突发性  非线性  利用
文章编号:1007-6336(2007)05-0438-04
收稿时间:2006-06-03
修稿时间:2006-10-23

Research on prediction of phytoplankton's density using support vector machines
FENG Jian-feng,WANG Hong-li,LI Sheng-peng.Research on prediction of phytoplankton''''s density using support vector machines[J].Marine Environmental Science,2007,26(5):438-441.
Authors:FENG Jian-feng  WANG Hong-li  LI Sheng-peng
Institution:1. School of Environment Science and Techonlogy,Tianjin University, Tianjin 300072, China;2. School of Mechanical Engeneering, Tianjin University, Tianjin 300072,China
Abstract:The theory of support vector machine was used in the prediction of the phytoplankton's density with the characteristics of catastrophic and nonlinearity.Furthermore,the predicted result of support vector machine was compared with the result of artificial neutral network.The results showed that the regressed and predicted result of support vector machine was better than artificial neutral network.The theory of support vector machine was fitted for predicting the phytoplankton's density with few data and nonlinear.
Keywords:support vector machine  phytoplankton  prediction
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