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基于投影寻踪理论的稻飞虱发生程度预测模型

娄伟平1;陈先清2;吴利红3;冯忠民4;张寒2   

  1. 1新昌县气象局, 浙江新昌 312500;2绍兴市气象局, 浙江绍兴 312000;3浙江省气候中心, 杭州 310017;4新昌县农业局, 浙江新昌 312500
  • 收稿日期:2007-10-16 修回日期:1900-01-01 出版日期:2008-08-10 发布日期:2008-08-10

Forecasting model of rice planthoppers occurrence degree based on projection pursuit regression.

LOU Wei-ping1;CHEN Xian-qing2;WU Li-hong3;FENG Zhong-ming4;ZHANGHan2   

  1. 1Xinchang Meteorological Bureau, Xinchang 312500, Zhejiang, China
    ; 2Shaoxing Meteorological Bureau, Shaoxing 312000, Zhejiang, China; 
    3Zhejiang Climate Center, Hangzhou 310017, China; 4Xinchang Agricultural
    Bureau, Xinchang 312500, Zhejiang, China
  • Received:2007-10-16 Revised:1900-01-01 Online:2008-08-10 Published:2008-08-10

摘要: 稻飞虱发生程度与相关气候因子的数据大多具有高维非正态、非线性特征,采用统计预测法会出现预测效果的不稳定,采用人工神经网络预测模型需要较多的训练样本。投影寻踪模型把高维数据投影到低维子空间上,对数据结构进行分析,一定程度上解决了非线性、非正态问题。本文建立了浙江省新昌县单季晚稻稻飞虱主害代发生程度的投影寻踪预测模型,并与BP神经网络模型、线性回归模型的预测结果进行了对比。结果表明:投影寻踪模型优于BP神经网络模型、线性回归模型;投影寻踪模型的历史符合率和预测准确率均为100%;BP神经网络模型历史符合率达到100%,但预测偏差较大;线性回归模型历史符合率和预测偏差均较大。可见,投影寻踪模型在稻飞虱发生程度的预测上具有较好的应用前景。

关键词: 杨树无性系, 渗透胁迫, 光合作用光抑制, 活性氧, 保护酶, 6-BA, AsA

Abstract: The occurrence degree of rice planthoppers is nonnormal and nonlinear related to climatic parameters, while classical statistic methods can hardly reach stable predictions for the occurrence degree. Artificial neural network (ANN) is an efficient way to estimate the occurrence degree, but fails to work when only a few training samples are available. Projection pursuit regression (PPR) model is an efficient way to solve nonnormal and non-linear problems, which projects high-dimensional data onto lowdimensional subspaces and analyzes the structure of the data on lowdimension. In this study, PPR method was applied to predict the occurrence degree of rice planthoppers on single cropping late rice in Xinchang of Zhejiang Province. The prediction derived from PPR was also compared with those from BP ANN and linear regression model. The results showed that both ANN and PPR model achieved historical coincidence rate of 100%, but the prediction bias of PPR was larger than that of ANN. The linear regression model showed less historical coincidence rate and larger bias than ANN and PPR model, while PPR model could access more satisfied prediction than ANN and linear regression model, being a potential method on the prediction of the outbreak of rice planthoppers.

Key words: Poplar clone, Osmotic stress, Photosynthesis photoinhibition, Reactive oxygen species, Protecting enzymes, 6-BA, AsA