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基于相关向量机的大豆生长发育阶段预测
引用本文:詹环,董玉才,赵海清,鞠桂玲,闵详娟.基于相关向量机的大豆生长发育阶段预测[J].嘉应学院学报,2010,28(5):27-30.
作者姓名:詹环  董玉才  赵海清  鞠桂玲  闵详娟
作者单位:1. 装甲兵工程学院,非线性研究所,北京,100072
2. 湛江师范学院,数学与计算科学学院,广东,湛江,524088
摘    要:精确地预测大豆的生长发育阶段对于农业生产和研究都具有重要的意义,采用相关向量机方法为大豆的生长发育阶段预测建模,通过优化建模参数,所建相关向量机模型具有较高的拟合能力,且预测误差小,稳健性好。实验结果表明,相关向量机建立的模型优于神经网络。

关 键 词:生长期  成熟期组  相关向量机

Prediction of Soybean Growth and Development Stages Based on Relevance Vector Machine
ZHAN Huan,DONG Yu-cai,ZHAO Hai-qing,JU Gui-ling,MIN Xiang-juan.Prediction of Soybean Growth and Development Stages Based on Relevance Vector Machine[J].Journal of Jiaying University,2010,28(5):27-30.
Authors:ZHAN Huan  DONG Yu-cai  ZHAO Hai-qing  JU Gui-ling  MIN Xiang-juan
Institution:1.Institute of Nonlinear Science,Academy of Armored Force Engineering,Beijing 100072,China)(2.School of Mathematics and Computer Science,Zhanjiang Normal University,Zhanjiang 524088,China)
Abstract:Accurate prediction of soybean growth and development stages has very important sense in agricultural industry and research. Relevance Vector Machine (RVM) was applied to set up the model of soybean growth and development stages in this paper. By optimizing the model parameters,the obtained RVM model has high fitting abilities,less prediction errors and less standard deviation of prediction errors. Experimental results indicate that the model set up by RVM out-performed artificial neural networks.
Keywords:soybean  growth stage  maturity group  Relevance Vector Machine
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