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基于灰度关联分析的冬小麦叶片含水量高光谱估测
引用本文:金秀良,徐新刚,王纪华,李鑫川,王妍,谭昌伟,朱新开,郭文善. 基于灰度关联分析的冬小麦叶片含水量高光谱估测[J]. 光谱学与光谱分析, 2012, 32(11): 3103-3106. DOI: 10.3964/j.issn.1000-0593(2012)11-3103-04
作者姓名:金秀良  徐新刚  王纪华  李鑫川  王妍  谭昌伟  朱新开  郭文善
作者单位:1. 扬州大学江苏省作物遗传生理重点实验室, 农业部长江中下游作物生理生态与栽培重点开放实验室,江苏 扬州 225009
2. 北京农业信息技术研究中心,北京 100097
基金项目:国家自然科学基金项目,北京市科技新星计划项目
摘    要:尝试应用灰色关联分析方法(GRA)分析典型的水分植被指数(WVI)和水分含量(LWC)间的关联度,然后选择对冬小麦叶片水含量敏感的指数,比较SRM-PLS(逐步回归-偏最小二乘)方法和PLS方法估算LWC的精度。首先,对冬小麦WVI与LWC进行灰色关联分析,筛选出对冬小麦LWC敏感的WVI;其次,利用筛选出的敏感WVI,分别用PLS-SRM方法和PLS两种方式估算冬小麦LWC;然后对两种方式进行比较,选择最高决定系数(R2)和最小均方根误差(RMSE)的LWC估算模型来估算冬小麦LWC。结果表明:在整个生育期用PLS和PLS-SRM方法估算LWC, R2和RMSE分别为0.605和0.575,4.75%和7.35%。研究表明:先使用GRA对WVI和LWC进行关联度分析,再用PLS或PLS-SRM方法可以提高冬小麦的LWC估算精度。

关 键 词:叶片含水量  灰色关联分析  逐步回归法  偏最小二乘法  冬小麦  水分植被指数  
收稿时间:2012-05-04

Hyperspectral Estimation of Leaf Water Content for Winter Wheat Based on Grey Relational Analysis(GRA)
JIN Xiu-liang , XU Xin-gang , WANG Ji-hua , LI Xin-chuan , WANG Yan , TAN Chang-wei , ZHU Xin-kai , GUO Wen-shan. Hyperspectral Estimation of Leaf Water Content for Winter Wheat Based on Grey Relational Analysis(GRA)[J]. Spectroscopy and Spectral Analysis, 2012, 32(11): 3103-3106. DOI: 10.3964/j.issn.1000-0593(2012)11-3103-04
Authors:JIN Xiu-liang    XU Xin-gang    WANG Ji-hua    LI Xin-chuan    WANG Yan    TAN Chang-wei    ZHU Xin-kai    GUO Wen-shan
Affiliation:1. Key Laboratory of Crop Genetics and Physiology of Jiangsu Province/Key Laboratory of Crop Physiology, Ecology and Cultivation in Middle and Lower Reaches of Yangtse River of Ministry of Agriculture, Yangzhou University, Yangzhou 225009, China2. Beijing Research Center for Information Technology in Agriculture, Beijing 100097, China
Abstract:The objective of the present study was to compare two methods for the precision of estimating leaf water content (LWC) in winter wheat by combining stepwise regression method and partial least squares (SRM-PLS) or PLS based on the relational degree of grey relational analysis (GRA) between water vegetation indexes (WVIs) and LWC. Firstly, data utilized to analyze the grey relationships between LWC and the selected typical WVIs were used to determine the sensitivity of different WVIs to LWC. Secondly, the two methods of estimating LWC in winter wheat were compared, one was to directly use PLS and the other was to combine SRM and PLS, and then the method with the highest determination coefficient (R2) and lowest root mean square error (RMSE) was selected to estimate LWC in winter wheat. The results showed that the relationships between the first five WVI and LWC were stable by using GRA, and then LWC was estimated by using PLS and SRM-PLS at the whole stages with the R2 and RMSEs being 0.605 and 0.575, 4.75% and 7.35%, respectively. The results indicated that the estimation accuracy of LWC could be improved by using GRA firstly and then by using PLS and SRM-PLS.
Keywords:Leaf water content  Grey relational analysis  Stepwise regression method  Partial least squares  Winter wheat  Water vegetation index  
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