Estimating Canopy Water Content in Wheat Based on New Vegetation Water Index
CHENG Xiao-juan1, 2, YANG Gui-jun1, XU Xin-gang1*, CHEN Tian-en2, LI Zhen-hai1, FENG Hai-kuan1, WANG Dong2
1. National Engineering Research Center for Information Technology in Agriculture/National Engineering Research Center for Information Technology in Agriculture/Key Laboratory of Information Technology in Agriculture, Ministry of Agriculture, Beijing 100097, China 2. Geomatics College, Shandong University of Science and Technology, Qingdao 266590, China
Abstract:Moisture content is an important indicator for crop water stress condition, timely and effective monitoring crop water content is of great significance for evaluate crop water deficit balance and guide agriculture irrigation. In order to improve the saturated problems of different forms of typical NDWI (Normalized Different Water Index), we tried to introduce EVI(Enhanced Vegetation Index) to build new vegetation water indices(NDWI#) to estimate crop water content. Firstly, PROSAIL model was used to study the saturation sensitivity of NDWIs and NDWI# to canopy water content and LAI(Leaf Area Index). Then, the estimated model and verified model were estimated using the spectral data and moisture data in the field. The result showed that the new indices have significant relationships with canopy water content . In particular, by implementing modified standardized for NDWI1 450,NDWI1 940,NDWI2 500. The result indicated that newly developed indices with visible-infrared and shortwave infrared spectral feature may have greater advantage for estimation winter canopy water content.
Key words:Vegetation water content(VWC);Equivalent water thickness(EWT);Canopy spectral;NDWI(Normalized Different Water Index);Winter wheat
程晓娟1, 2,杨贵军1,徐新刚1*,陈天恩2,李振海1,冯海宽1,王 冬2 . 新植被水分指数的冬小麦冠层水分遥感估算 [J]. 光谱学与光谱分析, 2014, 34(12): 3391-3396.
CHENG Xiao-juan1, 2, YANG Gui-jun1, XU Xin-gang1*, CHEN Tian-en2, LI Zhen-hai1, FENG Hai-kuan1, WANG Dong2 . Estimating Canopy Water Content in Wheat Based on New Vegetation Water Index. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2014, 34(12): 3391-3396.
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