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甘南草地地上生物量的高光谱遥感估算研究
引用本文:张凯,郭铌,王润元,王小平,王静.甘南草地地上生物量的高光谱遥感估算研究[J].草业科学,2009,26(11):44-50.
作者姓名:张凯  郭铌  王润元  王小平  王静
作者单位:中国气象局兰州干旱气象研究所,甘肃省干旱气候变化与减灾重点实验室,中国气象局干旱气候变化与减灾重点开放实验室,甘肃,兰州,730020;中国科学院寒区旱区环境与工程研究所,甘肃,兰州,730000;中国气象局兰州干旱气象研究所,甘肃省干旱气候变化与减灾重点实验室,中国气象局干旱气候变化与减灾重点开放实验室,甘肃,兰州,730020
基金项目:中国气象局新技术推广项目,甘肃省退牧还草科技支撑项目 
摘    要:为了促进高光谱分辨率遥感技术在草地畜牧业动态监测和遥感估产中的应用,选择甘南草原为研究区,通过野外观测,测量了天然牧草的冠层高光谱和地上生物量数据,分析了4种主要草地类型的冠层光谱曲线特征,并分析了地上鲜生物量与冠层反射光谱和一阶微分光谱之间的相关关系,构建了光谱特征参数作为变量,建立了甘南草原牧草地上鲜生物量的高光谱估算模型,并对模型进行检验,结果表明:特征参数D723的对数回归模型,不仅相关系数较高,而且均方根和相对误差都较小,因此,估算精度较高,可作为甘南草地地上鲜生物量的最佳高光谱估算模型。

关 键 词:牧草  地上生物量  高光谱遥感  估算模型  甘南草原

Hyperspectral remote sensing estimation models for aboveground fresh biomass in Gannan grassland
ZHANG Kai,GUO Ni,WANG Run-yuan,WANG Xiao-ping,WANG Jing.Hyperspectral remote sensing estimation models for aboveground fresh biomass in Gannan grassland[J].Pratacultural Science,2009,26(11):44-50.
Authors:ZHANG Kai  GUO Ni  WANG Run-yuan  WANG Xiao-ping  WANG Jing
Institution:ZHANG Kai1,2,GUO Ni1,WANG Run-yuan1,WANG Xiao-ping1,WANG Jin1(1.Key Laboratory of Arid Climatic Changing , Reducing Disaster of Gansu Province,Key Open Laboratory of Arid Climate Change , Disaster Reduction of CMA,Institute of Arid Meteorology,China Meteorological Administration,Lanzhou 730020,China,2.Cold , Arid Regions Environmental , Engineering Research Institute,Chinese Academy of Sciences,Lanzhou 730000,China)
Abstract:In order to promote the application of hyperspectral remote sensing in the dynamic monitoring and yield estimation of grassland, the canopy spectral reflectance and the aboveground fresh biomass corresponding to the spectra of natural grassland were measured in Gannan grassland. This paper analyzed the spectral reflectance characteristics of four main grassland types, the correlation between the aboveground fresh biomass and reflective spectrum, and the correlation between aboveground fresh biomass and the first derivative spectrum. Using characteristic bands and their combination that were strongly correlated to the aboveground fresh biomass, this paper defined hyperspectral parameters as variables. Thus, the hyperspectral remote sensing estimation models of the grass aboveground fresh biomass were established in Gannan prairie. The estimation models were tested by the experiment data. The results showed that estimation model of D723 y=3.526 lnD723+18.923] was the best, and it’s RMSE, relative error, and the correlation coefficient between the estimated value and measured value were 0.208 3, 8.8% and 0.896, Therefore, the model could preferably estimate the grass aboveground fresh biomass in Gannan prairie.
Keywords:grassland  aboveground fresh biomass  hyperspectral remote sensing  estimation model  Gannan
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