基于MODIS归一化近红外光谱指数的冬小麦产量估算模型

Wenpeng Lin, Ming‐yang Zhao, Yunlong Liu, Jun Gao, Chenli Wang
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引用次数: 2

摘要

与NOAA/AVHRR相比,Terra/MODIS具有光谱和空间分辨率优势。为进一步探讨MODIS近红外光谱的应用,以河北省冬小麦产量估算为例。首先,根据冬小麦的生物学特性,提取抽穗期中心波长为860nm、1240nm和1640nm的MODIS近红外光谱数据;其次,通过(860 nm, 1240 nm)、(860 nm, 1640 nm)和(1240 nm, 1640 nm)每两个近红外光谱定义归一化近红外光谱指数(NNSI)。再次,进行了与产量的统计相关分析,建立了基于NNSI的产量预测模型。结果表明,两者的相关系数均大于0.77,且优于NDVI。特别是(860 nm, 1640 nm)定义的NNSI,其相关系数为0.815。因此,NNSI可以很好地预测冬小麦产量。因此,近红外光谱归一化指标对产量的预测效果优于目视和近红外光谱归一化指标。发挥MODIS的高光谱优势,为农业部的作物状况监测和作物产量估算服务。
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Winter wheat yield estimation model with MODIS normalized near-infrared spectral index
Terra/MODIS has spectral and spatial resolution advantage over NOAA/AVHRR. To probe into using MODIS near-infrared spectrum further, winter wheat yield estimation was taken as example in Hebei Province, China. Firstly, according to winter wheat biological characteristic, three MODIS near-infrared spectrum data were retrieved in heading stage, which central wavelength is 860 nm, 1240 nm and 1640 nm. Secondly, the normalized near-infrared spectral index (NNSI) is defined by every two near-infrared spectrum, such as (860 nm, 1240 nm), (860 nm, 1640 nm) and (1240 nm, 1640 nm). Thirdly, the statistical correlation analysis with yield were carried on and set up models for yield forecasting with NNSI. The result shows their coefficient correlations are greater than 0.77 and better than with NDVI. Especially the NNSI defined by (860 nm, 1640 nm), its coefficient correlation is 0.815. So NNSI can do well to forecast winter wheat yield. So we can conclude that normalized index in near-infrared spectrum can do better and more reliable than normalized index in visual and near-infrared spectrums for yield forecasting. And given play to the hysperspectral advantage of MODIS, it can service to crop condition monitoring and crop yield estimation of Ministry of Agriculture.
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