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专辑
纸质出版:2002
移动端阅览
对中国全年 36个旬NOAA AVHRR的 1km覆盖数据进行两步处理 :分别采用比值植被指数RVI、归一化植被指数NDVI、土壤调整植被指数SAVI和修改型土壤调整植被指数MSAVI最大值合成方法从每 3旬数据合成每月数据 ;对每一种处理后的原始数据计算四种植被指数
并对这 16种数据进行主成分变换
分析不同处理方式对主分量累积方差和各主分量所分映生物学规律的影响。
Based on the 12 months’ 1km AVHRR data in China
this paper computes four kinds of vegetation index (VI)
that are ratio vegetation index ( RVI )
normalized vegetation index ( NDVI )
soil adjusted vegetation index ( SAVI ) and modified soil adjusted vegetation index ( MSAVI ). Then
we make the same principal components analysis ( PCA ) to them
and find that the PCA transformed first four principal components ( PCA1
PCA2
PCA3
PCA4 ) contribute about 88% cumulative variance
and PCA1 represents VI cumulation of whole year
PCA2 represents VI difference of winter and summer
PCA3 represents VI difference of spring and summer
PCA4 represents VI difference of spring and autumn. In other words
for multitemporal vegetation index of one year
PCA not only compresses the information to the first four principal components
but also extracts the key change information. The PCA1 expresses the basic land cover information
the others extract the seasonal change information of vegetation. However
the outcome of different vegetation index has some differences. As to the cumulative variance of the first four eigenvectors
the biggest is NDVI
89.28%
the second is SAVI
88.40%
and the smallest is RVI
only 87.44%. As to the correlation matrix of four vegetation index
SAVI and MASVI are the most similar
NDVI is much similar with the first two vegetation indices
and RVI is the least similar. Although the primary purpose of VI is to indicate the biomass of vegetation
due to the different features of VI
such as different correlation with leaf area index
different sensitivity to vegetation and different anti disturbance of soil and atmosphere
different VI indicates different biomass for the same vegetation
that is
when we use the same PCA to different VI
the result is not uniform.
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