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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Reconstruction of global MODIS NDVI time series: Performance of Harmonic ANalysis of Time Series (HANTS)
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Reconstruction of global MODIS NDVI time series: Performance of Harmonic ANalysis of Time Series (HANTS)

机译:重建全球MODIS NDVI时间序列:时间序列的谐波分析性能(HANTS)

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The harmonic analysis of time series (HANTS) algorithm has been widely used to reconstruct time series of normalized difference vegetation index (NDVI), Leaf area index (LAI), and land surface temperature (LST) as well as the polarization difference brightness temperature (PDBT) during the past 20 years to remove random noise or eliminate cloud/snow contamination. So far no systematic study on the accuracy of such reconstruction has been done. This study aims at taking the global MODIS vegetation index as an example to develop a generic method to evaluate the reconstruction performance of HANTS. The overall reconstruction error was divided into gap related error and fitting-method related error. Firstly, ten annual NDVI time series for a pixel were used to extract reference series and gap statistics. Then the gap and fitting-method related errors were quantified independently. The results suggest that the gap related error for most of the high latitude forest area (between 50 degrees N and 70 degrees N) was rather large (the mean root mean squared deviation (RMSD) reached to 0.15), which may be attributed to the fact that large gaps appear in the NDVI profiles between snow melting and vegetation regreening season. The gap related error was found negligible for the other areas of the globe except the North China Plain, the North India and several mountainous areas where the mean RMSD is around 0.1. The inadequate capability of low frequency harmonics to capture the rapid transition during snowmelt in spring at the high latitude region of the North Hemisphere makes the fitting-method related error in this region rather large (RMSD can reach 0.1). The method developed in this study was applied to map globally the spatial pattern of HANTS performance in the reconstruction of NDVI time series and it can also be applied to evaluate the reconstruction performance of time series of other land surface variables or the performance of other time series reconstruction algorithms. (C) 2015 Elsevier Inc. All rights reserved.
机译:时间序列的谐波分析(HANTS)算法已被广泛用于重建归一化差异植被指数(NDVI),叶面积指数(LAI)和地表温度(LST)以及极化差异亮度温度( PDBT),以消除随机噪声或消除云/雪污染。到目前为止,尚未对这种重建的准确性进行系统的研究。本研究以全球MODIS植被指数为例,开发一种评估HANTS重建性能的通用方法。总体重构误差分为间隙相关误差和拟合方法相关误差。首先,使用一个像素的十个年度NDVI时间序列来提取参考序列和间隙统计量。然后分别对与间隙和拟合方法相关的误差进行定量。结果表明,大多数高纬度森林地区(北纬50度到北纬70度之间)的间隙相关误差相当大(平均均方根偏差(RMSD)达到0.15),这可能是由于事实上,NDVI分布图在融雪和植被重新绿化季节之间出现了很大的差距。发现与间隙相关的误差对于除华北平原,印度北部和RMSD均值约为0.1的几个山区以外的全球其他地区而言可以忽略不计。低频谐波在北半球高纬度地区春季融雪期间无法捕捉快速过渡的能力使得该地区与拟合方法相关的误差相当大(RMSD可以达到0.1)。本研究开发的方法可用于在NDVI时间序列重建中全局映射HANTS性能的空间格局,还可用于评估其他地面变量时间序列或其他时间序列的重建性能重建算法。 (C)2015 Elsevier Inc.保留所有权利。

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