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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Reconstruction of a complete global time series of daily vegetation index trajectory from long-term AVHRR data
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Reconstruction of a complete global time series of daily vegetation index trajectory from long-term AVHRR data

机译:从长期AVHRR数据重建每日植被指数轨迹的完整全球时间序列

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Normalized Difference Vegetation Index (NDVI) derived from Advanced Very High Resolution Radiometer (AVHRR) has been extensively used for examining long-term dynamics of the vegetated land surface and climate impacts because it provides the longest time series of global satellite measurements. However, the applications are significantly limited by the persistent presence of atmospheric contamination and snow cover in the NDVI time series. Several approaches have been developed for smoothing and fitting the time series of biweekly NDVI composites but the capabilities of depicting land surface dynamics are method dependent. Using a time series of daily EVI2 (two band enhanced vegetation index) from AVHRR long term data record (LTDR) (19821999), this study reconstructed a global dataset of spatially and temporally consistent and continuous daily vegetation index. Specifically, the EVI2 outliers were removed and missing observations were filled explicitly based on biophysical properties of vegetation growing cycles. The EVI2 temporal trajectory was then reconstructed using a hybrid piecewise logistic model which is biophysically meaningful in describing vegetation growth. Moreover, the confidence for each annual time series in each individual pixel was quantified by determining both the proportion of good quality satellite observations and the agreement index of model fitting during a vegetation growing season. Finally, verification was performed, which indicated that the reconstructed EVI2 trajectory reflects well the field observations of seasonal green vegetation cover and the flux tower measurements of interannual gross primary productivity variation. (C) 2014 Elsevier Inc All rights reserved.
机译:源自甚高分辨率高分辨率辐射计(AVHRR)的归一化植被指数(NDVI)已被广泛用于检查植被地面和气候影响的长期动态,因为它提供了最长的全球卫星测量时间序列。但是,由于NDVI时间序列中持续存在的大气污染和积雪,应用受到很大限制。已经开发了几种方法来平滑和拟合双周NDVI复合材料的时间序列,但是描述陆地表面动力学的能力取决于方法。利用AVHRR长期数据记录(LTDR)(19821999)的每日EVI2(两波段增强植被指数)的时间序列,该研究重建了一个时空连续且连续的每日植被指数的全球数据集。具体而言,根据植被生长周期的生物物理特性,删除了EVI2异常值,并明确填充了缺失的观测值。然后使用混合分段逻辑模型重建EVI2时间轨迹,该模型在描述植被生长方面具有生物学意义。此外,通过确定高质量卫星观测的比例和植被生长季节模型拟合的一致性指数,可以量化每个像素中每个年度时间序列的置信度。最后,进行了验证,表明重建的EVI2轨迹很好地反映了季节性绿色植被覆盖的野外观测以及年平均总初级生产力变化的通量塔测量值。 (C)2014 Elsevier Inc保留所有权利。

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