首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Monitoring elevation variations in leaf phenology of deciduous broadleaf forests from SPOT/VEGETATION time-series
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Monitoring elevation variations in leaf phenology of deciduous broadleaf forests from SPOT/VEGETATION time-series

机译:从SPOT / VEGETATION时间序列监测落叶阔叶林叶片物候变化的高程变化

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摘要

In mountain forest ecosystems where elevation gradients are prominent, temperature gradient-based phenological variability can be high. However, there are few studies that assess the capability of remote sensing observations to monitor ecosystem phenology along elevation gradients, despite their relevance under climate change. We investigated the potential of medium resolution remotely sensed data to monitor the elevation variations in the seasonal dynamics of a temperate deciduous broadleaf forested ecosystem. Further, we explored the impact of elevation on the onset of spring leafing. This study was based on the analysis of multi-annual time-series of VEGETATION data acquired over the French Pyrenees Mountain Region (FPMR), in conjunction with simultaneous ground-based observations of leaf phenology made for two dominant tree species in the region (oak and beech). The seasonal variations in the perpendicular vegetation index (PVI) were analyzed during a five-year period (2002 to 2006). The five years of data were averaged into a one sole year in order to fill the numerous large spatio-temporal gaps due to cloud and snow presence - frequent in mountains - without altering the temporal resolution. Since a VEGETATION pixel (1. km~2) includes several types of land cover, the broadleaf forest-specific seasonal dynamics of PVI was reconstructed pixel-by-pixel using a temporal unmixing method based on a non-parametric statistical approach. The spatial pattern of the seasonal response of PVI was clearly consistent with the relief. Nevertheless the elevational or geographic range of tree species, which differ in their phenology sensitivity to temperature, also has a significant impact on this pattern. The reduction in the growing season length with elevation was clearly observable from the delay in the increase of PVI in spring and from the advance of its decrease in the fall. The elevation variations in leaf flushing timing were estimated from the temporal change in PVI in spring over the study area. They were found to be consistent with those measured in situ (R2 > 0.95). It was deduced that, over FPMR, the mean delay of leaf flushing timing for every 100. m increase in elevation was estimated be approximately 2.3. days. The expected estimation error of satellite-based leaf unfolding date for a given elevation was approximately 2. days. This accuracy can be considered as satisfactory since it would allow us to detect changes in leafing timing of deciduous broadleaf forests with a magnitude equivalent to that due to an elevation variation of 100. m (2.3. days on average), or in other words, to that caused by a variation in the mean annual air temperature of 0.5 °C. Although averaging the VEGETATION data over five years led to a loss of interannual information, it was found to be a robust approach to characterise the elevation variations in spring leafing and its long-term trends.
机译:在海拔梯度明显的山区森林生态系统中,基于温度梯度的物候变异性可能很高。然而,很少有研究评估遥感观测沿着海拔梯度监测生态系统物候的能力,尽管它们与气候变化有关。我们调查了中分辨率遥感数据监测温带落叶阔叶林生态系统季节动态中海拔变化的潜力。此外,我们探讨了海拔高度对春季叶子发芽的影响。这项研究基于对法国比利牛斯山区(FPMR)上获取的VEGETATION数据的多年时间序列的分析,并结合对该地区两种优势树种的叶片物候学同时进行地面观测(橡木)和山毛榉)。在五年期间(2002年至2006年)分析了垂直植被指数(PVI)的季节性变化。五年的数据被平均为一个单独的一年,以填补由于云和雪的存在而造成的大量时空空白(在山区频繁发生),而不会改变时间分辨率。由于VEGETATION像素(1. km〜2)包括几种类型的土地覆盖,因此使用基于非参数统计方法的时间分解方法逐像素重建了PVI的阔叶林特定季节动态。 PVI的季节性响应的空间格局与缓解明显一致。然而,树种的海拔或地理范围(其物候对温度的敏感性不同)也对该模式有重大影响。从春季PVI增加的延迟和秋季PVI减少的提前可以明显看出生长季节长度随海拔升高而减少。根据研究区域春季春季PVI随时间的变化,估计叶片冲洗时间的海拔变化。发现它们与现场测量的结果一致(R2> 0.95)。据推算,在FPMR上,每升高100.m,叶片冲洗时间的平均延迟估计约为2.3。天。对于给定的海拔高度,基于卫星的叶片展开日期的预期估计误差约为2天。可以认为该精度令人满意,因为它使我们能够检测到落叶阔叶林的生叶时间变化,其幅度与高度变化为100. m(平均2.3。天)所引起的变化相等,或者换句话说,这是由于年平均气温变化0.5°C引起的。尽管对五年内的VEGETATION数据进行平均会导致失去年度信息,但已发现这是一种表征春叶高程变化及其长期趋势的可靠方法。

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