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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A snow-free vegetation index for improved monitoring of vegetation spring green-up date in deciduous ecosystems
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A snow-free vegetation index for improved monitoring of vegetation spring green-up date in deciduous ecosystems

机译:一种无雪植被指数,用于改善落叶生态系统的植被春季绿色绿色绿色喷射日期

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Vegetative spring green-up date (GUD), an indicator of plants' sensitivity to climate change, exerts an important influence on biogeochemical cycles. Conventionally, large-scale monitoring of spring phenology is primarily detected by satellite-based vegetation indices (VIs), e.g. the Normalized Difference Vegetation Index (NDVI). However, these indices have long been criticized, as the derived GUD can be biased by snowmelt. To minimize the snowmelt effect in monitoring spring phenology, we developed a new index, Normalized Difference Phenology Index (NDPI), which is a 3-band VI, designed to best contrast vegetation from the background (i.e. soil and snow in this study) as well as to minimize the difference among the backgrounds. We examined the rigorousness of NDPI in three ways. First, we conducted mathematical simulations to show that NDPI is mathematically robust and performs superior to NDVI for differentiating vegetation from the background, theoretically justifying NDPI for spring phenology monitoring. Second, we applied NDPI using MODIS land surface reflectance products to real vegetative ecosystems of three in-situ PhenoCam sites. Our results show that, despite large snow cover in the winter and snowmelt process in the spring, the temporal trajectories of NDPI closely track the vegetation green-up events. Finally, we applied NDPI to 11 eddy-covariance tower sites, spanning large gradients in latitude and vegetation types in deciduous ecosystems, using the same MODIS products. Our results suggest that the GUD derived by using NDPI is consistent with daily gross primary production (GPP) derived GUD, with R (Spearman's correlation) = 0.93, Bias = 2.90 days, and RMSE (the root mean square error) = 7.75 days, which outcompetes the snow removed NDVI approach, with R = 0.90, Bias = 7.34 days, and RMSE = 10.91 days. We concluded that our newly-developed NDPI is robust to snowmelt effect and is a reliable approach for monitoring spring green-up in deciduous ecosystems. (C) 2017 Elsevier Inc. All rights reserved.
机译:植物春天绿色喷射日(GUD),植物对气候变化的敏感性的指标,对生物地球化学循环产生了重要影响。通常,春季候选的大规模监测主要由卫星植被指数(VI)检测到,例如,归一化差异植被指数(NDVI)。然而,这些指数长期受到批评,因为派生的GUD可以被雪花偏见。为了最大限度地减少监测春季候选的冰雪效应,我们开发了一种新的指数,归一化差异贴片性指数(NDPI),这是一个3频段VI,旨在从背景中的最佳植被(即本研究中的土壤和雪)以及最小化背景中的差异。我们以三种方式审查了NDPI的严格性。首先,我们进行了数学模拟,以表明NDPI是数学上的强大,用于从背景中区分植被,从而为春季候选的NDPI提供植被的优越。其次,我们使用Modis Land Surface反射产品施加NDPI,到了三种原位凤凰位点的真正植物生态系统。我们的研究结果表明,尽管春季冬季和雪花的雪地覆盖了大型雪覆盖,但NDPI的时间轨迹密切追踪植被绿色活动。最后,我们申请了NDPI到11个涡旋协方差塔网站,跨越落后的生态系统中的纬度和植被类型的大型渐变,使用相同的MODIS产品。我们的研究结果表明,使用NDPI导出的GUD与日常初级生产(GPP)衍生的GUD一致,R(Spearman的相关)= 0.93,偏见= 2.90天,并RMSE(均均线误差)= 7.75天,其中脱落的雪移除了NDVI方法,r = 0.90,偏见= 7.34天,RMSE = 10.91天。我们的结论是,我们的新开发的NDPI对雪花效应具有强大,是监测落叶生态系统的春季绿色的可靠方法。 (c)2017年Elsevier Inc.保留所有权利。

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