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Exploring Simple Algorithms for Estimating Gross Primary Production in Forested Areas from Satellite Data

机译:探索简单的算法,根据卫星数据估算林区的初级总产值

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Algorithms that use remotely-sensed vegetation indices to estimate gross primary production (GPP), a key component of the global carbon cycle, have gained a lot of popularity in the past decade. Yet despite the amount of research on the topic, the most appropriate approach is still under debate. As an attempt to address this question, we compared the performance of different vegetation indices from the Moderate Resolution Imaging Spectroradiometer (MODIS) in capturing the seasonal and the annual variability of GPP estimates from an optimal network of 21 FLUXNET forest towers sites. The tested indices include the Normalized Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI), Leaf Area Index (LAI), and Fraction of Photosynthetically Active Radiation absorbed by plant canopies (FPAR). Our results indicated that single vegetation indices captured 50–80% of the variability of tower-estimated GPP, but no one index performed universally well in all situations. In particular, EVI outperformed the other MODIS products in tracking seasonal variations in tower-estimated GPP, but annual mean MODIS LAI was the best estimator of the spatial distribution of annual flux-tower GPP (GPP = 615 × LAI − 376, where GPP is in g C/m2/year). This simple algorithm rehabilitated earlier approaches linking ground measurements of LAI to flux-tower estimates of GPP and produced annual GPP estimates comparable to the MODIS 17 GPP product. As such, remote sensing-based estimates of GPP continue to offer a useful alternative to estimates from biophysical models, and the choice of the most appropriate approach depends on whether the estimates are required at annual or sub-annual temporal resolution.
机译:在过去的十年中,使用遥感植被指数来估算初级总产值(GPP)(全球碳循环的关键组成部分)的算法已广受欢迎。尽管对该主题进行了大量研究,但最合适的方法仍在辩论中。为了解决这个问题,我们比较了中等分辨率成像光谱仪(MODIS)的不同植被指数在捕获21个FLUXNET林塔站点的最佳网络中GPP估计值的季节性和年度变化方面的性能。测试的指标包括归一化植被指数(NDVI),增强植被指数(EVI),叶面积指数(LAI)和植物冠层吸收的光合有效辐射分数(FPAR)。我们的结果表明,单一植被指数捕获了塔估计GPP的50-80%的变异性,但是没有一种指数在所有情况下都表现良好。特别是,EVI在跟踪塔估计GPP的季节变化方面胜过其他MODIS产品,但是年均MODIS LAI是年度通量塔GPP空间分布的最佳估计值(GPP = 615×LAI − 376,其中GPP为以g C / m 2 /年为单位)。该简单算法修复了先前的方法,该方法将LAI的地面测量值与GPP的通量塔估计值链接起来,并产生了与MODIS 17 GPP产品相当的年度GPP估计值。这样,GPP的基于遥感的估算继续为生物物理模型的估算提供有用的替代方法,最合适方法的选择取决于估算是按年还是按年进行。

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