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An improved approach for remotely sensing water stress impacts on forest C uptake

机译:遥感监测水分胁迫对森林碳吸收的影响的改进方法

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Given that forests represent the primary terrestrial sink for atmospheric CO2, projections of future carbon (C) storage hinge on forest responses to climate variation. Models of gross primary production (GPP) responses to water stress are commonly based on remotely sensed changes in canopy 'greenness' (e. g., normalized difference vegetation index; NDVI). However, many forests have low spectral sensitivity to water stress (SSWS) - defined here as drought-induced decline in GPP without a change in greenness. Current satellite-derived estimates of GPP use a vapor pressure deficit (VPD) scalar to account for the low SWSS of forests, but fail to capture their responses to water stress. Our objectives were to characterize differences in SSWS among forested and nonforested ecosystems, and to develop an improved framework for predicting the impacts of water stress on GPP in forests with low SSWS. First, we paired two independent drought indices with NDVI data for the conterminous US from 2000 to 2011, and examined the relationship between water stress and NDVI. We found that forests had lower SSWS than nonforests regardless of drought index or duration. We then compared satellite-derived estimates of GPP with eddy-covariance observations of GPP in two deciduous broadleaf forests with low SSWS: the Missouri Ozark (MO) and Morgan Monroe State Forest (MMSF) AmeriFlux sites. Model estimates of GPP that used VPD scalars were poorly correlated with observations of GPP at MO (r(2) = 0.09) and MMSF (r(2) = 0.38). When we included the NDVI responses to water stress of adjacent ecosystems with high SSWS into a model based solely on temperature and greenness, we substantially improved predictions of GPP at MO (r(2) = 0.83) and for a severe drought year at the MMSF (r(2) = 0.82). Collectively, our results suggest that large-scale estimates of GPP that capture variation in SSWS among ecosystems could improve predictions of C uptake by forests under drought.
机译:鉴于森林是大气CO2的主要陆地汇,未来对碳(C)储存的预测取决于森林对气候变化的反应。初级生产总值(GPP)对水分胁迫的响应模型通常基于冠层“绿色”的遥感变化(例如,归一化差异植被指数; NDVI)。但是,许多森林对水分胁迫(SSWS)的光谱敏感性较低-在此定义为干旱引起的GPP下降而绿色没有变化。当前基于GPP的卫星得出的估计值使用蒸气压亏缺(VPD)标量来解释森林的低SWSS,但无法捕获其对水分胁迫的响应。我们的目标是表征森林和非森林生态系统之间SSWS的差异,并开发一种改进的框架来预测水分胁迫对SSWS低的森林中GPP的影响。首先,我们将两个独立的干旱指数与2000年至2011年美国本土的NDVI数据配对,并研究了水分胁迫与NDVI之间的关系。我们发现,无论干旱指数或持续时间如何,森林的SSWS均低于非森林。然后,我们在低SSWS的两个落叶阔叶林中的GPP的卫星衍生估计与GPP的涡度协方差观测值进行了比较:密苏里州奥扎克(MO)和摩根梦露州立森林(MMSF)AmeriFlux站点。使用VPD标量的GPP的模型估计与GPP在MO(r(2)= 0.09)和MMSF(r(2)= 0.38)时的观察结果相关性很低。当我们仅基于温度和绿色将NDVI对高SSWS的邻近生态系统的水分胁迫响应纳入模型时,我们大大改善了MO时GPP(r(2)= 0.83)和MMSF严重干旱年份的GPP预测。 (r(2)= 0.82)。总体而言,我们的结果表明,捕获生态系统中SSWS变化的GPP的大规模估计可以改善干旱下森林对C吸收的预测。

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