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Seasonal variation in grass water content estimated from proximal sensing and MODIS time series in a Mediterranean Fluxnet site

机译:根据地中海Fluxnet站点的近端感测和MODIS时间序列估算的草水含量的季节性变化

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This study evaluates three different metrics of water content of an herbaceous cover in a Mediterranean wooded grassland (dehesa) ecosystem. Fuel moisture content (FMC), equivalent water thickness (EWT) and canopy water content (CWC) were estimated from proximal sensing and MODIS satellite imagery. Dry matter (Dm) and leaf area index (LAI) connect the three metrics and were also analyzed. Metrics were derived from field sampling of grass cover within a 500m MODIS pixel. Hand-held hyperspectral measurements and MODIS images were simultaneously acquired and predictive empirical models were parametrized. Two methods of estimating FMC and CWC using different field protocols were tested in order to evaluate the consistency of the metrics and the relationships with the predictive empirical models. In addition, radiative transfer models (RTM) were used to produce estimates of CWC and FMC, which were compared with the empirical ones. Results revealed that, for all metrics spatial variability was significantly lower than temporal. Thus we concluded that experimental design should prioritize sampling frequency rather than sample size. Dm variability was high which demonstrates that a constant annual Dm value should not be used to predict EWT from FMC as other previous studies did. Relative root mean square error (RRMSE) evaluated the performance of nine spectral indices to compute each variable. Visible Atmospherically Resistant Index (VARI) provided the lowest explicative power in all cases. For proximal sensing, Global Environment Monitoring Index (GEMI) showed higher statistical relationships both for FMC (RRMSE = 34.5 %) and EWT (RRMSE = 27.43 %) while Normalized Difference Infrared Index (NDII) and Global Vegetation Monitoring Index (GVMI) for CWC (RRMSE = 30.27% and 31.58% respectively). When MODIS data were used, results showed an increase in R-2 and Enhanced Vegetation Index (EVI) as the best predictor for FMC (RRMSE = 33.81 %) and CWC (RRMSE = 27.56 %) and GEMI for EWT (RRMSE = 24.6 %). Differences in the viewing geometry of the platforms can explain these differences as the portion of vegetation observed by MODIS is larger than when using proximal sensing including the spectral response from scattered trees and its shadows. CWC was better predicted than the other two water content metrics, probably because CWC depends on LAI, that shows a notable seasonal variation in this ecosystem. Strong statistical relationship was found between empirical models using indices sensible to chlorophyll activity (NDVI or EVI which are not directly related to water content) due to the close relationship between LAI, water content and chlorophyll activity in grassland cover, which is not true for other types of vegetation such as forest or shrubs. The empirical methods tested outperformed FMC and CWC products based on radiative transfer model inversion.
机译:这项研究评估了地中海树木繁茂的草原(dehesa)生态系统中草本覆盖物水分含量的三种不同指标。燃料水分含量(FMC),当量水厚度(EWT)和冠层水分含量(CWC)是根据近端传感和MODIS卫星图像估算得出的。干物质(Dm)和叶面积指数(LAI)将这三个指标联系起来,并进行了分析。度量标准是通过对500m MODIS像素内的草皮进行现场采样得出的。同时获取手持式高光谱测量和MODIS图像,并建立预测性经验模型的参数。为了评估指标的一致性以及与预测经验模型的关系,测试了两种使用不同现场协议估算FMC和CWC的方法。此外,使用辐射传递模型(RTM)来生成CWC和FMC的估计值,并将其与经验值进行比较。结果表明,对于所有指标,空间变异性均明显低于时间变异性。因此,我们得出结论,实验设计应优先考虑采样频率而不是样本大小。 Dm的变异性很高,这表明不应像其他先前研究那样使用恒定的年度Dm值来预测FMC的EWT。相对均方根误差(RRMSE)评估了九个光谱指数的性能,以计算每个变量。在所有情况下,可见的耐大气指数(VARI)都具有最低的解释能力。对于近端感测,全球环境监测指数(GEMI)对FMC(RRMSE = 34.5%)和EWT(RRMSE = 27.43%)均显示出较高的统计关系,而CWC的归一化差异红外指数(NDII)和全球植被监测指数(GVMI) (RRMSE分别为30.27%和31.58%)。当使用MODIS数据时,结果表明R-2和增强植被指数(EVI)增加,FMC(RRMSE = 33.81%)和CWC(RRMSE = 27.56%)和EWT的GEMI(RRMSE = 24.6%)是最佳预测指标)。平台的观察几何形状的差异可以解释这些差异,因为与使用近端感应(包括来自散落的树木及其阴影的光谱响应)相比,MODIS观测到的植被部分更大。与其他两个水分含量指标相比,CWC的预测效果更好,这可能是因为CWC取决于LAI,这表明该生态系统存在明显的季节性变化。由于LAI,含水量和草地覆盖区叶绿素活性之间的密切关系,在使用对叶绿素活性敏感的指标(NDVI或EVI与水含量没有直接关系)的经验模型之间发现强烈的统计关系,而其他模型则不然植被类型,例如森林或灌木。在辐射传递模型反演的基础上,经验方法测试的性能优于FMC和CWC产品。

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