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首页> 外文期刊>Agricultural and Forest Meteorology >Estimation of crop gross primary production (GPP): I. impact of MODIS observation footprint and impact of vegetation BRDF characteristics.
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Estimation of crop gross primary production (GPP): I. impact of MODIS observation footprint and impact of vegetation BRDF characteristics.

机译:作物初级总产值的估算:I. MODIS观测足迹的影响和植被BRDF特性的影响。

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摘要

Accurate estimation of gross primary production (GPP) is essential for carbon cycle and climate change studies. Three AmeriFlux crop sites of maize and soybean were selected for this study. Two of the sites were irrigated and the other one was rainfed. The normalized difference vegetation index (NDVI), the enhanced vegetation index (EVI), the green band chlorophyll index (CIgreen), and the green band wide dynamic range vegetation index (WDRVIgreen) were computed from the moderate resolution imaging spectroradiometer (MODIS) surface reflectance data. We examined the impacts of the MODIS observation footprint and the vegetation bidirectional reflectance distribution function (BRDF) on crop daily GPP estimation with the four spectral vegetation indices (VIs - NDVI, EVI, WDRVIgreen and CIgreen) where GPP was predicted with two linear models, with and without offset: GPP=a x VI x PAR and GPP=a x VI x PAR + b. Model performance was evaluated with coefficient of determination (R2), root mean square error (RMSE), and coefficient of variation (CV). The MODIS data were filtered into four categories and four experiments were conducted to assess the impacts. The first experiment included all observations. The second experiment only included observations with view zenith angle (VZA) <=35 degrees to constrain growth of the footprint size,which achieved a better grid cell match with the agricultural fields. The third experiment included only forward scatter observations with VZA <=35 degrees . The fourth experiment included only backscatter observations with VZA <=35 degrees . Overall, the EVI yielded the most consistently strong relationships to daily GPP under all examined conditions. The model GPP=a x VI x PAR + b had better performance than the model GPP=a x VI x PAR, and the offset was significant for most cases. Better performance was obtained for the irrigated field than its counterpart rainfed field. Comparison of experiment 2 vs. experiment 1 was used to examine the observation footprint impact whereas comparison of experiment 4 vs. experiment 3 was used to examine the BRDF impact. Changes in R2, RMSE,CV and changes in model coefficients "a" and "b" (experiment 2 vs. experiment 1; and experiment 4 vs. experiment 3) were indicators of the impacts. The second experiment produced better performance than the first experiment, increasing R2 (increased 0.13) and reducing RMSE (reduced 0.68 g C m-2 d-1) and CV (reduced 9%). For each VI, the slope of GPP=a x VI x PAR in the second experiment for each crop type changed little while the slope and intercept of GPP=a x VI x PAR + b varied field by field. The CIgreen was least affected by the MODIS observation footprint in estimating crop daily GPP (R2, increased 0.08; RMSE, decreased 0.42 g C m-2 d-1; and CV, decreased 7%). Footprint most affected the NDVI (R2, increased 0.15; CV, decreased 10%) and the EVI (RMSE, decreased 0.84 g C m-2 d-1). The vegetation BRDF impact also caused variation of model performance and change of model coefficients. Significantly different slopes were obtained for forward vs. backscatter observations, especially for the CIgreen and the NDVI. Both the footprint impact and the BRDF impact varied with crop types, irrigation options, model options and VI options.
机译:准确估算初级生产总值(GPP)对于碳循环和气候变化研究至关重要。这项研究选择了三个玉米和大豆的AmeriFlux作物种植地。其中两个场被灌溉,另一个场被雨育。归一化植被指数(NDVI),增强植被指数(EVI),绿带叶绿素指数(CI green )和绿带宽动态范围植被指数(WDRVI green <从中等分辨率成像光谱仪(MODIS)的表面反射率数据计算得到。我们用四个光谱植被指数(VIs-NDVI,EVI,WDRVI green 和CI )检查了MODIS观测足迹和植被双向反射分布函数(BRDF)对农作物每日GPP估计的影响。 > green ),其中GPP是通过两个线性模型(带有和不带有偏移)预测的:GPP = ax VI x PAR和GPP = ax VI x PAR + b。使用确定系数(R 2 ),均方根误差(RMSE)和变异系数(CV)评估模型性能。 MODIS数据被分为四个类别,并进行了四个实验以评估影响。第一个实验包括所有观察结果。第二个实验仅包括视角天顶角(VZA)<= 35度的观察,以限制足迹尺寸的增长,从而实现了与农田更好的网格匹配。第三个实验仅包括VZA <= 35度的前向散射观测。第四个实验仅包括VZA <= 35度的反向散射观测。总体而言,在所有检查条件下,EVI与每日GPP的关系最一致。模型GPP = a x VI x PAR + b比模型GPP = a x VI x PAR具有更好的性能,并且偏移在大多数情况下都非常重要。灌溉田的性能要优于雨养田。实验2与实验1的比较用于检查观测足迹影响,而实验4与实验3的比较用于检查BRDF影响。 R 2 ,RMSE,CV的变化以及模型系数“ a”和“ b”的变化(实验2对实验1;实验4对实验3)是影响的指标。第二个实验产生了比第一个实验更好的性能,增加了R 2 (增加了0.13)并降低了RMSE(减少了0.68 g C m -2 d -1 < / sup>)和CV(降低了9%)。对于每个VI,第二种实验中每种作物类型的GPP = a x VI x PAR的斜率变化很小,而GPP = a x VI x PAR + b的斜率和截距逐场变化。 CI green 受MODIS观测足迹的影响最小,估计每日农作物GPP(R 2 ,增加0.08; RMSE,减少0.42 g C m -2 < / sup> d -1 ; CV降低了7%)。足迹对NDVI的影响最大(R 2 ,增加0.15; CV,减少10%)和EVI(RMSE,减少0.84 g C m -2 d - 1 )。植被BRDF的影响还引起模型性能的变化和模型系数的变化。对于前向和后向散射观测,特别是对于CI green 和NDVI,获得了明显不同的斜率。足迹影响和BRDF影响都随作物类型,灌溉选项,模型选项和VI选项而变化。

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