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Improving estimation of gross primary productivity of terrestrial ecosystems.

机译:改进对陆地生态系统总初级生产力的估计。

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The MOderate Resolution Imaging Spectroradiometer (MODIS) provides an unprecedented opportunity to monitor and quantify seasonal changes of vegetation and phenology. MODIS has the potential to improve the estimation, which is based on the algorithms for the NOAA Advanced Very High Resolution Radiometer (AVHRR), of biophysical/biochemical variables of vegetation. My doctoral study improves estimation of gross primary productivity (GPP) through two aspects: first, my study improved the detection of vegetation phenology by distinguishing MODIS contaminated observations and contamination-free observations, and secondly, I inverted the fraction of absorbed photosynthetically active radiation (PAR) by chlorophyll using radiative transfer models and daily MODIS data.; My dissertation has five aspects: (1) to develop a procedure to distinguish atmospherically contaminated observations, snow contaminated observations and contamination-free observations; (2) to monitor vegetation phenology using reflectance of the seven MODIS spectral bands for land and relative vegetation indices; (3) to clarify the concepts of fractions of PAR absorbed by canopy, leaf and chlorophyll; (4) to explore the potential of estimating the fractions of PAR absorbed at different scales; and (5) to check if vegetation seasonal MODIS spectral variations during plant growing season are only due to vegetation's anisotropic nature.; A procedure to extract contamination-free daily MODIS observations is proposed and developed. It has been employed for the Harvard Forest site, the Howland Forest site, the Walker Branch Watershed Forest site, the km67 Forest site in tropic, a soybean site in Nebraska, the Xilingol grassland site in China, the Bartlett Experimental Forest site, and two broadleaf deciduous forest sites in Missouri. The extracted MODIS signals (reflectance and vegetation indices) provide rich information for interpretation. The richness of information from the results goes beyond the widely used normalized difference vegetation index (NDVI) and leaf area index (LAI). The more precise phenology information can be used for seasonal GPP estimation.; The concepts of fractions of PAR absorbed by canopy, leaf and chlorophyll are described. I extracted fraction of PAR absorbed by chlorophyll for the Harvard Forest site, the Bartlett Experimental Forest site and the two deciduous broadleaf forest sites in Missouri using a coupled canopy-leaf radiative transfer model and daily MODIS data. Metropolis algorithm is used to invert the variables in the radiative transfer model. It provides posterior distributions for individual variables. Some of the inverted variables have been partly evaluated though validation for all variables is extremely expensive. Using the values of inverted variables of the two forest sites in Missouri, I calculated reflectance for the seven MODIS spectral ranges with real MODIS viewing geometries through whole growing season. I found that there should be other factors, except vegetation's anisotropic nature, due to seasonal MODIS spectral variations of the forests during the plant growing season.; My study suggests that in addition to measurements of canopy-level variables (e.g., LAI), field measurements of leaf-level variables (e.g., chlorophyll, other pigments, leaf dry matter, and leaf water content) will be useful for both remote sensing and ecological research.
机译:中等分辨率成像光谱仪(MODIS)提供了前所未有的机会来监视和量化植被和物候的季节性变化。 MODIS有潜力提高估算值,该估算值基于NOAA高级超高分辨率辐射计(AVHRR)的算法,用于估算植被的生物物理/生化变量。我的博士研究从两个方面改善了总初级生产力(GPP)的估算:首先,我的研究通过区分受MODIS污染的观测值和无污染观测值,改善了植被物候学的检测;其次,我反转了吸收的光合有效辐射的比例( PAR)通过叶绿素使用辐射转移模型和每日MODIS数据。本文的研究工作分为五个方面:(1)制定程序,以区别大气污染的观测资料,雪污染的观测资料和无污染的观测资料。 (2)利用七个MODIS光谱带的反射率监测土地物候和相对植被指数; (3)阐明冠层,叶片和叶绿素吸收的PAR组分的概念; (4)探索估计不同规模吸收的PAR比例的潜力; (5)检查植物生长期的植被季节MODIS光谱变化是否仅是由于植被的各向异性所致。提出并开发了一种提取无污染的每日MODIS观测值的程序。它已被用于哈佛森林,霍兰森林,沃克分水岭森林,热带地区的km67森林,内布拉斯加州的大豆,中国的锡林郭勒草原,巴特利特实验森林,以及两个密苏里州的阔叶落叶林。提取的MODIS信号(反射率和植被指数)为解释提供了丰富的信息。结果的信息丰富性超出了广泛使用的归一化植被指数(NDVI)和叶面积指数(LAI)。更精确的物候信息可以用于季节性GPP估计。描述了被冠层,叶片和叶绿素吸收的PAR组分的概念。我使用耦合的冠层-叶辐射传递模型和每日MODIS数据,提取了密苏里州哈佛森林站点,巴特利特实验森林站点和两个落叶阔叶森林站点的叶绿素吸收的PAR含量。使用Metropolis算法对辐射传递模型中的变量进行求逆。它提供了各个变量的后验分布。尽管对所有变量的验证都非常昂贵,但部分反向变量已得到部分评估。使用密苏里州两个森林站点的倒置变量的值,我计算了整个生长季中具有真实MODIS观测几何形状的七个MODIS光谱范围的反射率。我发现,除了植被的各向异性外,还应考虑其他因素,这是由于植物生长季节期间森林的季节MODIS光谱变化所致。我的研究表明,除了对冠层水平变量(例如LAI)进行测量之外,对叶水平变量(例如叶绿素,其他色素,叶片干物质和叶片含水量)的现场测量对于两种遥感都将是有用的。和生态研究。

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