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Estimation and analysis of terrestrial net primary productivity over India by remote-sensing-driven terrestrial biosphere model

机译:遥感驱动的陆地生物圈模型对印度陆地净初级生产力的估算和分析

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In the present study, the Carnegie-Ames-Stanford Approach (CASA), a terrestrial biosphere model, has been used to investigate spatiotemporal pattern of net primary productivity (NPP) during 2003 over the Indian subcontinent. The model drivers at 2-min spatial resolution were derived from National Oceanic and Atmospheric Administration advanced very high resolution radiometer normalized difference vegetation index, weather inputs, and soil and land cover maps. The annual NPP was estimated to be 1.57 Pg C (at the rate of 544 g C m~(-2)), of which 56% contributed by croplands (with 53% of geographic area of the country (GAC)), 18.5% by broadleaf deciduous forest (15% of GAC), 10% by broadleaf evergreen forest (5% of GAC), and 8% by mixed shrub and grassland (19% of GAC). There is very good agreement between the modeled NPP and ground-based cropland NPP estimates over the western India (R~2 = 0.54; p = 0.05). The comparison of CASA-based annual NPP estimates with the similar products from other operational algorithms such as C-fix and Moderate Resolution Imaging Spectroradiome-ter (MODIS) indicate that high agreement existsrnbetween the CASA and MODIS products over all land covers of the country, while agreement between CASA and C-Fix products is relatively low over the region dominated by agriculture and grassland, and the agreement is very low over the forest land. Sensitivity analysis suggest that the difference could be due to inclusion of variable light use efficiency (LUE) across different land cover types and environment stress scalars as downregulator of NPP in the present CASA model study. Sensitivity analysis further shows that the CASA model can overestimate the NPP by 50% of the national budget in absence of down-regulators and underestimate the NPP by 27% of the national budget by the use of constant LUE (0.39 gC MJ~(-1)) across different vegetation cover types.
机译:在本研究中,卡内基-埃姆斯-斯坦福方法(CASA)是一种陆地生物圈模型,已被用于调查印度次大陆2003年净初级生产力(NPP)的时空格局。空间分辨率为2分钟的模型驱动程序来自美国国家海洋和大气管理局先进的超高分辨率辐射计归一化差异植被指数,天气输入以及土壤和土地覆盖图。年度NPP估计为1.57 Pg C(以544 g C m〜(-2)的速率),其中56%来自耕地(占全国地理区域的53%(GAC)),18.5%阔叶落叶林(占GAC的15%),阔叶常绿森林(占GAC的5%),杂草丛和草地(GAC的19%)占8%。在印度西部,模拟的NPP与地面农田NPP估算值之间有很好的一致性(R〜2 = 0.54; p = 0.05)。将基于CASA的年度NPP估算值与来自其他运算算法(例如C-fix和中等分辨率成像光谱辐射仪(MODIS))的类似产品进行比较,表明在全国所有土地覆盖范围内,CASA和MODIS产品之间存在高度一致性,而在以农业和草原为主的地区,CASA与C-Fix产品之间的协议相对较低,而在林地上的协议则非常低。敏感性分析表明,这种差异可能是由于在当前的CASA模型研究中,不同土地覆盖类型和环境应力标量中包含可变的光利用效率(LUE)作为NPP的下调剂。敏感性分析还表明,在不存在下调限制因素的情况下,CASA模型可以将国民生产总值高估国家预算的50%,而使用恒定LUE(0.39 gC MJ〜(-1 ))覆盖不同的植被类型。

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