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Remote estimation of crop gross primary production with Landsat data

机译:利用Landsat数据远程估算作物的初级总产值

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An accurate and synoptic quantification of gross primary production (GPP) in crops is essential for studies of carbon budgets at regional and global scales. In this study, we tested a model, relating crop GPP to a product of total canopy chlorophyll (Chl) content and potential incident photosynthetically active radiation (PAR _(potential)). The approach is based on remotely sensed data; specifically, vegetation indices (VI) that are proxies for total Chl content and PAR _(potential), which is incident PAR under a condition of minimal atmospheric aerosol loading. Using VI retrieved from surface reflectance Landsat data, we found that the model is capable of accurately estimating GPP in maize, with coefficient of variation (CV) below 23%, and in soybean with CV below 30%. The algorithms established and calibrated over three Mead, Nebraska AmeriFlux sites were able to estimate maize and soybean GPP at tower flux sites in Minnesota, Iowa and Illinois with acceptable accuracy.
机译:作物总初级生产量(GPP)的准确和概要量化对于研究区域和全球规模的碳预算至关重要。在这项研究中,我们测试了一个模型,该模型将农作物GPP与总冠层叶绿素(Chl)含量和潜在入射光合有效辐射(PAR_(potential))的乘积相关。该方法基于遥感数据。特别是植被指数(VI),它是总Chl含量和PAR_(电势)的代理,而PAR_(电势)是在最小的大气气溶胶负荷下入射到PAR的。使用从表面反射率Landsat数据中获取的VI,我们发现该模型能够准确估计玉米的GPP,变异系数(CV)低于23%,大豆的CV低于30%。在三个Mead,Nebraska AmeriFlux站点上建立并校准的算法能够以可接受的精度估算明尼苏达州,爱荷华州和伊利诺伊州塔流量站点的玉米和大豆GPP。

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