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Spatial Downscaling of Gross Primary Productivity Using Topographic and Vegetation Heterogeneity Information: A Case Study in the Gongga Mountain Region of China

机译:基于地形和植被异质性信息的总初级生产力的空间缩减:以中国贡嘎山区为例

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Due to the spatial heterogeneity of land surfaces, downscaling is an important issue in the development of carbon cycle models when evaluating the role of ecosystems in the global carbon cycle. In this study, a downscaling algorithm was developed to model gross primary productivity (GPP) at 500 m in a time series over rugged terrain, which considered the effects of spatial heterogeneity on carbon flux simulations. This work was carried out for a mountainous area with an altitude ranging from 2606 to 4744 m over the Gongga Mountain (Sichuan Province, China). In addition, the Moderate Resolution Imaging Spectroradiometer (MODIS) GPP product at 1 km served as the primary dataset for the downscaling algorithm, and the 500 m MODIS GPP product was used as the reference dataset to evaluate the downscaled GPP results. Moreover, in order to illustrate the advantages and benefits of the proposed downscaling method, the downscaled results in this work, along with ordinary kriging downscaled results, spline downscaled results and inverse distance weighted (IDW) downscaled results, were compared to the MODIS GPP at 500 m. The results showed that (1) the GPP difference between the 500 m MODIS GPP and the proposed downscaled GPP results was primarily in the range of [?1, 1], showing that both vegetation heterogeneity factors (i.e., LAI) and topographic factors (i.e., altitude, slope and aspect) were useful for GPP downscaling; (2) the proposed downscaled results (R 2 = 0.89, RMSE = 1.03) had a stronger consistency with the 500 m MODIS GPP than those of the ordinary kriging downscaled results (R 2 = 0.43, RMSE = 1.36), the spline downscaled results (R 2 = 0.40, RMSE = 1.50) and the IDW downscaled results (R 2 = 0.42, RMSE = 1.10) for all Julian days; and (3) the inconsistency between MODIS GPP at 500 m and 1 km increased with the increase in altitude and slope. The proposed downscaling algorithm could provide a reference when considering the effects of spatial heterogeneity on carbon flux simulations and retrieving other fine resolution ecological-physiology parameters (e.g., net primary productivity and evaporation) over topographically complex terrains.
机译:由于陆地表面的空间异质性,在评估生态系统在全球碳循环中的作用时,缩小比例是碳循环模型开发中的重要问题。在这项研究中,开发了一种降尺度算法,以在崎terrain的地形上的时间序列中对500 m处的总初级生产力(GPP)进行建模,其中考虑了空间异质性对碳通量模拟的影响。这项工作是在贡嘎山(中国四川省)上海拔2606至4744 m的山区进行的。此外,将1 km的中分辨率成像光谱仪(MODIS)GPP产品用作缩减算法的主要数据集,并将500 m MODIS GPP产品用作参考数据集以评估缩减后的GPP结果。此外,为了说明所提出的缩减方法的优点和好处,将这项工作中的缩减结果以及普通克里格缩减结果,样条缩减结果和逆距离加权(IDW)缩减结果与MODIS GPP进行了比较。 500米结果表明:(1)500 m MODIS GPP与拟议的按比例缩小GPP结果之间的GPP差异主要在[?1,1]范围内,表明植被异质性因子(即LAI)和地形因子(即海拔高度,坡度和坡向)对于GPP缩减很有用; (2)拟议的缩减结果(R 2 = 0.89,RMSE = 1.03)与500 m MODIS GPP的一致性比普通克里格缩减结果(R 2 = 0.43,RMSE = 1.36)更强,样条缩减结果(R 2 = 0.40,RMSE = 1.50)和IDW缩减的结果(R 2 = 0.42,RMSE = 1.10); (3)MODIS GPP在500 m和1 km之间的不一致性随着海拔和坡度的增加而增加。在考虑空间异质性对碳通量模拟的影响以及在地形复杂的地形上检索其他精细分辨率的生态生理参数(例如净初级生产力和蒸发量)时,提出的缩减算法可以提供参考。

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