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Combining remote sensing data and ecosystem modeling to maprooting depth

机译:将遥感数据和生态系统建模结合到Maprooting深度

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Biogeochemical ecosystem models describe the energy and mass exchange processes between natural systems and their environment. They normally require a large amount of inputs that present important spatial variations and require a parameterization. Other simpler ecosystem models focused on a single process only need a reduced amount of inputs usually derived from direct measurements and can be combined with the former models to calibrate their parameters. This study combines the biogeochemical model Biome-BGC and a production efficiency model (PEM) optimized for the study area to calibrate a key parameter for the simulation of the ecosystem water balance by Biome-BGC, the rooting depth. Daily gross primary production (GPP) time series for the 2005-2012 period are simulated by both models. First, the optimized PEM is validated against GPP derived from four eddy covariance (EC) towers located at different ecosystems representative of the study area. Next, GPP time series simulated by both models are combined to optimize rooting depth at the four sites: different values of rooting depth are tested and the one that results in the lowest root mean square error (RMSE) between the two GPP series is selected. Explained variance and relative RMSE between Biome-BGC and EC GPP series are respectively augmented between 3 and 14 percentage points (pp) and reduced between 1 and 33pp. Finally the methodology is extrapolated for the whole study area and an original rooting depth map for peninsular Spain, which iscoherent with the spatial distribution of vegetation type and GPP in the study area, is obtained at 1 -km spatial resolution.
机译:生物地球化学生态系统模型描述了自然系统与环境之间的能源和批量交流过程。它们通常需要大量输入,该输入具有重要的空间变化并需要参数化。专注于单个过程的其他更简单的生态系统模型仅需要减少通常从直接测量导出的输入量,并且可以与前模型组合以校准其参数。本研究结合了生物地球化学模型生物群系-BGC和生产效率模型(PEM),优化了研究区域,以校准通过生物群系-BGC模拟生态系统水平衡的关键参数,生根深度。 2005 - 2012年期间的每日总生产量(GPP)时间序列由两种模型进行模拟。首先,针对位于代表研究区域的不同生态系统的四个涡旋协方差(EC)塔的GPP验证了优化的PEM。接下来,通过两个模型模拟的GPP时间序列组合以优化四个站点的生根深度:测试了生根深度的不同值,并且选择了两个GPP系列之间的最低均线误差(RMSE)的一个。 Biome-BGC和EC GPP系列之间的解释方差和相对RMSE分别在3到14个百分点(PP)之间增强,并且在1到33pp之间减少。最后,对于整个研究区域和半岛西班牙的原始生根深度图来说,该方法是为整个研究区域的原始生根深度图,其中在研究面积中剥离了植被类型和GPP的空间分布,在1km的空间分辨率下获得。

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