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Extracting soil water holding capacity parameters of a distributed agro-hydrological model from high resolution optical satellite observations series

机译:从高分辨率光学卫星观测序列中提取分布式农业水文模型的土壤持水量参数

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摘要

Sentinel-2 (S2) earth observation satellite mission, launched in 2015, is foreseen to promote within-field decisions in Precision Agriculture (PA) for both: (1) optimizing crop production; and (2) regulating environmental impacts. In this second scope, a set of Leaf Area Index (LAI) derived from S2 type time-series (2006-2010, using Formosat-2 satellite) is used to spatially constrain the within-field crop growth and the related nitrogen contamination of surface water simulated at a small experimental catchment scale with the distributed agro-hydrological model Topography Nitrogen Transfer and Transformation (TNT2). The Soil Water Holding Capacity (SWHC), represented by two parameters, soil depth and retention porosity, is used to fit the yearly maximum of LAI (LAX) at each pixel of the satellite image. Possible combinations of soil parameters, defining 154 realistic SWHC found on the study site are used to force spatially homogeneous SWHC. LAX simulated at the pixel level for the 154 SWHC, for each of the five years of the study period, are recorded and hereafter referred to as synthetic LAX. Optimal SWHCyear_I,pixel_j, corresponding to minimal difference between observed and synthetic LAX(year_I,pixel_j), is selected for each pixel, independent of the value at neighboring pixels. Each re-estimated soil maps are used to re-simulate LAX(year_I). Results show that simulated and synthetic LAX(year_I,allpixels) obtained from SWHCyear_I,allpixels are close and accurately fit the observed LAX(year_I,allpixels) (RMSE = 0.05 m(2)/m(2) to 0.2 and R-2 = 0.99 to 0.94), except for the year 2008 (RMSE = 0.8 m(2)/m(2) and R-2 = 0.8). These results show that optimal SWHC can be derived from remote sensing series for one year. Unique SWHC solutions for each pixel that limit the LAX error for the five years to less than 0.2 m(2)/m(2) are found for only 10% of the pixels. Selection of unique soil parameters using multi-year LAX and neighborhood solution is expected to deliver more robust soil parameters solutions and need to be assessed further. The use of optical remote sensing series is then a promising calibration step to represent crop growth within crop field at catchment level. Nevertheless, this study discusses the model and data improvements that are needed to get realistic spatial representation of agro-hydrological processes simulated within catchments.
机译:预计于2015年发射的Sentinel-2(S2)地球观测卫星任务将促进精准农业(PA)的田间决策,以实现以下两个目标:(1)优化作物生产; (2)规范环境影响。在第二个范围内,使用了一组来自S2型时间序列(2006-2010年,使用Formosat-2卫星)的叶面积指数(LAI),以空间限制田间作物的生长和地表的相关氮污染利用分布式农业水文模型地形氮素转移和转化(TNT2)在小实验流域规模上模拟水。由两个参数(土壤深度和保留孔隙率)表示的土壤持水量(SWHC)用于拟合卫星图像每个像素处的LAI(LAX)的年度最大值。可能的土壤参数组合定义了在研究地点发现的154种实际SWHC,用于强迫空间均一的SWHC。在研究期的五年中,每年记录在154 SWHC像素级模拟的LAX,以下称为合成LAX。为每个像素选择最佳SWHCyear_I,pixel_j,与观察到的和合成LAX(year_I,pixel_j)之间的最小差异相对应,而与相邻像素的值无关。每个重新估算的土壤图都用于重新模拟LAX(year_I)。结果表明,从SWHCyear_I获得的模拟和合成LAX(year_I,allpixels)接近且准确地拟合了观察到的LAX(year_I,allpixels)(RMSE = 0.05 m(2)/ m(2)等于0.2,R-2 = 0.99至0.94),但2008年除外(RMSE = 0.8 m(2)/ m(2)和R-2 = 0.8)。这些结果表明,最佳SWHC可以从遥感系列中提取一年。仅针对10%的像素,发现每个像素的独特SWHC解决方案将五年的LAX误差限制为小于0.2 m(2)/ m(2)。使用多年的LAX和邻域解法选择独特的土壤参数有望提供更强大的土壤参数解决方案,需要进一步评估。因此,光学遥感系列的使用是一个很有前途的校准步骤,可以代表集水区作物田中的作物生长。然而,本研究讨论了获得集水区中模拟的农业水文过程的真实空间表示所需要的模型和数据改进。

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