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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Quantifying the relative contributions of vegetation and soil moisture conditions to polarimetric C-Band SAR response in a temperate peatland
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Quantifying the relative contributions of vegetation and soil moisture conditions to polarimetric C-Band SAR response in a temperate peatland

机译:量化植被和土壤湿度条件对温带泥炭泥的偏振C波段的相对贡献

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摘要

Effective modeling of many hydrological and climatological processes requires accurate spatial characterization of soil moisture, often over large regions and across different spatial scales. Synthetic Aperture Radar (SAR) has been shown to be sensitive to surface soil moisture, and is therefore a promising alternative to field data campaigns. However, the presence of spatially-variable vegetation and surface roughness also affect SAR backscatter. In this research, empirical models were developed to both predict soil moisture from SAR and assess the relationship between LiDAR-derived vegetation and surface conditions, and polarimetric SAR parameters in a vegetated peatland environment. Importantly, the low predictive strength of soil moisture models was only evident through a process of model cross-validation (bivariate regression R-2 ranged from 0.14 to 0.66 for fitted models and 0.05 to 0.41 for independently cross-validated models). The LiDAR-derived vegetation density was found to explain a large amount of variance in the SAR data, and models to predict soil moisture from SAR from only the least vegetated sites within the peatland demonstrated much higher predictive strength (R-2 = 0.11 to 0.71). Soil moisture within the vegetated and least-vegetated sites was not significantly different. Therefore, non vegetated areas may be useful as representative imaging locations for remotely monitoring surface moisture conditions in large peatland complexes with heterogeneous vegetation.
机译:许多水文和气候过程的有效建模需要准确地对土壤湿度的空间特征,通常在大区域和不同的空间尺度上。合成孔径雷达(SAR)已被证明对表面土壤湿度敏感,因此是现场数据活动的有希望的替代品。然而,存在空间变量植被和表面粗糙度也会影响SAR反向散射。在这项研究中,开发了实证模型,从SAR预测土壤水分,并评估LIDAR衍生的植被和表面条件之间的关系,以及植被泥炭环境中的偏振SAR参数。重要的是,土壤水分模型的低预测强度仅通过模型交叉验证的过程(双变量回归R-2为0.14至0.66,对于拟合模型为0.05至0.41,用于独立交叉验证模型)。发现激光雷达衍生的植被密度来解释SAR数据中的大量方差,以及从泥炭地内最少的植物部位预测SAR的土壤水分的模型表现出更高的预测力(R-2 = 0.11至0.71 )。植被和最少植物的土壤水分没有显着差异。因此,非植被区域可用作具有非均相植被的大型泥炭地复合物中的远程监测表面湿度条件的代表性成像位置。

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