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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Analyzing the Vegetation Parameterization in the TU-Wien ASCAT Soil Moisture Retrieval
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Analyzing the Vegetation Parameterization in the TU-Wien ASCAT Soil Moisture Retrieval

机译:TU-Wien ASCAT土壤水分反演中的植被参数化分析

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In microwave remote sensing of the Earth's surface, the satellite signal holds information on both soil moisture and vegetation. This necessitates a correction for vegetation effects when retrieving soil moisture. This paper assesses the strengths and weaknesses of the existing vegetation correction as part of the Vienna University of Technology (TU-Wien) method for soil moisture retrieval from coarse-scale active microwave observations. In this method, vegetation is based on a multiyear climatology of backscatter variations related to phenology. To assess the plausibility of the correction method, we first convert the correction terms for retrievals from the Advanced Scatterometer (ASCAT) into estimates of vegetation optical depth using a water-cloud model. The spatial and temporal behaviors of the newly developed are compared with the optical depth retrieved from passive microwave observations with the land parameter retrieval model . Spatial patterns correspond well, although low values for are found over boreal forests. Temporal correlation between the two products is high , although negative correlations are observed in drylands. This comparison shows that and thus the vegetation correction method are sensitive to vegetation dynamics. Effects of the vegetation correction on soil moisture retrievals are investigated by comparing retrieved soil moisture before and after applying the correction term to modeled soil moisture. The vegetation correction increases the qual- ty of the soil moisture product. In areas of high interannual variability in vegetation dynamics, we observed a negative impact of the vegetation correction on the soil moisture, with a decrease in correlation up to 0.4. It emphasizes the need for a dynamic vegetation correction in areas with high interannual variability.
机译:在对地球表面进行微波遥感时,卫星信号会保存有关土壤水分和植被的信息。检索土壤水分时,有必要对植被影响进行校正。本文评估了现有的植被校正方法的优缺点,这是维也纳工业大学(TU-Wien)从粗尺度有源微波观测中获取土壤水分的方法的一部分。在这种方法中,植被基于与物候有关的多年反向散射变化的气候学。为了评估校正方法的合理性,我们首先使用水云模型将校正项(从高级散射仪(ASCAT)检索)转换为植被光学深度的估计值。将新近开发的时空行为与用陆地参数检索模型从被动微波观测所得的光学深度进行了比较。空间格局对应得很好,尽管在北方森林中发现的值较低。两种产品之间的时间相关性很高,尽管在干旱地区观察到负相关性。该比较表明,因此植被校正方法对植被动态敏感。通过比较在将校正项应用于模拟土壤湿度之前和之后的恢复土壤湿度,研究了植被校正对土壤湿度的影响。植被校正可以提高土壤水分产品的质量。在植被动力学年际变化高的地区,我们观察到植被校正对土壤水分的负面影响,相关性降低到0.4。它强调了在年际变化较大的地区进行动态植被校正的必要性。

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