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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Estimating inundation extent using CYGNSS data: A conceptual modeling study
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Estimating inundation extent using CYGNSS data: A conceptual modeling study

机译:使用Cygnss数据估算淹没程度:概念建模研究

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Mapping inundation dynamics and flooding extent is important for a wide variety of applications, from providing disaster relief and predicting infectious disease transmission to quantifying the effects of climate change on Earth's hydrologic cycle. Due to the rapid and highly spatially heterogeneous nature of flooding events, acquiring data with both high spatial and temporal resolutions is paramount, yet doing so has remained a challenge in satellite remote sensing. The potential for Global Navigation Satellite System-Reflectometry (GNSS-R) to help address this challenge has been explored in several studies, the bulk of which use data from the Cyclone GNSS (CYGNSS) constellation of GNSS-R satellites. This work presents a simple forward model that describes how surface reflectivity measured by CYGNSS should change due to flooding for different land surface types. We corroborate our model findings with observations from the Amazon Basin and Lake Eyre, Australia. Both the model and observations indicate that the relationship between surface reflectivity and surface water extent strongly depends on the micro-scale surface roughness of the land and water. We show that the increase in surface reflectivity due to flooding or inundation is greatest in areas where the surrounding land has dense vegetation. In areas where the land surface surrounding inundated areas is perfectly smooth, the increase in surface reflectivity due to flooding is not as strong, and confounding effects of soil moisture and water roughness could lead to large uncertainties in resulting surface water retrievals. However, even a few centimeters of surface roughness will result in several dB sensitivity to surface water, provided that the water is smoother than the land surface itself.
机译:映射淹没动态和洪水范围对于各种各样的应用是重要的,从提供救灾和预测传染病传播,以量化气候变化对地球水文循环的影响。由于洪水事件的快速和高度空间异质性质,以高空间和时间分辨率获取数据是至关重要的,但在卫星遥感中仍然存在挑战。在几项研究中探讨了全球导航卫星系统反射率(GNSS-R)以帮助解决这一挑战的潜力,其中大部分使用来自GNSS-R卫星的旋风GNSS(Cygnss)星座的数据。这项工作介绍了一个简单的前向模型,描述了Cygnss如何测量的表面反射率如何由于不同的土地表面类型的洪水而变化。我们用澳大利亚亚马逊盆地和艾德雷湖的观察结果证实了我们的模型调查结果。模型和观察结果表明,表面反射率和地表水范围之间的关系强烈取决于陆地和水的微级表面粗糙度。我们表明,由于洪水或淹没导致的表面反射率的增加是最伟大的,周围土地植被密集。在土地面周围淹没区域完全光滑的地区,由于洪水引起的表面反射率的增加并不强烈,并且土壤水分和水粗糙度的混杂效果可能导致所得到的表面水检索方面的巨大不确定性。然而,即使是几厘米的表面粗糙度也会导致几个DB对地表水的敏感性,只要水比陆地表面本身更平滑。

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