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Using MODIS Weekly Evapotranspiration to Monitor Drought

机译:使用MODIS每周蒸散量监测干旱

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Regional drought and flooding from extreme climatic events are increasing in frequency and severity, with significant adverse eco-social impacts. Detecting and monitoring drought at regional to global scales remains challenging, despite the availability of various drought indices and widespread availability of potentially synergistic global satellite observational records. Mu et al. (2013) developed a method to generate a near-real-time remotely sensed Drought Severity Index (DSI) to monitor and detect drought globally at 1-km spatial resolution and regular 8-day, monthly and annual frequencies. The DSI integrates and exploits information from current operational satellite based terrestrial evapotranspiration (ET) and Vegetation greenness Index (Ⅵ) products, which are sensitive to vegetation water stress. Specifically, our approach determines the annual DSI departure from its normal (2000-2011) using the remotely sensed ratio of ET to potential ET (PET) and NDVI. The DSI results were derived globally and captured documented major regional droughts over the last decade, including severe events in Europe (2003), the Amazon (2005 and 2010), and Russia (2010). Based on the global MOD16 ET algorithm, Mu et al. (in preparation) have further improved the MODIS ET algorithm for Nile River Basin Countries. Not only are the results improved dramatically but also the data cover every 1-km pixel of the land surfaces including inland waters (lakes, rivers, etc.), deserts, urban areas, unclassified land surfaces, etc. Using the improved MODIS ET algorithm, we can generate remotely sensed terrestrial ET and DSI products with higher quality. These products will enhance our capabilities for near-real-time drought monitoring to assist decision makers in regional drought assessment and mitigation efforts, and without many of the constraints of more traditional drought monitoring methods.
机译:极端气候事件造成的区域干旱和洪灾的频率和严重性正在增加,并对生态社会产生重大不利影响。尽管有各种干旱指数,而且广泛具有潜在的协同作用的全球卫星观测记录,但在区域到全球范围内检测和监测干旱仍然具有挑战性。 Mu等。 (2013年)开发了一种生成近实时遥感干旱严重程度指数(DSI)的方法,以1公里的空间分辨率和固定的8天,每月和每年的频率监测和检测全球干旱。 DSI集成并利用了目前对卫星植被敏感的地面卫星蒸散量(ET)和植被绿色指数(VI)产品的运行信息。具体来说,我们的方法使用遥感的ET与潜在ET(PET)和NDVI的比值来确定年度DSI偏离其正常值(2000-2011)。 DSI结果来自全球,并记录了过去十年中区域性的重大干旱,包括欧洲(2003年),亚马逊(2005年和2010年)和俄罗斯(2010年)的严重事件。 Mu等基于全局MOD16 ET算法。 (正在准备中)进一步改进了针对尼罗河流域国家的MODIS ET算法。结果不仅得到了极大的改善,而且数据覆盖了包括内陆水域(湖泊,河流等),沙漠,城市地区,未分类的地表等在内的每1 km像素的地表。使用改进的MODIS ET算法,我们可以生成质量更高的遥感ET和DSI产品。这些产品将增强我们的近实时干旱监测能力,以帮助决策者进行区域干旱评估和减灾工作,而不受更多传统干旱监测方法的限制。

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  • 会议地点 San Diego CA(US)
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    Numerical Terradynamic Simulation Group (NTSG), College of Forestry and Conservation, The University of Montana, Missoula, MT 59812 Science Systems and Applications, Inc. (SSAI), 10210 Greenbelt Road, Lanham, MD, 20706;

    Department of Geographical Sciences, University of Maryland, College Park, MD, 20742;

    Numerical Terradynamic Simulation Group (NTSG), College of Forestry and Conservation, The University of Montana, Missoula, MT 59812 Science Systems and Applications, Inc. (SSAI), 10210 Greenbelt Road, Lanham, MD, 20706;

    Numerical Terradynamic Simulation Group (NTSG), College of Forestry and Conservation, The University of Montana, Missoula, MT 59812 Science Systems and Applications, Inc. (SSAI), 10210 Greenbelt Road, Lanham, MD, 20706;

    Earth and Environmental Sciences, Atmospheric and Environmental Dynamics Group, MS-J495, Los Alamos National Laboratory, Los Alamos, NM 87545;

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