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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Rapid and robust monitoring of flood events using Sentinel-1 and Landsat data on the Google Earth Engine
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Rapid and robust monitoring of flood events using Sentinel-1 and Landsat data on the Google Earth Engine

机译:使用Sentinel-1和Google地球发动机上的Landsat数据的洪水事件快速和强大的监控

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Synthetic aperture radar (SAR) sensors represent an indispensable data source for flood disaster planners and responders, given their ability to image the Earth's surface nearly independently of weather conditions and time of day. The decision by the European Space Agency (ESA) Copernicus program to open data from its Sentinel-1 SAR satellites to the public marks the first time global, operational SAR data have been made freely available. Combined with the emergence of cloud computing platforms like the Google Earth Engine (GEE), this development presents a tremendous opportunity to the disaster response community, for whom rapid access to analysis-ready data is needed to inform effective flood disaster response interventions and management plans. Here, we present an algorithm that exploits all available Sentinel-1 SAR images in combination with historical Landsat and other auxiliary data sources hosted on the GEE to rapidly map surface inundation during flood events. Our algorithm relies on multi-temporal SAR statistics to identify unexpected floods in near real-time. Additionally, historical Landsat-based surface water class probabilities are used to distinguish unexpected floods from permanent or seasonally occurring surface water. We assessed our algorithm over three recent flood events using coincident very high- spatial resolution imagery and operational flood maps. Using very high resolution optical imagery, we estimated an area-normalized accuracy of 89.8 +/- 2.8% (95% c.i.) over Houston, Texas following Hurricane Harvey in late August 2017, representing an improvement of between 1.6% and 9.8% over flood maps derived from a simple backscatter threshold. Additionally, comparison of our results with SAR-derived Copernicus Emergency Management Service (EMS) maps following devastating floods in Thessaly, Greece and Eastern Madagascar in January and March 2018, respectively, yielded overall agreement rates of 98.5% in both cases. Importantly, our algorithm was able to ingest hundreds of SAR and optical images served on the GEE to produce flood maps over affected areas within minutes, circumventing the need for time-consuming data download and pre-processing steps. The flexibility of our algorithm will allow for the rapid processing of future open-access SAR data, including data from future Sentinel-1 missions.
机译:合成孔径雷达(SAR)传感器代表洪水灾害规划者和响应者的不可或缺的数据源,鉴于他们几乎独立于天气条件和一天中的时间来实现地球表面的能力。欧洲航天局(ESA)哥白尼方案的决定将从其Sentinel-1 SAR Satellites开放数据的第一次全球,运营SAR数据自由提供。结合谷歌地球发动机(GEE)这样的云计算平台的出现,这一发展对灾害响应群落提供了巨大的机会,为此,需要快速访问分析数据,以便为有效的洪水灾害响应干预和管理计划提供信息。在这里,我们介绍了一种算法,该算法与所有可用的Sentinel-1 SAR图像结合使用,与历史Landsat和其他在GEE上托管的其他辅助数据源组合,以在洪水事件期间快速地图粪便淹没。我们的算法依赖于多时间SAR统计数据来识别近实时的意外洪水。此外,历史覆盖的地面水分级概率用于区分意外洪水从永久或季节性地发生的地表水。我们使用重合非常高空间分辨率图像和运营洪水图评估了我们在最近的三个洪水事件中评估了我们的算法。使用非常高分辨率的光学图像,我们估计2017年8月下旬飓风哈维飓风哈维休斯顿的89.8 +/- 2.8%(95%CI)的区域标准化准确度,洪水超过了1.6%和9.8%的提高从简单的反向散射阈值派生的映射。此外,在2018年1月和3月在2018年1月和3月,我们在Thessaly洪水遭到破坏性洪水之后,我们的结果与SAR衍生的Copernicus紧急管理服务(EMS)地图的比较分别在两种情况下,两种情况下,总体协议率为98.5%。重要的是,我们的算法能够在GEE上为群体提供数百个SAR和光学图像,以在几分钟内产生受影响区域的洪水映射,规避需要耗时的数据下载和预处理步骤。我们的算法的灵活性将允许快速处理未来的开放式SAR数据,包括来自未来Sentinel-1任务的数据。

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