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首页> 外文期刊>Bulletin of the American Meteorological Society >A High-Resolution Flood Inundation Archive (2016-the Present) from Sentinel-1 SAR Imagery over CONUS
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A High-Resolution Flood Inundation Archive (2016-the Present) from Sentinel-1 SAR Imagery over CONUS

机译:来自Conus的Sentinel-1 SAR Imagery的高分辨率洪水洪水归档(2016-现在)

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摘要

Most existing inundation inventories are based on surveys, news, or passive remote sensing imagery. Affected by spatiotemporal resolution or weather conditions, these inventories are limited in spatial details or coverage. Satellite synthetic aperture radar (SAR) data have recently enabled flood mapping at unprecedented spatiotemporal resolution. However, the bottleneck in producing SAR-based flood maps is the requirement of expert manual processing to maintain acceptable accuracy by most SAR-driven mapping techniques. To fill the vacancy, we generate a high-resolution (10 m) flood inundation dataset over the contiguous United States (CONUS) from nearly the entire Sentinel-1 SAR archive (from January 2016 to the present), using a recently developed automated Radar Produced Inundation Diary (RAPID) system. RAPID uses U.S. Geological Survey (USGS) water watch system and accumulated precipitation to identify SAR images that potentially overlap a flood event. The dataset include inundation events with the temporal scale from several days to months. Concluded from all 559 overlapping images in the period from 2016 to the first half of 2019, the comparison of the proposed dataset against the USGS Dynamic Surface Water Extent (DSWE) product yields an overall, user, producer agreements, and critical success index of 99.06%, 87.63%, 91.76%, and 81.23%, respectively, demonstrating the high accuracy of the proposed dataset and the robustness of the automated system. We anticipate this archive to facilitate many applications, including large-scale flood loss and risk assessment, and inundation model calibration and validation.
机译:大多数现有的洪水清单都基于调查、新闻或被动遥感图像。受时空分辨率或天气条件的影响,这些清单在空间细节或覆盖范围上受到限制。卫星合成孔径雷达(SAR)数据最近以前所未有的时空分辨率绘制了洪水图。然而,生成基于SAR的洪水图的瓶颈是大多数SAR驱动的制图技术需要专家手动处理以保持可接受的精度。为了填补这一空缺,我们使用最近开发的自动雷达生成的淹没日志(RAPID)系统,从几乎整个Sentinel-1 SAR档案(从2016年1月至今)生成了一个高分辨率(10米)的美国周边(CONUS)洪水淹没数据集。RAPID使用美国地质调查局(USGS)的水资源观测系统和累积降水量来识别可能与洪水事件重叠的SAR图像。数据集包括时间范围从几天到几个月的洪水事件。从2016年至2019年上半年的所有559张重叠图像中得出结论,将拟议数据集与美国地质勘探局动态地表水范围(DSWE)产品进行比较,得出总体、用户、生产商协议和关键成功指数分别为99.06%、87.63%、91.76%和81.23%,展示了所提出的数据集的高精度和自动化系统的健壮性。我们预计该档案将促进许多应用,包括大规模洪水损失和风险评估,以及洪水模型校准和验证。

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