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首页> 外文期刊>Journal of Geographic Information System >Flood Forecasting GIS Water-Flow Visualization Enhancement (WaVE): A Case Study
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Flood Forecasting GIS Water-Flow Visualization Enhancement (WaVE): A Case Study

机译:洪水预报GIS水流可视化增强(WaVE):一个案例研究

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Riverine flood event situation awareness and emergency management decision support systems require accurate and scalable geoanalytic data at the local level. This paper introduces the Water-flow Visualization Enhancement (WaVE), a new framework and toolset that integrates enhanced geospatial analytics visualization (common operating picture) and decision support modular tools. WaVE enables users to: 1) dynamically generate on-the-fly, highly granular and interactive geovisual real-time and predictive flood maps that can be scaled down to show discharge, inundation, water velocity, and ancillary geomorphology and hydrology data from the national level to regional and local level; 2) integrate data and model analysis results from multiple sources; 3) utilize machine learning correlation indexing to interpolate streamflow proxy estimates for non-functioning streamgages and extrapolate discharge estimates for ungaged streams; and 4) have time-scaled drill-down visualization of real-time and forecasted flood events. Four case studies were conducted to test and validate WaVE under diverse conditions at national, regional and local levels. Results from these case studies highlight some of WaVE’s inherent strengths, limitations, and the need for further development. WaVE has the potential for being utilized on a wider basis at the local level as data become available and models are validated for converting satellite images and data records from remote sensing technologies into accurate streamflow estimates and higher resolution digital elevation models.
机译:河流洪水事件态势感知和应急管理决策支持系统需要在本地一级提供准确且可扩展的地理分析数据。本文介绍了水流可视化增强功能(WaVE),这是一个新的框架和工具集,集成了增强的地理空间分析可视化(通用操作图)和决策支持模块化工具。 WaVE使用户能够:1)动态生成实时,高度粒度和交互式地理视觉的实时和预测性洪水地图,这些地图可以按比例缩小以显示美国国家/地区的流量,洪水,水速以及辅助地貌和水文数据到区域和地方级别; 2)整合来自多个来源的数据和模型分析结果; 3)利用机器学习相关性索引来插补非功能性流量的流量代理估计,并插补未使用流量的流量估计;和4)具有实时的和预测的洪水事件的按时标化的向下钻取可视化。进行了四个案例研究,以在国家,地区和地方各级的不同条件下测试和验证WaVE。这些案例研究的结果突显了WaVE的一些固有优势,局限性以及进一步开发的需求。随着数据的获取和模型的验证,WaVE有潜力在地方层面上得到更广泛的利用,该模型已经过验证,可以将遥感技术中的卫星图像和数据记录转换为准确的流量估算和高分辨率数字高程模型。

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