HDFR:一个水文数据和建模系统,可按需访问环境传感数据,用于决策

Daniel Luna, F. Hernández, Yao Liang, Xu Liang
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摘要

本文介绍了水文灾害预报与响应(HDFR),这是一个在线数据和建模集成软件系统,便于机器对机器访问和管理来自空间和地面产品的环境遥感数据。现有的数据来源包括气象站和水文站的现场测量;美国多普勒降水雷达的遥感产品,测量降水、土壤湿度和积雪的地球监测卫星;和美国国家气象局的数值天气预报模式输出。此外,HDFR系统还提供了一套水文建模工具;包括分布式水文土壤植被模型(DHSVM)的数据融合、风暴强度评估和水文模型预处理;它们与各种数据产品无缝结合。两个示例工作流演示了这个统一的框架如何能够帮助弥合在线和按需访问日益丰富的地球观测数据之间的差距,以及科学和工程应用的水文预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HDFR: A Hydrologic Data and Modeling System with On-Demand Access to Environmental Sensing Data for Decision Making
This paper introduces the Hydrologic Disaster Forecasting and Response (HDFR), an online data and modeling integration software system that facilitates the machine-to-machine access to and the management of environmental sensing data from space and ground products. Available data sources include in-situ measurements from weather and hydrographic stations; remote sensing products from Doppler precipitation radars in the United States, Earth-monitoring satellites that measure precipitation, soil moisture, and snow cover; and numerical weather prediction model outputs from the U.S. National Weather Service. Additionally, the HDFR system provides a suite of hydrologic modeling tools; including data fusion, storm severity assessment, and hydrologic model preprocessing for the Distributed Hydrology Soil Vegetation Model (DHSVM); that are seamlessly incorporated with the diverse suite of data products. Two example workflows demonstrate how this unified framework could help bridge the gap between the online and on-demand accessing of growing wealth of Earth-observing data and hydrologic prediction for scientific and engineering applications.
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