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A GIS framework for surface-layer soil moisture estimation combining satellite radar measurements and land surface modeling with soil physical property estimation

机译:结合卫星雷达测量和地表建模与土壤物理性质估算的地表土壤水分估算的GIS框架

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摘要

A GIS framework, the Army Remote Moisture System (ARMS), has been developed to link the Land Information System (LIS), a high performance land surface modeling and data assimilation system, with remotely sensed measurements of soil moisture to provide a high resolution estimation of soil moisture in the near surface. ARMS uses available soil (soil texture, porosity, K_(sat)), land cover (vegetation type, LAI, Fraction of Greenness), and atmospheric data (Albedo) in standardized vector and raster GIS data formats at multiple scales, in addition to climatological forcing data and precipitation. PEST (Parameter Estimation Tool) was integrated into the process to optimize soil porosity and saturated hydraulic conductivity (K_(sat)), using the remotely sensed measurements, in order to provide a more accurate estimate of the soil moisture. The modeling process is controlled by the user through a graphical interface developed as part of the ArcMap component of ESRI ArcGIS.
机译:已经开发了一个GIS框架,即陆军远程水分系统(ARMS),以将土地信息系统(LIS),一种高性能的地表建模和数据同化系统与遥感的土壤水分测量值进行链接,以提供高分辨率的估算地表附近的土壤水分。除标准矢量和栅格GIS数据格式外,ARMS还以多种尺度使用可用的土壤(土壤质地,孔隙度,K_(sat)),土地覆盖(植被类型,LAI,绿度分数)和大气数据(Albedo)。气候强迫资料和降水。 PEST(参数估计工具)已集成到该过程中,以使用遥感测量值来优化土壤孔隙率和饱和水力传导率(K_(sat)),以便对土壤水分进行更准确的估计。用户通过作为ESRI ArcGIS的ArcMap组件的一部分开发的图形界面来控制建模过程。

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