含水量
环境科学
表面粗糙度
遥感
空间变异性
表面光洁度
土壤科学
雷达
水分
轮廓仪
气象学
地质学
计算机科学
地理
岩土工程
材料科学
数学
统计
电信
复合材料
作者
Jesús Álvarez‐Mozos,Niko E. C. Verhoest,A. Larrañaga,Javier Casalí,María González-Audícana
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2009-01-13
卷期号:9 (1): 463-489
被引量:63
摘要
Radar-based surface soil moisture retrieval has been subject of intense research during the last decades. However, several difficulties hamper the operational estimation of soil moisture based on currently available spaceborne sensors. The main difficulty experienced so far results from the strong influence of other surface characteristics, mainly roughness, on the backscattering coefficient, which hinders the soil moisture inversion. This is especially true for single configuration observations where the solution to the surface backscattering problem is ill-posed. Over agricultural areas cultivated with winter cereal crops, roughness can be assumed to remain constant along the growing cycle allowing the use of simplified approaches that facilitate the estimation of the moisture content of soils. However, the field scale spatial variability and temporal variations of roughness can introduce errors in the estimation of soil moisture that are difficult to evaluate. The objective of this study is to assess the impact of roughness spatial variability and roughness temporal variations on the retrieval of soil moisture from radar observations. A series of laser profilometer measurements were performed over several fields in an experimental watershed from September 2004 to March 2005. The influence of the observed roughness variability and its temporal variations on the retrieval of soil moisture is studied using simulations performed with the Integral Equation Model, considering different sensor configurations. Results show that both field scale roughness spatial variability and its temporal variations are aspects that need to be taken into account, since they can introduce large errors on the retrieved soil moisture values.
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