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Integration of special sensor microwave/imager (SSM/I) and in situ data for snow studies from space.

机译:集成了特殊传感器微波/成像器(SSM / I)和原位数据,用于太空中的降雪研究。

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The Special Sensor Microwave/Imager (SSM/I) radiometer is a useful tool for monitoring snow conditions and estimating snow water equivalent and wetness because it is sensitive to the changes in the physical and dielectric properties of snow. Development and improvement of SSM/I snow-related algorithms is hampered generally by the lack of quantitative snow wetness data and the restriction of a fixed uniform footprint. Currently, there is a need for snow classification algorithms for terrain where forests overlie snow cover.; A field experiment was conducted to examine the relationship between snow wetness and meteorological variables. Based on the relationship, snow wetness was estimated concurrently with SSM/I local crossing time at selected footprints to develop an SSM/I snow wetness algorithm. For the improvement of existing algorithms, SSM/I observations were linked with concurrent ground-based snow data over a study area containing both sparse- and medium-vegetated regions. Unsupervised cluster analysis was applied to separate SSM/I brightness temperature (Tb) data into groups. Six typical SSM/I Tb signatures, based on cluster means of desired snow classes, were identified. An artificial neural network (ANN) classifier was designed to learn the typical Tb patterns for land-surface snow cover classification. An ANN approximator was trained with the relations between inputs of SSM/I Tb observations and outputs of ground-based snow water equivalent and wetness.; Results indicated that snow wetness estimated from concurrent air temperature could provide the ground-based data needed for the development of SSM/I algorithms. The use of cluster means might be sufficient in ANN supervised learning for snow classification, and the ANN has the potential to be trained for retrieving different snow parameters simultaneously from SSM/I data.; It is concluded that the ANN approach may overcome the drawbacks and limitations of the existing SSM/I algorithms for land-surface snow classification and parameter estimation over varied terrain. This study demonstrated a nonlinear retrieval method towards making the inferences of snow conditions and parameters from SSM/I data over varied terrain operational.
机译:特殊传感器微波/成像仪(SSM / I)辐射计是监测雪况并估算雪水当量和湿度的有用工具,因为它对雪的物理和介电特性的变化敏感。 SSM / I与雪有关的算法的开发和改进通常由于缺乏定量的雪湿度数据和固定的固定足迹的限制而受到阻碍。当前,需要针对森林覆盖在雪盖上的地形的雪分类算法。进行了野外试验,以检查雪湿度和气象变量之间的关系。基于这种关系,在选定的足迹上与SSM / I局部穿越时间同时估计雪湿度,以开发SSM / I雪湿度算法。为了改进现有算法,将SSM / I观测值与同时包含稀疏和中等植被区域的研究区域的地面雪数据相结合。应用无监督聚类分析将SSM / I亮度温度(Tb)数据分成组。基于所需降雪类别的聚类方法,确定了六个典型的SSM / I Tb签名。设计了人工神经网络(ANN)分类器,以学习用于陆面积雪分类的典型Tb模式。 ANN逼近器接受了SSM / ITb观测值的输入与地面雪水当量与湿度之间的关系训练。结果表明,根据同时气温估算的雪湿度可以提供开发SSM / I算法所需的地面数据。在ANN监督学习中使用聚类方法可能足以进行雪分类,并且ANN有可能经过训练可以从SSM / I数据中同时检索不同的雪参数。结论是,人工神经网络方法可以克服现有SSM / I算法在各种地形条件下陆​​面雪分类和参数估计的弊端和局限性。这项研究展示了一种非线性检索方法,可以根据变化的地形上的SSM / I数据推断雪况和参数。

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