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An Algorithm Based on the Standard Deviation of Passive Microwave Brightness Temperatures for Monitoring Soil Surface Freeze/Thaw State on the Tibetan Plateau

机译:基于无源微波亮度温度标准偏差的青藏高原土壤表面冻融状态监测算法

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The land surface on the Tibetan Plateau (TP) experiences diurnal and seasonal freeze/thaw processes that play important roles in the regional water and energy exchanges, and passive microwave satellites provide opportunities to detect the soil state for this region. With the support of three soil moisture and temperature networks on the TP, a dual-index microwave algorithm with Advanced Microwave Scanning Radiometer-Earth Observing System data is developed for the detection of soil surface freeze/thaw state. One index is the standard deviation index (SDI) of brightness temperature (TB), which is defined as the standard deviation of horizontally polarized brightness temperatures at 6.9, 10.7, 18.7, 23.8, 36.5, and 89.0 GHz. It is the major index and is used to reflect the reduction of liquid water content after soils get frozen. The other index is the 36.5-GHz vertically polarized brightness temperature , which is linearly correlated with ground temperature. The threshold values of the two indices (SDI and ) are determined with one grid from the network located in a semiarid climate, and the algorithm is validated with other grids from the same network. Further validations are conducted based on the other two networks located in different climates (semihumid and arid, respectively). Results show that the classification accuracy using this algorithm is more than 90% for the semihumid and semiarid regions, and misclassifications mainly occur at the transition period between unfrozen and frozen seasons. Nevertheless, the algorithm has limited capability in identifying the soil surface freeze/thaw state in the arid region because the microwave signals can penetrate deep dry soils and thus embody the bulk information beyond the surface layer.
机译:青藏高原(TP)的陆地表面经历了每日和季节性的冻融过程,这些过程在区域的水和能量交换中起着重要的作用,而无源微波卫星为探测该地区的土壤状况提供了机会。在TP上的三个土壤水分和温度网络的支持下,开发了具有高级微波扫描辐射计-地球观测系统数据的双指标微波算法,用于检测土壤表面的冻结/融化状态。一种指标是亮度温度(TB)的标准偏差指数(SDI),它定义为6.9、10.7、18.7、23.8、36.5和89.0 GHz时水平极化亮度温度的标准偏差。它是主要指标,用于反映土壤冻结后液态水含量的减少。另一个指标是36.5 GHz垂直极化的亮度温度,该温度与地面温度线性相关。使用位于半干旱气候的网络中的一个网格确定两个指标(SDI和)的阈值,并使用来自同一网络的其他网格来验证算法。基于位于不同气候(分别为半潮湿和干旱)的其他两个网络进行进一步的验证。结果表明,使用该算法对半湿润和半干旱地区的分类准确率达到90%以上,分类错误主要发生在未冻结和冻结季节之间的过渡期。然而,该算法在干旱地区识别土壤表面冻结/融化状态的能力有限,因为微波信号可以穿透深层干燥的土壤,从而体现出表层以外的大量信息。

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