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Monitoring agricultural soil moisture extremes in Canada using passive microwave remote sensing

机译:使用被动微波遥感监测加拿大的农业土壤极端湿度

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Current methods to assess soil moisture extremes rely primarily on point-based in situ meteorological stations which typically provide precipitation and temperature rather than direct measurements of soil moisture. Microwave remote sensing offers the possibility of quantifying surface soil moisture conditions over large spatial extents. Capturing soil moisture anomalies normally requires a long temporal record of data, which most operating satellites do not have. This research examines the use of surface soil moisture from the AMSR-E passive microwave satellite to derive surface soil moisture anomalies by exploiting spatial resolution to compensate for the shorter temporal record of the satellite sensor. Four methods were used to spatially aggregate information to develop a surface soil moisture anomaly (SMA). Two of these methods used soil survey and climatological zones to define regions of homogeneity, based on the Soil Landscapes of Canada (SLC) and the EcoDistrict nested hierarchy. The second two methods (ObShp3 and ObShp5) used zones defined by a data driven segmentation of the satellite soil moisture data. The level of sensitivity of the calculated SMA decreased as the number of pixels used in the spatial aggregation increased, with the average error reducing to less than 5% when more than 15. pixels are used. All methods of spatial aggregation showed somewhat weak but consistent relationship to in situ soil moisture anomalies and meteorological drought indices. The size of the regions used for aggregation was more important than the method used to create the regions. Based on the error and the relationship to the in situ and ancillary data sets, the EcoDistrict or ObShp3 scale appears to provide the lowest error in calculating the SMA baseline. This research demonstrates that the use of spatial aggregation can provide useful information on soil moisture anomalies where satellite records of data are temporally short.
机译:当前评估极端土壤湿度的方法主要依靠基于点的原地气象站,这些站点通常提供降水和温度,而不是直接测量土壤湿度。微波遥感提供了在较大空间范围内量化地表土壤水分状况的可能性。捕获土壤湿度异常通常需要长时间的数据记录,而大多数正在运行的卫星都没有。这项研究研究了利用AMSR-E无源微波卫星的地表土壤水分,通过利用空间分辨率来补偿卫星传感器的较短时间记录,来推导地表土壤水分异常。四种方法用于空间汇总信息,以开发表层土壤湿度异常(SMA)。其中两种方法是根据加拿大土壤景观(SLC)和EcoDistrict嵌套层次结构,使用土壤调查和气候区来定义同质区域。后两种方法(ObShp3和ObShp5)使用由卫星土壤湿度数据的数据驱动分割确定的区域。随着空间聚合中使用的像素数的增加,计算得出的SMA的灵敏度水平降低,而使用多于15个像素时,平均误差降低到小于5%。所有空间聚集方法均与土壤水分异常和气象干旱指数存在一定程度的弱点但始终如一的关系。用于聚集的区域的大小比用于创建区域的方法更重要。基于误差以及与原位和辅助数据集的关系,EcoDistrict或ObShp3量表似乎在计算SMA基线时提供了最低的误差。这项研究表明,空间聚集的使用可以提供有关土壤湿度异常的有用信息,而卫星数据记录在时间上很短。

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