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An integrated methodology for soil moisture analysis using multispectral data in Mongolia

机译:蒙古利用多光谱数据进行土壤水分分析的综合方法

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Soil moisture (SM) content is one of the most important environmental variables in relation to land surface climatology, hydrology, and ecology. Long-term SM data-sets on a regional scale provide reasonable information about climate change and global warming specific regions. The aim of this research work is to develop an integrated methodology for SM of kastanozems soils using multispectral satellite data. The study area is Tuv (48°40′30″N and 106°15′55″E) province in the forest steppe zones in Mongolia. In addition to this, land surface temperature (LST) and normalized difference vegetation index (NDVI) from Landsat satellite images were integrated for the assessment. Furthermore, we used a digital elevation model (DEM) from ASTER satellite image with 30-m resolution. Aspect and slope maps were derived from this DEM. The soil moisture index (SMI) was obtained using spectral information from Landsat satellite data. We used regression analysis to develop the model. The model shows how SMI from satellite depends on LST, NDVI, DEM, Slope, and Aspect in the agricultural area. The results of the model were correlated with the ground SM data in Tuv province. The results indicate that there is a good agreement between output SM and SM of ground truth for agricultural area. Further research is focused on moisture mapping for different natural zones in Mongolia. The innovative part of this research is to estimate SM using drivers which are vegetation, land surface temperature, elevation, aspect, and slope in the forested steppe area. This integrative methodology can be applied for different regions with forest and desert steppe zones.
机译:土壤水分(SM)含量是与陆地表面气候,水文和生态相关的最重要的环境变量之一。区域范围内的长期SM数据集可提供有关气候变化和特定地区全球变暖的合理信息。这项研究工作的目的是使用多光谱卫星数据开发一种综合的方法,用于分析卡斯坦ozems土壤的SM。研究区域是蒙古森林草原地区的Tuv(北纬48°40′30″和东经106°15′55″)省。除此之外,还结合了来自Landsat卫星图像的地表温度(LST)和归一化植被指数(NDVI)进行评估。此外,我们使用了具有30 m分辨率的ASTER卫星图像的数字高程模型(DEM)。宽高比和坡度图是从此DEM导出的。使用来自Landsat卫星数据的光谱信息获得土壤湿度指数(SMI)。我们使用回归分析来开发模型。该模型显示了来自卫星的SMI如何依赖于农业地区的LST,NDVI,DEM,坡度和纵横比。该模型的结果与Tuv省的地面SM数据相关。结果表明,输出SM和农业地区地面实测SM之间具有良好的一致性。进一步的研究集中在蒙古不同自然区域的湿度制图。这项研究的创新部分是使用植被,土地表面温度,海拔,纵横比和森林草原地区的坡度等驱动因素来估算SM。这种综合方法可以应用于具有森林和沙漠草原地区的不同地区。

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