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Estimation of Surface Soil Moisture in Irrigated Lands by Assimilation of Landsat Vegetation Indices, Surface Energy Balance Products, and Relevance Vector Machines

机译:利用Landsat植被指数,地表能量平衡积和相关矢量机对灌溉土地表层土壤水分进行估算

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Spatial surface soil moisture can be an important indicator of crop conditions on farmland, but its continuous estimation remains challenging due to coarse spatial and temporal resolution of existing remotely-sensed products. Furthermore, while preceding research on soil moisture using remote sensing (surface energy balance, weather parameters, and vegetation indices) has demonstrated a relationship between these factors and soil moisture, practical continuous spatial quantification of the latter is still unavailable for use in water and agricultural management. In this study, a methodology is presented to estimate volumetric surface soil moisture by statistical selection from potential predictors that include vegetation indices and energy balance products derived from satellite (Landsat) imagery and weather data as identified in scientific literature. This methodology employs a statistical learning machine called a Relevance Vector Machine (RVM) to identify and relate the potential predictors to soil moisture by means of stratified cross-validation and forward variable selection. Surface soil moisture measurements from irrigated agricultural fields in Central Utah in the 2012 irrigation season were used, along with weather data, Landsat vegetation indices, and energy balance products. The methodology, data collection, processing, and estimation accuracy are presented and discussed.
机译:土壤表层空间水分可能是农田上作物生长状况的重要指标,但由于现有遥感产品的时空分辨率较粗糙,其连续估算仍具有挑战性。此外,尽管先前使用遥感对土壤水分进行的研究(表面能平衡,天气参数和植被指数)已经证明了这些因素与土壤水分之间的关​​系,但仍然无法对土壤水分进行实际的连续空间量化以用于水和农业管理。在这项研究中,提出了一种通过从潜在的预测因素中进行统计选择来估算地表土壤含水量的方法,这些潜在预测因素包括植被指数和能源平衡产品,这些产品来自卫星(Landsat)图像和科学文献中确定的天气数据。这种方法采用称为关联向量机(RVM)的统计学习机,通过分层交叉验证和前向变量选择来识别潜在的预测因子并将其与土壤水分相关联。使用了2012年灌溉季节犹他州中部灌溉农田的地表土壤水分测量,以及天气数据,Landsat植被指数和能量平衡产品。介绍并讨论了方法,数据收集,处理和估计准确性。

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