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An improved algorithm for disaggregating microwave-derived soil moisture based on red, near-infrared and thermal-infrared data

机译:一种基于红色,近红外和热红外数据的微波源土壤水分分解算法

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Accurate high-resolution soil moisture data are needed for a range of agricultural and hydrologic activities. To improve the spatial resolution of ~40. km resolution passive microwave-derived soil moisture, a methodology based on 1. km resolution MODIS (MODerate resolution Imaging Spectroradiometer) red, near-infrared and thermal-infrared data has been implemented at 4. km resolution. The three components of that method are (i) fractional vegetation cover, (ii) soil evaporative efficiency (defined as the ratio of actual to potential evaporation) and (iii) a downscaling relationship. In this paper, 36 different disaggregation algorithms are built from 3 fractional vegetation cover formulations, 3 soil evaporative efficiency models, and 4 downscaling relationships. All algorithms differ with regard to the representation of the nonlinear relationship between microwave-derived soil moisture and optical-derived soil evaporative efficiency. Airborne L-band data collected over an Australian agricultural area are used to both generate ~40. km resolution microwave pixels and verify disaggregation results at 4. km resolution. Among the 36 disaggregation algorithms, one is identified as being more robust (insensitive to soil, vegetation and atmospheric variables) than the others with a mean slope between MODIS-disaggregated and L-band derived soil moisture of 0.94. The robustness of that algorithm is notably assessed by comparing the disaggregation results obtained using composited (averaged) Terra and Aqua MODIS data, and using data from Terra and Aqua separately. The error on disaggregated soil moisture is systematically reduced by compositing daily Terra and Aqua data with an error of 0.012. vol./vol.
机译:一系列农业和水文活动需要准确的高分辨率土壤湿度数据。提高〜40的空间分辨率。 km分辨率的被动微波衍生的土壤水分,基于1. km分辨率的MODIS(中等分辨率成像光谱仪)红色,近红外和热红外数据的方法已在4. km分辨率下实现。该方法的三个组成部分是:(i)植被覆盖率低;(ii)土壤蒸发效率(定义为实际蒸发量与潜在蒸发量之比)和(iii)缩小比例关系。本文从3种植被覆盖率公式,3种土壤蒸发效率模型和4种比例关系建立了36种不同的分解算法。所有算法在表示微波衍生的土壤水分与光学衍生的土壤蒸发效率之间的非线性关系方面都存在差异。在澳大利亚农业地区收集的机载L波段数据被用来生成约40个数据。 km分辨率的微波像素,并以4 km的分辨率验证分解结果。在这36种分解算法中,一种被认为比其他算法更健壮(对土壤,植被和大气变量不敏感),MODIS分解和L波段衍生土壤水分之间的平均斜率为0.94。通过比较使用合成(平均)Terra和Aqua MODIS数据获得的分解结果,以及分别使用Terra和Aqua的数据,可以评估该算法的鲁棒性。通过组合每日Terra和Aqua数据可以系统地减少土壤水分分解的误差,误差为0.012。卷/卷

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