Estimating Hydrological Regimes from Observational Soil Moisture, Evapotranspiration, and Air Temperature Data

R. Koster, A.F. Feldman, T. R. Holmes, M. C. Anderson, W. Crow, C. Hain
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Abstract

Evapotranspiration has long been understood to vary with soil moisture in drier regions and to be relatively insensitive to soil moisture in wetter regions. A number of recent studies have quantified this behavior with various model and observational datasets. However, given the disparate approaches and datasets used, uncertainty persists in how the underlying relationships vary in space and time. Here we complement the existing studies by analyzing two datasets as yet untapped for this purpose: a satellite-based evapotranspiration (E) product retrieved using geostationary thermal imagery and a meteorological station-based dataset of daily 2m air temperature (T2M) diurnal amplitudes. Both datasets are analyzed synchronously with soil moisture from the Soil Moisture Active/Passive (SMAP) satellite. We thereby derive maps of evaporative regimes that vary in space and time as one might expect, that is, the water-limited regime grows eastward across the conterminous United States (CONUS) as spring moves into summer, only to shrink again going into winter. The relationship between the E and soil moisture data appears particularly tight, which is encouraging given that the E data (like the T2M data) were not constructed using any soil moisture information whatsoever. The general agreement between the two independent sets of results gives us confidence that the generated maps correctly represent, to first order, evaporative regime behavior in Nature. The T2M results have the added benefit of highlighting the significant connection between soil moisture and overlying air temperature, a connection relevant to T2M predictability.
根据土壤水分、蒸散量和气温观测数据估算水文过程
长期以来,人们一直认为蒸散作用在较干旱地区随土壤湿度变化而变化,而在较潮湿地区则对土壤湿度相对不敏感。最近的一些研究利用各种模型和观测数据集对这一行为进行了量化。然而,由于使用的方法和数据集各不相同,其基本关系在空间和时间上如何变化仍然存在不确定性。在此,我们通过分析两个尚未用于此目的的数据集来补充现有研究:一个是利用地球静止热图像检索的基于卫星的蒸散(E)产品,另一个是基于气象站的每日 2 米气温(T2M)昼夜振幅数据集。这两个数据集与来自土壤水分主动/被动(SMAP)卫星的土壤水分同步分析。因此,我们得出了蒸发机制的地图,正如人们所预期的那样,蒸发机制在空间和时间上都有变化,即随着春季进入夏季,限水机制在整个美国大陆(CONUS)向东扩展,但进入冬季后又再次缩小。E 数据与土壤水分数据之间的关系似乎特别紧密,这一点令人鼓舞,因为 E 数据(与 T2M 数据一样)并不是利用任何土壤水分信息构建的。两组独立结果之间的普遍一致性使我们相信,所生成的地图能正确反映自然界的蒸发机制行为。T2M 结果的另一个好处是突出了土壤水分与上覆气温之间的重要联系,这种联系与 T2M 的可预测性有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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