Depth extrapolation of field-scale soil moisture time series derived with cosmic-ray neutron sensing (CRNS) using the soil moisture analytical relationship (SMAR) model

IF 5.8 2区 农林科学 Q1 SOIL SCIENCE Soil Pub Date : 2024-09-20 DOI:10.5194/soil-10-655-2024
Daniel Rasche, Theresa Blume, Andreas Güntner
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Abstract

Abstract. Ground-based soil moisture measurements at the field scale are highly beneficial for different hydrological applications, including the validation of space-borne soil moisture products, landscape water budgeting, or multi-criteria calibration of rainfall–runoff models from field to catchment scale. Cosmic-ray neutron sensing (CRNS) allows for the non-invasive monitoring of field-scale soil moisture across several hectares around the instrument but only for the first few tens of centimeters of the soil. Many of these applications require information on soil water dynamics in deeper soil layers. Simple depth-extrapolation approaches often used in remote sensing may be used to estimate soil moisture in deeper layers based on the near-surface soil moisture information. However, most approaches require a site-specific calibration using depth profiles of in situ soil moisture data, which are often not available. The soil moisture analytical relationship (SMAR) is usually also calibrated to sensor data, but due to the physical meaning of each model parameter, it could be applied without calibration if all its parameters were known. However, its water loss parameter in particular is difficult to estimate. In this paper, we introduce and test a simple modification of the SMAR model to estimate the water loss in the second layer based on soil physical parameters and the surface soil moisture time series. We apply the model with and without calibration at a forest site with sandy soils. Comparing the model results with in situ reference measurements down to depths of 450 cm shows that the SMAR models both with and without modification as well as the calibrated exponential filter approach do not capture the observed soil moisture dynamics well. While, on average, the latter performs best over different tested scenarios, the performance of the SMAR models nevertheless meets a previously used benchmark RMSE of ≤ 0.06 cm3 cm−3 in both the calibrated original and uncalibrated modified version. Different transfer functions to derive surface soil moisture from CRNS do not translate into markedly different results of the depth-extrapolated soil moisture time series simulated by SMAR. Despite the fact that the soil moisture dynamics are not well represented at our study site using the depth-extrapolation approaches, our modified SMAR model may provide valuable first estimates of soil moisture in a deeper soil layer derived from surface measurements based on stationary and roving CRNS as well as remote sensing products where in situ data for calibration are not available.
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利用土壤水分分析关系(SMAR)模型对宇宙射线中子传感(CRNS)得出的实地尺度土壤水分时间序列进行深度外推
摘要。实地尺度的地基土壤水分测量对不同的水文应用非常有益,包括验证空间土壤水分产品、景观水预算或从实地到流域尺度的降雨-径流模型的多标准校准。宇宙射线中子传感(CRNS)可对仪器周围数公顷的田野尺度土壤湿度进行非侵入式监测,但只能监测土壤的前几十厘米。许多此类应用都需要更深土层的土壤水动态信息。遥感中常用的简单深度外推法可用于根据近地表土壤水分信息估算更深土层的土壤水分。不过,大多数方法都需要使用原地土壤水分数据的深度剖面图进行特定地点校准,而这些数据往往无法获得。土壤水分分析关系(SMAR)通常也根据传感器数据进行校准,但由于每个模型参数的物理意义,如果已知其所有参数,则无需校准即可应用。然而,其失水参数尤其难以估计。在本文中,我们介绍并测试了对 SMAR 模型的简单修改,以根据土壤物理参数和地表土壤水分时间序列估算第二层的水分损失。我们在一个沙质土壤的林地应用了该模型并进行了校准。将模型结果与深度达 450 厘米的原位参考测量结果进行比较后发现,经过和未经过修正的 SMAR 模型以及经过校准的指数滤波方法都不能很好地捕捉观测到的土壤水分动态。虽然平均而言,后者在不同的测试方案中表现最佳,但无论是校准过的原始模型还是未校准的修正版模型,SMAR 模型的性能都达到了先前使用的 RMSE ≤ 0.06 cm3 cm-3 的基准。从 CRNS 导出地表土壤水分的转移函数不同,SMAR 模拟的深度外推土壤水分时间序列结果并无明显差异。尽管使用深度外推法不能很好地反映我们研究地点的土壤水分动态,但我们改进的 SMAR 模型可以在没有原位数据进行校准的情况下,通过基于固定和巡回 CRNS 的地表测量以及遥感产品,对较深土壤层的土壤水分进行有价值的初步估算。
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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来源期刊
Soil
Soil Agricultural and Biological Sciences-Soil Science
CiteScore
10.80
自引率
2.90%
发文量
44
审稿时长
30 weeks
期刊介绍: SOIL is an international scientific journal dedicated to the publication and discussion of high-quality research in the field of soil system sciences. SOIL is at the interface between the atmosphere, lithosphere, hydrosphere, and biosphere. SOIL publishes scientific research that contributes to understanding the soil system and its interaction with humans and the entire Earth system. The scope of the journal includes all topics that fall within the study of soil science as a discipline, with an emphasis on studies that integrate soil science with other sciences (hydrology, agronomy, socio-economics, health sciences, atmospheric sciences, etc.).
期刊最新文献
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