Abstract

The accurate estimation of moisture content in deep soil layers is usually difficult due to the associated costs, strong spatiotemporal variability, and nonlinear relationship between surface and deep moisture content, especially in alpine areas (where complications include extreme heterogeneity and freeze-thaw processes). In an effort to identify the optimal method for this purpose, this study used measurements of soil moisture content at three depths (4, 10, and 20 cm) in the upper parts of the Babao River basin in the Qilian Mountains, Northwest China. These measurements were collected in the HiWATER (Heihe watershed allied telemetry experimental research) program to test four vertical extrapolation methods: exponential filtering (ExpF), linear regression (LR), support vector regression (SVR), and the application of a type of artificial neural network, the radial basis function (RBF). SVR provided the best predictions, in terms of the lowest root mean squared error and mean absolute error values, for the 10 and 20 cm layers from surface layer (4 cm) measurements. However, the data also confirmed that freeze-thawing is an important process in the study area, which makes the infiltration process more complex and highly variable over time. Thus, we compared the vertical extrapolation methods’ performance in each of the four periods with differing infiltration characteristics and found significant among-period differences in each case. However, SVR consistently provided the best estimates, and all methods provided better estimates for the 10 cm layer than for the 20 cm layer.

Highlights

  • Soil moisture plays a crucial climatic role, in water and energy exchanges between land surfaces and the atmosphere [1,2,3], in a myriad of environmental and ecological processes [4]

  • The optimal T value was found by minimizing root mean squared error (RMSE) and mean absolute error (MAE) at each depth

  • Performance depended on the layer, and performance was poorer for the 20 and deteriorated with increases in T, and, for data collected from all stations, thecm layer than the cm layer when

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Summary

Introduction

Soil moisture plays a crucial climatic role, in water and energy exchanges between land surfaces and the atmosphere [1,2,3], in a myriad of environmental and ecological processes [4]. Inter alia, it strongly affects the distribution of precipitation by modulating processes including runoff, infiltration and surface storage, plant growth, and microbial population dynamics [5].

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