Abstract

Abstract. This study uses the synergy of multi-resolution soil moisture (SM) satellite estimates from the Soil Moisture Ocean Salinity (SMOS) mission, a dense network of ground-based SM measurements, and a soil–vegetation–atmosphere transfer (SVAT) model, SURFEX (externalized surface), module ISBA (interactions between soil, biosphere and atmosphere), to examine the benefits of the SMOS level 4 (SMOS-L4) version 3.0, or “all weather” high-resolution soil moisture disaggregated product (SMOS-L43.0; ∼1 km). The added value compared to SMOS level 3 (SMOS-L3; ∼25 km) and SMOS level 2 (SMOS-L2; ∼15 km) is investigated. In situ SM observations over the Valencia anchor station (VAS; SMOS calibration and validation – Cal/Val – site in Europe) are used for comparison. The SURFEX (ISBA) model is used to simulate point-scale surface SM (SSM) and, in combination with high-quality atmospheric information data, namely from the European Centre for Medium-Range Weather Forecasts (ECMWF) and the Système d'analyse fournissant des renseignements atmosphériques à la neige (SAFRAN) meteorological analysis system, to obtain a representative SSM mapping over the VAS. The sensitivity to realistic initialization with SMOS-L43.0 is assessed to simulate the spatial and temporal distribution of SSM. Results demonstrate the following: (a) All SMOS products correctly capture the temporal patterns, but the spatial patterns are not accurately reproduced by the coarser resolutions, probably in relation to the contrast with point-scale in situ measurements. (b) The potential of the SMOS-L43.0 product is pointed out to adequately characterize SM spatio-temporal variability, reflecting patterns consistent with intensive point-scale SSM samples on a daily timescale. The restricted temporal availability of this product dictated by the revisit period of the SMOS satellite compromises the averaged SSM representation for longer periods than a day. (c) A seasonal analysis points out improved consistency during December–January–February and September–October–November, in contrast to significantly worse correlations in March–April–May (in relation to the growing vegetation) and June–July–August (in relation to low SSM values < 0.1 m3 m−3 and low spatial variability). (d) The combined use of the SURFEX (ISBA) SVAT model with the SAFRAN system, initialized with SMOS-L43.0 1 km disaggregated data, is proven to be a suitable tool for producing regional SM maps with high accuracy, which could be used as initial conditions for model simulations, flood forecasting, crop monitoring and crop development strategies, among others.

Highlights

  • The reliability of climate and hydrological models is constrained by associated uncertainties, such as input parameters

  • We examine a new version of the Soil Moisture Ocean Salinity (SMOS)-L4 product, the SMOS level 4 3.0 “all weather” disaggregated ∼ 1 km soil moisture (SM) (SMOS-L43.0), which was developed and has been recently made available by SMOS-BEC (Barcelona Expert Center)

  • The surface SM (SSM) variability associated with the extreme precipitation events in this period is not well represented in the SMOS-L43.0 seasonal mean

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Summary

Introduction

The reliability of climate and hydrological models is constrained by associated uncertainties, such as input parameters. Soil moisture is a variable of pivotal importance controlling the exchanges of water and energy at the surface–atmosphere interface (Entekhabi et al, 1996). It is a highly relevant variable for climate, hydrology, meteorology and related disciplines Soil moisture is greatly variable spatially, temporally and across scales. S. Khodayar et al.: An improved perspective in the spatial representation of soil moisture considered responsible for this (Western et al, 2002; Bosch et al, 2007; Rosenbum et al, 2012)

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