Abstract

Abstract. SMOS (Soil Moisture and Ocean Salinity mission) brightness temperatures at a single incident angle are assimilated into the Community Land Model (CLM) across Australia to improve soil moisture simulations. Therefore, the data assimilation system DasPy is coupled to the local ensemble transform Kalman filter (LETKF) as well as to the Community Microwave Emission Model (CMEM). Brightness temperature climatologies are precomputed to enable the assimilation of brightness temperature anomalies, making use of 6 years of SMOS data (2010–2015). Mean correlation R with in situ measurements increases moderately from 0.61 to 0.68 (11 %) for upper soil layers if the root zone is included in the updates. A reduced improvement of 5 % is achieved if the assimilation is restricted to the upper soil layers. Root-zone simulations improve by 7 % when updating both the top layers and root zone, and by 4 % when only updating the top layers. Mean increments and increment standard deviations are compared for the experiments. The long-term assimilation impact is analysed by looking at a set of quantiles computed for soil moisture at each grid cell. Within hydrological monitoring systems, extreme dry or wet conditions are often defined via their relative occurrence, adding great importance to assimilation-induced quantile changes. Although still being limited now, longer L-band radiometer time series will become available and make model output improved by assimilating such data that are more usable for extreme event statistics.

Highlights

  • The potential to improve land surface simulations of soil moisture by assimilating information derived from satellite measurements is well known (Parada and Liang, 2004; De Lannoy et al, 2007; Jia et al, 2009; Chen et al, 2014; Mohanty et al, 2017)

  • The assimilation over 6 full years, from 2010 to 2015, of Soil Moisture and Ocean Salinity (SMOS) brightness temperature anomalies with the local ensemble transform Kalman filter (LETKF) improved soil moisture simulations when compared to in situ measurements on the order of up to 11 % for top soil moisture. Both the Community Land Model (CLM) model and the forward observation model were not calibrated, implying that the assimilation system could be applied to other areas

  • The top three layers were updated, which mostly correspond to the depth where SMOS is sensitive to changes in soil moisture and top-layer in situ measurements are available

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Summary

Introduction

The potential to improve land surface simulations of soil moisture by assimilating information derived from satellite measurements is well known (Parada and Liang, 2004; De Lannoy et al, 2007; Jia et al, 2009; Chen et al, 2014; Mohanty et al, 2017). The passive Microwave Imaging Radiometer with Aperture Synthesis (MIRAS) instrument aboard SMOS, sensitive to 1.4 GHz electromagnetic emissions, measures multi-angular top-of-atmosphere brightness temperatures at horizontal (H) and vertical (V) polarisation These brightness temperatures are ingested into a complex retrieval algorithm, resulting in soil moisture estimates (Kerr et al, 2012) readily usable for analysis, input for higher-level products or data assimilation. We assimilate SMOS brightness temperatures at H polarisation over Australia from January 2010 until December 2015 into the Community Land Model (version 4.5, Oleson et al, 2013) and evaluate the assimilation impact both in terms of correlation improvements towards in situ measurements and in terms of long-term induced model biases, i.e. changes in quantiles, for the state variable soil moisture.

The Community Land Model
Surface datasets
ERA-Interim atmospheric forcing
Assimilation system
Local ensemble transform Kalman filter
Ensemble generation
Observation operator
Observations and anomaly preparation
Data assimilation and results
Correlation with in situ observations
Soil moisture increments
Soil moisture quantiles
Findings
Discussion and conclusion
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