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Article

Evaluation of a Microwave Emissivity Module for Snow Covered Area with CMEM in the ECMWF Integrated Forecasting System

by
Yoichi Hirahara
1,2,*,
Patricia de Rosnay
1 and
Gabriele Arduini
1
1
European Centre for Medium-Range Weather Forecasts (ECMWF), Shinfield Park, Reading RG2 9AX, UK
2
Japan Meteorological Agency (JMA), 1-3-4 Otemachi, Chiyoda-ku, Tokyo 100-8122, Japan
*
Author to whom correspondence should be addressed.
Remote Sens. 2020, 12(18), 2946; https://doi.org/10.3390/rs12182946
Submission received: 5 July 2020 / Revised: 3 September 2020 / Accepted: 8 September 2020 / Published: 11 September 2020
(This article belongs to the Special Issue Remote Sensing of Land Surface and Earth System Modelling)

Abstract

:
The Community Microwave Emission Modelling platform (CMEM) has been developed by the European Centre for Medium-Range Weather Forecasts (ECMWF) as the forward operator radiative transfer model for low frequency passive microwave brightness temperatures (TB). It is used at ECMWF for L-band TB monitoring over snow free areas. In this paper, upgrades to CMEM are presented in order to explore forward modelling in snow-covered areas for coupled land-atmosphere numerical weather prediction systems. The upgrades enable to use CMEM on an extended range of frequencies and the Helsinki University of Technology multi-layer snow emission model is implemented. Offline CMEM experiments are evaluated against AMSR2 (Advanced Microwave Scanning Radiometer 2) observations showing that simulated TB is improved when using a multi-layer snow scheme, compared to a single-layer scheme. The improvements mainly result from a better representation of snow characteristics in the multi-layer snowpack model. CMEM is also evaluated in the Integrated Forecasting System and coupled to RTTOV (Radiative Transfer for TOVS). The numerical results show improved simulated TB at low frequency V polarization over snow-covered area compared to a configuration using emissivity atlas. Degradations at frequencies higher than 20 GHz indicate that further improvements are required in the emissivity and snowpack properties modelling.

1. Introduction

The surface emissivity is critical for the assimilation of surface-sensitive satellite microwave data over land. Especially, in snow-covered regions, emissivity varies significantly with snow layer’s properties [1]. At ECMWF (European Centre for Medium-Range Weather Forecasts), the microwave humidity and temperature-sounding channels are assimilated over land [2,3,4,5]. However, the assimilated channels are limited to those with small sensitivity to land surface, due to uncertainties in the emissivity and skin temperature. For the assimilated channels, retrieved emissivity [6] using observed brightness temperature at surface-sensitive channel is applied, backed-up by an emissivity atlas. In addition to retrieved emissivity and emissivity atlas, using a physical land emissivity model is an option to investigate for numerical weather prediction applications and coupled assimilation developments. Prigent et al. [7] evaluated the microwave land surface emissivity modeling of the Community Radiative Transfer Model (CRTM), providing quantitative statistic information for further model improvements and emphasized the needs for better physical modeling in arid regions and over snow-covered surfaces.
CMEM (Community Microwave Emission Modelling platform) is the ECMWF radiative transfer model developed for low frequency passive microwave brightness temperature observation monitoring and data assimilation. It is currently used at ECMWF as the Soil Moisture and Ocean Salinity (SMOS) forward operator to simulate L-band brightness temperatures [8,9]. It accounts for state-of-the-art microwave emission parameterizations for low frequency passive microwave emission of soil and vegetation. It also includes the HUT (Helsinki University of Technology) single layer snow emission model [10]. However, as SMOS is used for soil moisture purpose at ECMWF, CMEM has been used on snow free areas only. CMEM uses input information from the ECMWF H-TESSEL (Hydrology-Tiled ECMWF Scheme for Surface Exchanges over Land) land surface model component of the ECMWF Integrated Forecasting System (IFS) [11,12]. H-TESSEL accounts for snow processes represented with a single-layer snow scheme currently used in operational weather forecasts at ECMWF [13]. A multi-layer snow model was recently developed in H-TESSEL [14]. Beside improving snow and low atmospheric level processes, it opens the possibility to explore multi-layer radiative transfer modelling and long-term perspectives of satellite radiances usage in coupled land-atmosphere assimilation system.
Based on the above, this paper investigates the usage of CMEM to estimate land surface emissivity over snow-covered areas and it explores combined snowpack and radiative transfer multi-layer approach. The performance of CMEM over snow-covered areas is evaluated at frequencies up to 18.7 GHz, using offline experiments for different CMEM configurations. In this case, CMEM is applied to generate brightness temperature from a range of model fields, including soil, vegetation and snow properties. Then, in order to explore the performances of CMEM for a larger range of microwave frequencies in an operational-like environment, coupled experiments are conducted in the full IFS system, with CMEM interfaced to the observation operator Radiative Transfer for TOVS (RTTOV [15,16]). In this configuration, RTTOV replaces the atmospheric module of CMEM and CMEM provides surface emissivity and effective temperature as input to RTTOV. The results are compared to simulated brightness temperatures using emissivity atlas TELSEM 2 [17]. For these evaluations, we use observation data from the Advanced Microwave Scanning Radiometer 2 (AMSR2), which covers the 6.9 GHz to 89 GHz frequency range.
Section 2 presents the data and methods used in this paper. It presents CMEM and it describes its new developments and parameterisations. It also describes the configuration of the CMEM and experimental setup. Section 3 presents results of both the offline low frequencies and coupled all frequencies experiments. It includes discussions on the results. Section 4 concludes.

2. Data And Methods

2.1. Gcom-W AMSR2 Brightness Temperature Observations

The Japan Aerospace Exploration Agency (JAXA) is conducting the Global Change Observation Mission (GCOM) for continued long-term global meteorological and environmental monitoring [18]. The GCOM-W satellite is used for observations of the water cycle. It was launched on 18 May 2012. The Advanced Microwave Scanning Radiometer 2 (AMSR2) onboard the GCOM-W satellite is a remote sensing instrument for observations of microwave radiances from the Earth [19]. The AMSR2’s antenna unit, which picks up microwave radiation from the Earth, rotates once every 1.5 s, creating a conical scan pattern covering a width of about 1450 km on the Earth’s surface. This scanning method can make one day and one night observation of more than 99% of the Earth’s surface in two days. AMSR2 captures both horizontally and vertically polarized near-surface radiation in seven frequency bands, ranging from the 6.925 GHz band to the 89.0 GHz band (Table 1). The incidence angle is 55 at the Earth’s surface. In this paper, AMSR2 observations without bias correction are used to evaluate, over snow covered surfaces, the ECMWF brightness temperatures simulated using different parameterizations of radiative transfer models. AMSR2 observations are averaged (or superobbed) to about 80 km × 80 km boxes in order to match the effective resolution of cloudy and precipitating systems in the ECMWF Integrated Forecasting System (IFS) [20]. Hereafter, the notations defined in Table 1 are used to specify AMSR2 channels.

2.2. Observation Operator Rttov

In the IFS, the microwave radiance data from AMSR2 have been assimilated in all-sky conditions over ocean surfaces [21]. For the all-sky assimilation of microwave radiances inside the IFS, the observation operator Radiative Transfer for TOVS scattering, RTTOV-SCATT, [22] is used. RTTOV-SCATT is a component of the RTTOV package [15,16], and it is an observation operator for microwave radiative transfer in cloudy, precipitating and clear skies. RTTOV simulates the top of atmosphere radiances in each of the channels of the sensor from atmospheric profile and surface variables. The surface emissivity can be either set as a prescribed input, or RTTOV can calculate it. For instance, in the IFS, the assimilation of SSMIS humidity-sounding channels in all-sky conditions over land relies on emissivity retrieved from satellite measurements at surface sensitive channels [4]. For the microwave humidity sounding channels (e.g., MHS, SSMIS), retrieved emissivity in a 90 GHz channel is applied to the 183 GHz channels [3,4]. In addition to this, for the microwave temperature sounding channels (e.g., AMSU-A, ATMS), retrieved emissivity in a 50.3 GHz channel is applied to the 50–60 GHz channels in clear-sky assimilation [2,5]. If the emissivity retrieval fails or if it is too far from the climatology estimate, the emissivity retrieval is replaced by an atlas value. The Tool to Estimate Land Surface Emissivity from Microwave to Submillimeter Waves (TELSEM 2 ) [17] is an emissivity data atlas for microwave sensors in RTTOV. It relies upon satellite-derived emissivities and is anchored to the SSM/I Tool to Estimate Land Surface Emissivities at Microwave Frequencies (TELSEM) [23] monthly climatology dataset. It includes emissivities information for snow and sea-ice. The frequency range is 10–700 GHz, therefore the emissivity at 10 GHz is used for frequencies less than 10 GHz. In this paper we propose, in addition to the above approaches, to interface CMEM and RTTOV in the IFS. It allows using surface emissivity derived from land surface radiation model as CMEM as input of RTTOV, and conversely accounting for RTTOV atmospheric radiative transfer contribution in CMEM.

2.3. Ecmwf Land Surface Model

H-TESSEL (Hydrology-Tiled ECMWF Scheme for Surface Exchanges over Land) is the land surface model used in the ECMWF IFS [11,12]. In H-TESSEL, each soil column is discretized using 4 vertical layers, with no communication between horizontal grid cells. The depths of the soil layers are in an approximate geometric relation (7 cm for the top layer and then 21, 72, and 189 cm). The soil surface can be covered by snow. The single-layer snow scheme currently used in operational weather forecasts at ECMWF and included in H-TESSEL (in IFS cycle 46R1) is an energy balance model describing the temporal evolution of the heat and mass contents of the snowpack [13]. In the IFS, a land surface data assimilation system is used to analyse the H-TESSEL snow and soil prognostic variables [24]. The snow analysis relies on a 2D Optimal Interpolation in which in situ snow depth and multi-sensor snow cover data are assimilated [25]. A multi-layer snow scheme was recently introduced in H-TESSEL to represent the vertical structure and evolution of snow temperature, density and liquid water content [14]. The number of active snow layers and their thicknesses are computed diagnostically at the beginning of each time step before the prognostic snowfields are updated. The number of active layers (N) varies depending on the value of snow depth, from a minimum number of one layer, to a maximum of N max = 5 . The multi-layer snow scheme is being implemented and it is foreseen to be used for operational Numerical Weather Prediction (NWP) in the near future. H-TESSEL is fully coupled to the atmosphere for NWP applications and it has also been used in offline mode, forced by global reanalysis [11]. H-TESSEL land-use information is derived from the United States Geophysical Survey-Global Land Cover Classification (USGS-GLCC) [26] and the United Nations-Food and Agriculture Organization (UN-FAO) data set [27] interpolated to the same resolution as the forcing data. In H-TESSEL, snow water equivalent is arbitrarily set to 10 4 kg m 2 , for areas masked as glacier or ice shelves. These areas are not considered in this study. In this paper, H-TESSEL provides land surface conditions input to CMEM, including soil moisture and temperature, snow temperature, density, liquid water content and snow water equivalent.

2.4. The Community Microwave Emission Modelling Platform

CMEM has been developed by ECMWF as the forward operator for low frequency passive microwave brightness temperatures from 1 to 20 GHz at the surface [8,28,29,30]. It is available with an Apache License Version 2.0 from the ECMWF CMEM webpage. CMEM is used by the scientific community for research and operational applications using low frequency passive microwave data [31,32,33]. As described in [8] CMEM is composed of four modules to compute the contributions from the soil, vegetation, snow and atmosphere to the Top-of-Atmosphere (TOA) brightness temperature; the modular structure allows the use of a range of parameterizations (Table 2). The default configuration used in this paper is highlighted in bold in the table. It is suitable to investigate modeling of emissions in snow covered areas. It differs from the default CMEM v6.1 release, which is used at ECMWF for SMOS applications over snow free areas. The latest version of CMEM (v6.1) is presented in this paper. It includes new options that make possible to account for multi-layer snowpack and simulate brightness temperature up to around 100 GHz. The following paragraphs describe updates from the previous version (v5.1) [8].

2.4.1. Cmem Soil Module

In the soil module, the dielectric mixing model is used to compute the soil dielectric constant depending on the microwave frequency, soil moisture and temperature and soil texture. In order to simulate brightness temperature at a frequency higher than 20 GHz, the Calvet dielectric mixing model is added in CMEM v6.1 [38]. It relies on a calibration of the Wang and Schmugge empirical model [36] for high frequencies, using the Portos-93 field experiment [58] observations at 23.8, 36.5 and 90 GHz. Compared to previous versions of CMEM, the soil module of CMEM v6.1 was enhanced with the implementation of the Mironov dielectric mixing model accounting for temperature effects [37], the Wang soil roughness model for C-band [48], and the Grody and Weng desert emissivity parameterization [39,40].

2.4.2. Cmem Vegetation Module

In the vegetation module of CMEM, vegetation attenuates the surface emission, and it acts as a source of emission itself. The brightness temperature T Bveg ( p , θ ) is expressed as
T Bveg ( p , θ ) = T c ( 1 ω ( p , θ ) ) ( 1 exp ( τ veg ( p , θ ) ) )
where T c is the canopy temperature, ω ( p , θ ) is the single scattering albedo and τ Bveg ( p , θ ) is the vegetation optical depth for polarization p and frequency θ . While the vegetation optical depth model Wigneron [47] and Jackson [50] are most suitable at L-band, the Kirdyashev [51] and Wegmüller [49] models account for the wave number in their parameterization. Especially, the Wegmüller model is applicable to a larger range of frequencies (1–100 GHz). While Jackson and Wigneron models rely on empirical parameters, LAI and vegetation water content (Jackson), Kirdyashev and Wegmüller models consider the dielectric constant of vegetation in their parameterizations accounting for dielectric constant of liquid water and ice. In CMEM v6.1, vegetation dielectric computation is introduced as an explicit new component of the vegetation module for Kirdyashev and Wegmüller models (Table 2). The Mätzler model [52] is valid for non-frozen vegetation and it is now part of the CMEM choice of parameterizations. It is applicable to 1–100 GHz. For cold vegetation, the Kou [53] empirical model for the distribution of water and ice for vegetation in frozen environments is applicable. A non-frozen water dielectric model is also included in CMEM’s vegetation module. It assumes liquid water exists at 0 C in the vegetation, with Mätzler model’s applied, when the canopy temperature is below 0 C .
The CMEM vegetation module takes the subgrid-scale variability of the land surface into account. Up to seven tiles can be considered in each CMEM grid box: bare soil, low vegetation, high vegetation (each are either free of snow or snow covered), and open water. When snow is present, a snow layer is added on the top of bare soil or low vegetation tiles, and high vegetation is treated as covering the snow surface. Distinct canopy temperatures for low and high vegetation are accounted for in CMEM v6.1. If the Dual vegetation temperature parameterization (Table 2) is selected, soil top layer temperature and air temperature at 2 m are used as an approximation for low and high vegetation canopy temperature, respectively. For parameterization other than vegetation temperature (optical depth model, dielectric model), the same parameterization is set to high and low vegetation.

2.4.3. Cmem Snow Module

CMEM accounts for snow when present, using the Helsinki University of Technology (HUT) model to compute the snowpack reflectivity [10]. In order to simulate the vertically structured natural snowpack, the multi-layer HUT model [54] is implemented in CMEM v6.1. If only one snow layer is present, the model reverts to the single-layer version. In HUT, snow is characterized by temperature, moisture, density, thickness, salinity and grain size. The model snow grain size is represented in CMEM following [55,59]. It is expressed as a function of snow density as
d = min { a + b ρ 4 , d max }
where d represents effective grain size in m, a = 1.6 × 10 4 , b = 1.1 × 10 13 , ρ is the snow density in kg m 3 and d max = 3.0 × 10 3 m.
In contrast to previous versions of CMEM, which used a constant value, snow volumetric moisture variability in the snowpack, is accounted for in CMEM v6.1. It is computed as
M v = V w / V s = ( w slw / ρ w ) / ( w swe / ρ s )
where M v represents volumetric moisture, V w ( m 3 ) is the volume of water in snow, V s ( m 3 ) is the total volume of snow (ice + water + air), w slw ( kg m 2 ) is the snow liquid water content, w swe ( kg m 2 ) is the snow water equivalent, ρ w ( kg m 3 ) is the density of water and ρ s ( kg m 3 ) is the density of snow. When the snow volumetric moisture model is input, M v is calculated from Equation (3). When the snow volumetric moisture model is Anderson model, w slw is provided from input parameter or computed diagnostically following [13,55] as
w slw = f ( T sn ) S c
where f ( T sn ) is a snow temperature T sn (K) function and S c ( kg m 2 ) is the snow liquid water capacity. If multi-layer HUT ( N max > 1 ) is selected, snow temperature, density, snow water equivalent and snow liquid water content for each snow layer are needed as input parameter for HUT.

2.4.4. Cmem Atmospheric Module

For polarization p and incidence angle θ , CMEM computes the Top-of-Atmosphere (TOA) brightness temperature T Btoa ( p , θ ) at each model grid point as
T Btoa ( p , θ ) = T Batm ( p , θ ) + T Btov ( p , θ ) exp ( τ atm ( p , θ ) ) T Btov ( p , θ ) = T Bsoil ( p , θ ) exp ( τ veg ( p , θ ) )
+ T Bveg ( p , θ ) 1 + r ( p , θ ) exp ( τ veg ( p , θ ) ) + T Batm ( p , θ ) r ( p , θ ) exp ( 2 τ veg ( p , θ ) )
where T Batm ( p , θ ) is the upwelling atmospheric emission, τ atm ( p , θ ) is the atmospheric optical depth and T Btov ( p , θ ) is the brightness temperature at the top of the vegetation layer. T Bsoil ( p , θ ) , T Bveg ( p , θ ) and T Batm ( p , θ ) are the brightness temperature of soil, vegetation layer, and downward atmospheric emission, respectively. r ( p , θ ) is the rough soil surface reflectivity and τ veg ( p , θ ) is the vegetation optical depth. In the atmospheric module of CMEM, τ atm ( p , θ ) , T Batm ( p , θ ) and T Batm ( p , θ ) are computed by a simple parameterization, the so-called Pellarin model [56]. The Pellarin model mainly accounts for surface altitude and air temperature at 2 m, therefore it is suitable for low frequency where the influence of water vapor in the atmosphere is small. The Ulaby model [57] takes into account water vapor density near the surface; however, it is applicable only to specific frequencies.

2.4.5. Cmem-Rttov Interface in The Ifs

As seen from Section 2.5.2 CMEM v6.1 is able to interface to RTTOV (Section 2.2) in the IFS, so that the coupled CMEM-RTTOV can be used as an optional forward model for NWP developments. CMEM-RTTOV allows accounting for the full atmospheric vertical profile and to simulate brightness temperature at a frequency higher than 20 GHz. In this configuration, RTTOV replaces the atmospheric module of CMEM and in turn CMEM provides effective surface emissivity and temperature as input to RTTOV.
In the case of a non-scattering plane parallel atmosphere, for polarization p and incidence angle θ , the brightness temperature as observed by a satellite sensor T Btoa ( p , θ ) can be expressed in the model space following [6] as;
T Btoa ( p , θ ) = ε ( p , θ ) T phys exp ( τ atm ( p , θ ) ) + ( 1 ε ( p , θ ) ) T Batm ( p , θ ) exp ( τ atm ( p , θ ) ) + T Batm ( p , θ )
where T phys , T ( p , θ ) and T ( p , θ ) are the physical temperature at the surface, the atmospheric downwelling and upwelling brightness temperature, respectively. ε ( p , θ ) is the surface emissivity corresponding to T phys , exp ( τ atm ( p , θ ) ) is the net atmospheric transmissivity. From Equation (5) and (7), ε ( p , θ ) can be expressed as;
ε ( p , θ ) = ( T Btov ( p , θ ) T Batm ( p , θ ) ) / ( T phys T Batm ( p , θ ) )
T Btov ( p , θ ) is computed from Equation (6) and T Batm ( p , θ ) can be given from an external radiation model as a first guess. From Equation (8), ε ( p , θ ) is derived as the effective emissivity corresponding to T phys . T phys is set to the skin or effective temperature used in the CMEM soil module. CMEM v6.1 can output the set of ε ( p , θ ) and T phys for external radiation models.

2.5. Numerical Experiments

This study is based on results of offline and coupled numerical experiments. In the offline experiments, CMEM is used as a standalone model that input data provided by H-TESSEL land surface simulations forced by ERA5 [60] atmospheric conditions. The offline experiments are used to explore and to evaluate the new parameterizations implemented in CMEM v6.1. They are cost-effective, therefore suitable for evaluation of several configurations for long-term experiments. The coupled experiments are conducted in the full IFS system, using CMEM-RTTOV. They aim at exploring CMEM-RTTOV performance over snow covered surface in an operational-like environment for a larger range of microwave frequencies than offline experiments.

2.5.1. Offline Experiments

Table 3 summarizes the offline experiments conducted in this paper. They are conducted at the three lowest AMSR2 bands (C-band, X-band and Ku-band), which are compatible with the CMEM atmospheric module. In order to evaluate the effect of multi-layer snow, three configurations of CMEM H-TESSEL experiments are conducted:
  • ML5: inputs H-TESSEL results created by the multi-layer snow scheme up to 5 layers.
  • SL1: inputs H-TESSEL results created by the single-layer snow scheme.
  • ML1: inputs H-TESSEL results created by the multi-layer snow scheme up to 5 layers. The multi-layer snow fields are aggregated in a single-layer to represent the bulk properties of the snowpack [14]. Regarding the temperature, this is the temperature corresponding to the total heat (cold) content of the snowpack.
They all use CMEM with its default settings (Table 2) except for the snow volumetric moisture model. This is because the snow liquid water content is output only by the H-TESSEL experiment using the multi-layer snow scheme, therefore ML5 uses as input the snow liquid water content to compute the volumetric snow moisture from Equation (3), whereas SL1 and ML1 use the Anderson model to compute the volumetric snow moisture (Equations (3) and (4)).
In ML5, the air temperature at 2 m is used as an approximation for high vegetation (covering the snow surface) canopy temperature and water in the vegetation is treated as non-freezing because of the cold resistance of the vegetation. In addition to the above, for the purpose of evaluating the effect of vegetation over snow, four multi-layer snow experiments are conducted (Table 3):
  • TSO: soil temperature at the top layer is used as an approximation for high vegetation (covering the snow surface) canopy temperature similarly to the default setting of CMEM v5.1.
  • ICE: dielectric constant of ice is used for cold vegetation similarly to the default setting of CMEM v5.1.
  • KOU: Kou model about dielectric constant of vegetation is used for cold vegetation.
  • NOH: simulations assume that there is no vegetation on the snow.
They are consistent with ML5 in terms of volumetric snow moisture representation and the number of snowpack layers.
For all the seven offline CMEM experiments, CMEM input data are soil moisture, soil temperature, snow depth, snow density, snow liquid water content and snow temperature provided by H-TESSEL land surface simulations forced by ERA5 atmospheric conditions. These H-TESSEL simulations cover the time period from June 2010 to June 2018 to reduce spin up issues. CMEM also uses the air temperature at 2 m from ERA5. Experiments are conducted at a horizontal resolution of approximately 30 km (Tco399, spectral triangular truncation 399 with a cubic grid). For comparison, observation data are assigned to the nearest grid point. CMEM offline experiments span a 9-month period covering the boreal winter, from 01 October 2017 to 30 June 2018, with output every 6 h at 00 UTC, 06 UTC, 12 UTC and 18 UTC, using a time window covering ±3 h.

2.5.2. Coupled Experiments with Cmem-Rttov in the IFS

Table 4 describes the experiments conducted for this study using coupled CMEM-RTTOV radiative transfer models in the IFS. They are based on IFS cycle 46R1 with RTTOV version 12.2. In IFS:ATLAS, RTTOV simulates brightness temperature with emissivity obtained from the TELSEM 2 . In IFS:CMEM, RTTOV coupled with CMEM as seen Section 2.4.5 simulates brightness temperature. Both experiments are initialized every time with the ECMWF operational analysis data. The monitoring experiments compute Top-of-Atmosphere AMSR2 first guess departures (observation minus model first guess).
Table 5 describes the configuration of CMEM in IFS:CMEM. In the IFS cycle 46R1, a single-layer snow scheme is used in H-TESSEL, therefore the maximum number of snow layers about multi-layer HUT model N max = 1 . The snow liquid water content is not a prognostic variable in the single-layer snow scheme used in H-TESSEL, hence the Andeson model is used to diagnose the snow volumetric moisture. Considering the applicable frequency bands, the Dobson dielectric mixing model is used at frequencies below 20 GHz and the Calvet model is used at frequencies above 20 GHz. Other settings are the same as the default in Table 2.

3. Results And Discussion

3.1. Offline Experiments

3.1.1. Global Distributions

Figure 1a,b show global map of 2017–2018 boreal winter mean brightness temperature observed from GCOM-W AMSR2 at 10.65 GHz, V polarization (10V) and 10.65 GHz, H polarization (10H). The number of observations used in the statistics at 10V is provided in Figure 1c. Figure 1d shows the fraction of high vegetation in H-TESSEL as well as location of points [A] and [B] used for the times series case studies discussed in Section 3.1.2 and Section 3.1.3. They illustrate results of CMEM in areas without or with high vegetation. Results from Figure 1a–c are computed in each 2.0 lat × 2.0 lon bin. Large parts of observations are distributed in the northern region including boreal forests. Because of the difference such as reflectivity on the snow-covered soil surface [61], the average brightness temperature at 10H is about 15 K less than 10V. Especially, the relatively low brightness temperature areas at 10H correspond to areas without high vegetation (e.g., north Siberia, Canadian Arctic Archipelago).
Figure 2 presents the maps of mean simulated brightness temperature, mean first guess departure (O−B), computed as the differences between observation and simulation (bias), standard deviation of O−B (STDV) and Pearson product-moment correlation coefficient (R) from experiment ML5 (Table 3) at 10V and 10H for the same period as Figure 1. Global mean statistics are also indicated on the top of each panel in Figure 2. They indicate an overall better agreement with AMSR2 is obtained at 10V compared to 10H, in terms of bias, STDV and correlation. Figure 2c,d show generally positive mean first guess departure values for areas with high vegetation (e.g., Central Siberia), and negative O−B for areas without high vegetation (extreme north Siberia). Although this pattern is present both at 10V and 10H, it is more pronounced at 10H. Maps of correlation, Figure 2g,h, show a very good agreement between CMEM ML5 and AMSR2, especially at 10V, with values larger than 0.8 in Siberia, Alaska and western Russia. These areas correspond well to areas with large fraction of high vegetation (Figure 1d). STDV is also relatively low in these areas.

3.1.2. Impact of Multi-Layer Snow

Figure 3 shows observed and simulated brightness temperatures at 10.65 GHz at location [A] (see Figure 1d). It is representative of areas without high vegetation, which is suitable to assess the impact of multi-layer snow modelling without complex snow vegetation interactions. The figure includes results from offline experiments SL1, ML1 and ML5 (see Table 3), and shows the soil and snow temperature input to CMEM. Also shown in Figure 3 are time-height plots of snow density and temperature with periods of the presence of wet snow depicted as the shaded areas. In each experiment, in periods of dry snow, simulated brightness temperature shows less short term variability than the AMSR2 observations. However the figure indicates a good agreement between the ML1 snow temperature variability and AMSR2 brightness temperature during dry snow periods. In contrast, CMEM brightness temperature variability corresponds more closely with soil temperature. This is due to the near transparency of the snowpack at 10.65 GHz; i.e., the sensor is responding to radiance from the soil rather than the overlying snow.
In all the CMEM experiments, simulated brightness temperatures gradually decrease through the winter season while snow density increases. The importance of structure of the snowpack on the simulated brightness temperature is seen when comparing the results of the ML1 run versus the ML5 run; the difference between the CMEM input for these runs is the layer structure of snow (temperature, density and moisture) only (total snow depth and the soil and atmosphere parameters are the same). For instance, with increasing density in the lower layer of snow, simulated brightness temperature of ML5 is lower than ML1 after February at 10V. One of the reasons is that the increase in grain size from Equation (2) causes greater attenuation of radiance from soil.
In wet snow periods, mainly during the melting season, both observed and simulated brightness temperature are characterized by increased short term variability. Simulated brightness temperature in wet snow conditions is about 20 K higher than that of the dry conditions. As the snow liquid water content increases, the snowpack becomes less transparent, with increasing snow temperature and decreasing soil temperature contributions to the overall land surface emission. Because the snow temperature is close to the melting point of water in single-layer snow and the diurnal variation is small (SL1 and ML1), the diurnal variation of the simulated brightness temperature is small. On the other hand, there is diurnal variation of simulated brightness temperature in multi-layer snow (ML5), reflecting the effect of diurnal snow temperature variation near the snow-atmosphere interface.
Figure 4 shows time series of the statistics (5-day moving averages) of simulated brightness temperatures compared to GCOM-W AMSR2 observations at 10.65 GHz in the 2017–2018 boreal winter. The target area is snow-covered without high vegetation (fraction of high vegetation is 0), and excludes glaciers and ice shelves, in the Northern Hemisphere. These results confirm findings from the point scale analysis at location [A] above. All experiments show better performances of CMEM simulations during dry snow periods and degraded bias, STDV and correlation during the melting season. Using H-TESSEL data with a multi-layer snow scheme (ML1 and ML5) leads to reduced STDV, higher correlation values and a small difference between ML1 and ML5.
Figure 5 shows statistics of CMEM compared with AMSR2 observations at 06V/H, 10V/H, 19V/H, for the same period and area as in Figure 4. Due to the large sample size (about 900,000), the 95% confidence interval for each statistic is less than 0.1 K in bias and STDV and 0.01 in correlation (not shown). At all frequencies, better agreement with the AMSR2 observations is obtained at vertical than at horizontal polarization. As shown in Figure 4, STDV and correlation for ML1 and ML5 are slightly better than SL1 and the difference increases with higher frequency where the effect of snow becomes larger. Arduini et al. [14] showed that for thick and cold snowpacks the enhanced vertical resolution enables a better simulation of the internal snow density variability in H-TESSEL offline experiments. Although the difference between ML1 and ML5 is small, these improvements explain better results in ML5 and ML1 than in SL1.

3.1.3. Impact of High Vegetation Over Snow

Figure 6 shows observed and simulated brightness temperatures from ML5, TSO, ICE, KOU and NOH (see experiments list in Table 3), at 10.65 GHz H polarization, at point scale location [B] (see Figure 1d). It also shows time-height plots of snow temperature from offline experiments ML5. At this location, the fraction of high vegetation is 90% in H-TESSEL, therefore the optical depth and the emission of vegetation largely influence the simulated TOA brightness temperature. Figure 6a shows good agreement between observed and ML5 brightness temperature, while the short-term variability of TSO (setting as CMEM v5.1 default) is underestimated during the snow season. Although there is about 15 K difference, the temporal variability of the air temperature agrees well with that of the observed brightness temperature. It illustrates that using air, rather than soil, temperature as an approximation for high vegetation canopy temperature is suitable. In contrast to results presented for areas without high vegetation (Figure 3), all CMEM configurations show a low sensitivity to wet snow content over high vegetation. It is explained by the attenuation effect of the vegetation layer.
When air temperature at 2 m is used as an approximation for high vegetation temperature, it can reach temperature far below freezing point. In this paper, the Wegmüller model is used to model the vegetation optical depth because it is applicable to a larger range of frequencies (1–100 GHz) and accounts for the dielectric constant of vegetation (Table 2). While a non-frozen water dielectric model is used for ML5 and TSO in Figure 6a, dielectric models that consider frozen water in high vegetation are applied for KOU and ICE in Figure 6b. In ICE, the dielectric constant of ice is used when the vegetation canopy temperature drops below 0.5 C . In these conditions, the simulated brightness temperature is the same as the case without high vegetation (NOH), and the difference from the observed brightness temperature becomes large. It is clearly shown in Figure 6b for January–February with very cold air temperatures, observed brightness temperatures below 240 K and simulated values for ICE staying around 250 K. In KOU, the vegetation dielectric model takes into account the freezing point depression of vegetation related to the cold resistance. Therefore it shows good agreement with observation as ML5, except in cases when the vegetation temperature (air temperature) falls below 260 K at which point the dielectric constant of the vegetation layer is the same as that of ice. In these conditions, Figure 7 shows that the vegetation optical depth is close to 0 (Equations (1), (5) and (6)), the vegetation is transparent and top-of-vegetation brightness temperature is unrealistically driven by soil conditions. In other words, the simulated brightness temperatures of ICE and KOU in severe cold winter conditions are close to the value of NOH (Figure 6b). These results suggest that it is not appropriate for the vegetation optical depth model of Wegmüller to use dielectric constant models largely influenced by ice.
Figure 8 shows statistics between CMEM and AMSR2 observations, for snow-covered (excluding glaciers and ice shelves) areas with high vegetation in the Northern hemisphere. Comparison between TSO and ML5, shows larger bias (O−B) values for ML5. This is explained by the fact that ML5 uses air temperature at 2 m for high vegetation, so at all frequencies it is colder than TSO, which uses soil temperature. Although ML5 displays higher short term variability than TSO leading to larger STDV at 6.925 GHz, the STDV scores are neutral at 10.65 GHz and better than TSO at 18.7 GHz. The most important improvement of ML5 compared to the other CMEM configurations is in terms of correlation values which are improved at all frequencies by more than 0.15 at V polarization and to a less extent at H polarization. These results show that accounting for vegetation canopy temperature is crucial to simulate the contribution of vegetation to the brightness temperature over snow covered areas.

3.1.4. Coupled Experiments with Cmem-Rttov in the Ifs

Figure 9 shows global maps of mean brightness temperature (in K) for January 2019 as observed by AMSR2 (top), from IFS:ATLAS (middle) and IFS:CMEM (bottom). Although the periods analyzed are different and shorter, the geographical distribution and patterns are similar to those discussed in the previous sub-section for the offline experiments (Figure 1a,b). Figure 9c and d show that the IFS:ATLAS experiment underestimates brightness temperature values compared to AMSR2 observations, with mean values of 253.3 K and 240.7 K for AMSR2 V and H observations versus 247.6 K and 234.0 K for IFS:ATLAS. The negative bias is especially pronounced at H polarization in extreme north Siberia and Alaska where the fraction of high vegetation is low. In contrast, IFS:CMEM mean brightness temperature values are 249.7 K and 244.5 K at V and H polarizations, in relative better agreement with AMSR2 observations, but with a positive bias at H polarization.
Figure 10 and Figure 11 show maps of statistic from experiment IFS:ATLAS and IFS:CMEM at 10.65 GHz for January 2019. Note that due to the influence of quality control in the IFS for atmospheric optical depth and radiance used by CMEM, the number of comparisons for IFS:ATLAS and IFS:CMEM differ slightly. Regarding IFS:CMEM, the geographical distribution of bias and correlation are similar to the offline experiment results that were obtained for a full winter season (Figure 2). However first guess departure standard deviation is smaller in IFS:CMEM for January 2019 than in the offline ML5 experiment. In January, the area in which the snow is melting is very limited in the Northern Hemisphere, therefore the IFS:CMEM experiment is not affected by wet snow conditions, in contrast to ML5 seasonal results that included the season in which snow melts up to April. Additionally, the specification that the offline land-surface experiments do not have snow assimilation might contribute to the differences. The IFS:ATLAS and IFS:CMEM experiments have positive mean first guess departure values of 5.8 K and 3.6 K at V polarization, indicating model underestimation of brightness temperature values. At H polarization mean first guess departures are 6.7 K and −3.8 K, with model underestimation in IFS:ATLAS and overestimation in IFS:CMEM. Differences between IFS:ATLAS and IFS:CMEM mean first guess departures are largest in north Siberia, Alaska and over the Tibetan Plateau, which are regions characterized by low fraction of high vegetation. Since the snowpack is dry in this period, radiance from the soil is dominant in these regions. In IFS:CMEM, the Wegmüller model is used for soil roughness model because it is applicable to a larger range of frequencies (1–100 GHz) (Table 5). Wegmüller et al. [44] pointed out that the model mainly fails in predicting the high reflectivity values observed for soils that are smoothed by repeated precipitation, as typically occurs on bare fields during wintertime. Because a priority on a wide applicability is set and not on the optimization of the model for a specific case, the roughness parameter is globally uniform. This result suggests a necessity of considering the characteristics of regions in soil roughness model such as the Wigneron model. First guess departure standard deviation values are 7.7 K (V) and 9.5 K (H) for IFS:ATLAS, and 6.9 K (V) and 10.9 K (H) for IFS:CMEM. The correlation coefficient of IFS:ATLAS tends to be better than that of IFS:CMEM. In terms of correlation, IFS:ATLAS shows better performance with 0.85 (V) and 0.80 (H), than IFS:CMEM with 0.70 (V) and 0.43 (H). These results show that the temporal dynamics is better captured by IFS:ATLAS than IFS:CMEM whereas mean values are better represented by IFS:CMEM.
Figure 12 shows observed and simulated brightness temperatures at 10.65 GHz (V) and 89.0 GHz (V) at location [A] (see Figure 1d) for January 2019. The figure also shows soil and skin temperatures used for IFS:CMEM and IFS:ATLAS. At this location, the fraction of high vegetation is 0 and the snowpack is dry in this period. Therefore, IFS:CMEM brightness temperature is significantly affected by soil temperature. On the other hand, since emissivity is constant in this period but variation of skin temperature is large, the temporal dynamics of the brightness temperature is larger for IFS:ATLAS than for IFS:CMEM. This tendency is seen at both 10V and 89V. This figure illustrates that best agreement with AMSR2 observations is obtained with IFS:CMEM at 10V, whereas IFS:ATLAS performs better at 89V. This result suggests that CMEM needs to consider the information of snow near the surface layer more properly at high frequencies.
Figure 13 provides the kernel density estimation of the brightness temperature differences between the observations and simulations, at all frequencies and polarizations for January 2019 over snow-covered areas without high vegetation (left) and with high vegetation (right). Since the statistical characteristics of each channel are reflected for the emissivity, the differences in the distributions between V polarization and H polarization of IFS:ATLAS is smaller than that of IFS:CMEM. The top three left panels show narrow distributions of first guess departures in the absence of high vegetation, at V polarization for IFS:CMEM at frequencies lower than 20 GHz. These distributions are associated with smaller standard deviation values than in the other configurations. It suggests that CMEM improves the emission modelling compared to the emissivity atlas in these conditions. However, at frequencies larger than 20 GHz, the mean first guess departure and standard deviation values are larger for IFS:CMEM than IFS:ATLAS (lower three panels of Figure 13). This is consistent with Figure 12 and the previous study from [7] which showed similar issues with the CRTM over snow and ice regions. Adding to the snow emission modeling uncertainties, it could be partly due to the difficulty in providing inputs that reflect complex snow conditions. For instance, around 89 GHz, although the effect of snow grain size for snow emissivity becomes large [1], grain size in CMEM is given by simple parameterization from Equation (2). Observations also show cases in which the grain size is not well correlated with the density of the snowpack [62]. These results suggest that further studies are needed in order to improve emissivity values simulated by CMEM at high frequency.

4. Conclusions

This study investigated the usage of CMEM to estimate land surface emissivity over snow-covered areas. The HUT multi-layer snow emission model and new parameterizations, which allow for expansion of the target frequency, were implemented in CMEM. The performance of the new model and parameterizations in CMEM over snow-covered areas was evaluated by offline experiments, the results from CMEM were compared with AMSR2 measurements. From the CMEM offline experiments for a 9-month period covering the boreal winter from 2017 to 2018, using H-TESSEL results with multi-layer snow scheme as input and multi-layer HUT snow emission model led to reduced first guess departure standard deviation values and higher correlation values. The improvement was mainly brought by better simulation of snow in the multi-layer land surface model H-TESSEL rather than by the multi-layer HUT model. In areas with high vegetation cover over snow, using air temperature at 2 m as a proxy for high vegetation canopy temperature led to improvement of the correlation with observations. Especially, at 10.65 GHz V polarization, the correlation values were larger than 0.8 in Siberia, Alaska and western Russia. Although CMEM showed low sensitivity to snow properties over high vegetation, due to the attenuation effect of the vegetation layer, the vegetation optical depth and vegetation emission largely influenced TOA brightness temperatures over these areas. When the Wegmüller model was used to model the vegetation optical depth, which is applicable to a larger range of frequencies, it was not appropriate to use vegetation dielectric constant models largely influenced by ice because the vegetation optical depth became too low in frozen conditions. From the CMEM-RTTOV coupled experiments in the IFS system, conducted for January 2019, the emissivity calculated from CMEM was shown to improve simulated brightness temperature at low frequency over snow, compared to using the emissivity atlas TELSEM 2 as input of RTTOV. However, the improvement depends on the polarization and fraction of vegetation. The kernel density estimation of the brightness temperature differences between the observations and simulations showed a clear improvement at V polarization below 20 GHz in the area without high vegetation, but no improvement for other conditions. Results showed increased errors, when using CMEM compared to the atlas, at frequencies higher than 20 GHz, especially in areas devoid of high vegetation. These results show the potential of multi-layer modeling radiative transfer approaches at low frequencies. However, they emphasize that further studies are needed in order to improve emissivity modeling to support developments of coupled land-atmosphere assimilation of surface-sensitive satellite data.

Author Contributions

Conceptualization, Y.H. and P.d.R.; methodology, Y.H. and P.d.R.; software, Y.H., P.d.R. and G.A.; writing—original draft preparation, Y.H.; writing—review and editing, P.d.R. and G.A.; visualization, Y.H.; supervision, P.d.R.; All the authors contributed to editing and revisions of the paper. All authors have read and agreed to the published version of the manuscript.

Funding

The work of Y. Hirahara was co-funded by ECMWF and JMA. The work of P. de Rosnay was funded by ECMWF. The work of G. Arduini was funded through the APPLICATE project. The APPLICATE has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement 727862.

Acknowledgments

This study was carried out in collaboration between ECMWF and JMA. The authors would like to thank Alan Geer, Katrin Lonitz, Niels Bormann, Peter Weston and Stephen English for constructive discussion of this work.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

The following abbreviations are used in this manuscript:
AMSR2Advanced Microwave Scanning Radiometer 2
AMSU-AAdvanced Microwave Sounding Unit-A
ATMSAdvanced Technology Microwave Sounder
CMEMCommunity Microwave Emission Modelling platform
CRTMCommunity Radiative Transfer Model
ECMWFEuropean Centre for Medium-Range Weather Forecasts
GCOM-WGlobal Change Observation Mission-Water
H-TESSELHydrology-Tiled ECMWF Scheme for Surface Exchanges over Land
HUTHelsinki University of Technology
IFSIntegrated Forecast System
JAXAJapan Aerospace Exploration Agency
JMAJapan Meteorological Agency
MHSMicrowave Humidity Sounder
NWPNumerical Weather Prediction
RTTOVRadiative Transfer for TOVS
SMOSSoil Moisture and Ocean Salinity
SSM/ISpecial Sensor Microwave Imager
SSMISSpecial Sensor Microwave Imager/Sounder
TBbrightness temperature
TELSEMTool to Estimate Land Surface Emissivities at Microwave Frequencies
TELSEM 2 Tool to Estimate Land Surface Emissivity from Microwave to Submillimeter Waves
TOATop of Atmosphere
TOVSTIROS Operational Vertical Sounder
UN-FAOUnited Nations-Food and Agriculture Organization
USGS-GLCCUnited States Geophysical Survey-Global Land Cover Classification

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Figure 1. Maps of mean observed AMSR2 10.65 GHz brightness temperature at V (a) and H (b) polarizations, number of 10.65 GHz (V) (c) observations used in the statistics, computed in each 2.0 lat × 2.0 lon bin and over the time period 1 October 2017 to 30 June 2018 for snow-covered area (excluding glaciers and ice shelves). Map (d) shows fraction of high vegetation in CMEM simulations (Section 2.5). [A] (lon = 162.0 E, lat = 64.0 N) and [B] (lon = 156.0 W, lat = 64.0 N) in (d) are sample point without and with high vegetation, respectively.
Figure 1. Maps of mean observed AMSR2 10.65 GHz brightness temperature at V (a) and H (b) polarizations, number of 10.65 GHz (V) (c) observations used in the statistics, computed in each 2.0 lat × 2.0 lon bin and over the time period 1 October 2017 to 30 June 2018 for snow-covered area (excluding glaciers and ice shelves). Map (d) shows fraction of high vegetation in CMEM simulations (Section 2.5). [A] (lon = 162.0 E, lat = 64.0 N) and [B] (lon = 156.0 W, lat = 64.0 N) in (d) are sample point without and with high vegetation, respectively.
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Figure 2. Maps of brightness temperature at 10.65 GHz mean from the CMEM ML5 experiment (a,b), mean first guess departure (O−B) computed as AMSR2 observations minus CMEM ML5 (c,d), first guess departure standard deviation (e,f) and correlation (g,h) between observations and CMEM ML5. Left (a,c,e,g) and right (b,d,f,h) show V and H polarizations, respectively. Statistics are computed in each 2.0 lat × 2.0 lon bin and over the time period 1 October 2017 to 30 June 2018.
Figure 2. Maps of brightness temperature at 10.65 GHz mean from the CMEM ML5 experiment (a,b), mean first guess departure (O−B) computed as AMSR2 observations minus CMEM ML5 (c,d), first guess departure standard deviation (e,f) and correlation (g,h) between observations and CMEM ML5. Left (a,c,e,g) and right (b,d,f,h) show V and H polarizations, respectively. Statistics are computed in each 2.0 lat × 2.0 lon bin and over the time period 1 October 2017 to 30 June 2018.
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Figure 3. Time series, at grid point [A] (lon = 162.0 E, lat = 64.0 N, see Figure 1d), of 10.65 GHz brightness temperature from AMSR2 (blue) and CMEM (red), H-TESSEL top soil layer temperature (orange), snow temperature (light blue in SL1 and ML1) and temperature of top snow layer in ML5 (light purple), from 1 October 2017 to 30 June 2018, for V (top) and H (bottom), for SL1 (left), ML1 (middle) and ML5 (right). Coloured areas show time-height plot of snow density [ kg m 3 ] (top) and temperature [K] (bottom). Wet snow periods are shaded in grey.
Figure 3. Time series, at grid point [A] (lon = 162.0 E, lat = 64.0 N, see Figure 1d), of 10.65 GHz brightness temperature from AMSR2 (blue) and CMEM (red), H-TESSEL top soil layer temperature (orange), snow temperature (light blue in SL1 and ML1) and temperature of top snow layer in ML5 (light purple), from 1 October 2017 to 30 June 2018, for V (top) and H (bottom), for SL1 (left), ML1 (middle) and ML5 (right). Coloured areas show time-height plot of snow density [ kg m 3 ] (top) and temperature [K] (bottom). Wet snow periods are shaded in grey.
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Figure 4. Time series (5-day moving averages) of statistics (left: bias, center: STDV, right: correlation) of simulated brightness temperature compared to GCOM-W AMSR2 observations at 10.65 GHz (V) (top) and 10.65 GHz (H) (bottom) from 1 October 2017 to 30 June 2018. Target area is snow-covered area without high vegetation, and excluding glacier and ice shelves, in the Northern Hemisphere. Bar chart shows number of data for ML5 simulations (Table 3).
Figure 4. Time series (5-day moving averages) of statistics (left: bias, center: STDV, right: correlation) of simulated brightness temperature compared to GCOM-W AMSR2 observations at 10.65 GHz (V) (top) and 10.65 GHz (H) (bottom) from 1 October 2017 to 30 June 2018. Target area is snow-covered area without high vegetation, and excluding glacier and ice shelves, in the Northern Hemisphere. Bar chart shows number of data for ML5 simulations (Table 3).
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Figure 5. Statistics of simulated brightness temperature compared to GCOM-W AMSR2 observations for the time period 1 October 2017 to 30 June 2018. Target area is snow-covered area without high vegetation, and excluding glacier and ice shelves, in the Northern Hemisphere.
Figure 5. Statistics of simulated brightness temperature compared to GCOM-W AMSR2 observations for the time period 1 October 2017 to 30 June 2018. Target area is snow-covered area without high vegetation, and excluding glacier and ice shelves, in the Northern Hemisphere.
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Figure 6. Time series, at grid point [B] (lon = 156.0 W, lat = 64.0 N, see Figure 1d), of 10H brightness temperature from AMSR2 (blue), CMEM (in a: ML5 in red and TSO in dotted blue, and in b: ICE in cyan, KOU in red and NOH in dotted blue), H-TESSEL top soil layer temperature (orange in a), air temperature at 2 m (light purple), from 1 October 2017 to 30 June 2018. Blue coloured areas show time-height plot of ML5 snow temperature in K. Wet snow periods are shaded in grey in (a), and warm periods ( Tair 0.5 C ) are shaded in light pink in (b). Horizontal Black lines in (b) show T x = 0.5 C .
Figure 6. Time series, at grid point [B] (lon = 156.0 W, lat = 64.0 N, see Figure 1d), of 10H brightness temperature from AMSR2 (blue), CMEM (in a: ML5 in red and TSO in dotted blue, and in b: ICE in cyan, KOU in red and NOH in dotted blue), H-TESSEL top soil layer temperature (orange in a), air temperature at 2 m (light purple), from 1 October 2017 to 30 June 2018. Blue coloured areas show time-height plot of ML5 snow temperature in K. Wet snow periods are shaded in grey in (a), and warm periods ( Tair 0.5 C ) are shaded in light pink in (b). Horizontal Black lines in (b) show T x = 0.5 C .
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Figure 7. Time series of air temperature at 2 m in K (light purple line) and optical depth of vegetation (Tau) from ML5 (red), ICE (light blue) and KOU (black), at grid point [B] (lon = 156.0 W, lat = 64.0 N, fraction of high vegetation = 90%) from 1 December 2017 to 1 February 2018 at 10.65 GHz (H).
Figure 7. Time series of air temperature at 2 m in K (light purple line) and optical depth of vegetation (Tau) from ML5 (red), ICE (light blue) and KOU (black), at grid point [B] (lon = 156.0 W, lat = 64.0 N, fraction of high vegetation = 90%) from 1 December 2017 to 1 February 2018 at 10.65 GHz (H).
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Figure 8. Statistics of simulated brightness temperature compared to GCOM-W AMSR2 observations for the time period 1 October 2017 to 30 June 2018. Target area is snow-covered (excluding glacier and ice shelves) area with high vegetation in the Northern hemisphere.
Figure 8. Statistics of simulated brightness temperature compared to GCOM-W AMSR2 observations for the time period 1 October 2017 to 30 June 2018. Target area is snow-covered (excluding glacier and ice shelves) area with high vegetation in the Northern hemisphere.
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Figure 9. Mean brightness temperatures in K at 10.65 GHz over snow-covered areas (excluding glacier and ice shelves), from AMSR2 (a,b), IFS:ALTAS (c,d) and IFS:CMEM (e,f), at V (left: a,c,e) and H (right: b,d,f) polarizations. Means are computed in each 2.0 lat × 2.0 lon bin and over the time period 1 to 31 January 2019.
Figure 9. Mean brightness temperatures in K at 10.65 GHz over snow-covered areas (excluding glacier and ice shelves), from AMSR2 (a,b), IFS:ALTAS (c,d) and IFS:CMEM (e,f), at V (left: a,c,e) and H (right: b,d,f) polarizations. Means are computed in each 2.0 lat × 2.0 lon bin and over the time period 1 to 31 January 2019.
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Figure 10. Statistics against AMSR2 observations at 10.65 GHz V polarization for the IFS-ATLAS (left: a,c,e,g) and IFS:CMEM (right: b,d,f,h) experiments for January 2019, including number of observations N (a,b), first guess departure O−B in K (c,d), first guess departure standard deviation STDV in K (e,f) and correlation (g,h). Statistics are computed in each 2.0 lat × 2.0 lon bin and over the period 1 to 31 January 2019.
Figure 10. Statistics against AMSR2 observations at 10.65 GHz V polarization for the IFS-ATLAS (left: a,c,e,g) and IFS:CMEM (right: b,d,f,h) experiments for January 2019, including number of observations N (a,b), first guess departure O−B in K (c,d), first guess departure standard deviation STDV in K (e,f) and correlation (g,h). Statistics are computed in each 2.0 lat × 2.0 lon bin and over the period 1 to 31 January 2019.
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Figure 11. As in Figure 10 but at H polarization.
Figure 11. As in Figure 10 but at H polarization.
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Figure 12. Time series of brightness temperature from AMSR2 (gray), IFS:ATLAS(blue), IFS:CMEM(red), top soil layer temperature (cyan), skin temperature (pink) for January 2019. Left 10.65 GHz (V) and right 89.0 GHz (V). Figures show data contained in a 2.0 lat × 2.0 lon bin centered at point [A] (lon = 162.0 E, lat = 64.0 N, see Figure 1d).
Figure 12. Time series of brightness temperature from AMSR2 (gray), IFS:ATLAS(blue), IFS:CMEM(red), top soil layer temperature (cyan), skin temperature (pink) for January 2019. Left 10.65 GHz (V) and right 89.0 GHz (V). Figures show data contained in a 2.0 lat × 2.0 lon bin centered at point [A] (lon = 162.0 E, lat = 64.0 N, see Figure 1d).
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Figure 13. Kernel density estimation of AMSR2 first guess departure (O−B) in K, for January 2019, for IFS:ATLAS (blue) and IFS:CMEM (red), at V (solid lines) and H (dotted lines), for snow-covered (excluding glacier and ice shelves) area without (left) and with (right) high vegetation, for the six AMSR2 frequencies from 6.9 GHz (top) to 89 GHz (bottom).
Figure 13. Kernel density estimation of AMSR2 first guess departure (O−B) in K, for January 2019, for IFS:ATLAS (blue) and IFS:CMEM (red), at V (solid lines) and H (dotted lines), for snow-covered (excluding glacier and ice shelves) area without (left) and with (right) high vegetation, for the six AMSR2 frequencies from 6.9 GHz (top) to 89 GHz (bottom).
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Table 1. AMSR2 channels.
Table 1. AMSR2 channels.
BandChannelFrequency (GHz)PolarizationNotation
C1, 26.925V, H06V, 06H
C3, 47.3V, H07V, 07H
X5, 610.65V, H10V, 10H
Ku7, 818.7V, H19V, 19H
K9, 1023.8V, H23V, 23H
Ka11, 1236.5V, H37V, 37H
W13, 1489.0V, H89V, 89H
Table 2. Main modular configuration of CMEM. For each module components, a choice of parameterizations is available. Parameterizations in bold are the default used in this paper (setting for ML5 in Table 3). Italics indicate new models and parameterizations in CMEM v6.1.
Table 2. Main modular configuration of CMEM. For each module components, a choice of parameterizations is available. Parameterizations in bold are the default used in this paper (setting for ML5 in Table 3). Italics indicate new models and parameterizations in CMEM v6.1.
CMEM ModulesChoice of Parameterizations
Short NameReference
Soil module:
Dielectric mixing modelDobson[34]
Mironov[35]
Wang[36]
Mironov 2009[37]
Calvet[38]
Grody (desert only)[39,40]
Effective temperature modelChoudhury[41]
Holmes[42]
Surface temperature
Wigneron[43]
Soil roughness modelWegmüller[44]
Choudhury[45]
Texture dependent[46]
Wigneron 2001[43]
Wigneron 2007[47]
Wang[48]
Vegetation module:
Vegetation optical depth modelWegmüller[49]
Jackson[50]
Kirdyashev[51]
Wigneron[47]
Vegetation temperature modelDual (Low Veg.: Tsurf, High Veg.: Tair)
Surface temperature (Tsurf)
Air temperature (Tair)
Vegetation dielectric modelMätzler[52]
Water
Vegetation dielectric model (cold)Not frozen
Ice
Kou[53]
Snow module:
Snow emission modelHUT multi layer model[54]
HUT single layer model[10]
Snow volumetric moisture modelInput (e.g., H-TESSEL)
Anderson[13,55]
Constant
Atmospheric module:
Atmospheric emission modelPellarin[56]
Ulaby[57]
Input (e.g., RTTOV)
Table 3. Offline CMEM H-TESSEL experiments acronyms and settings. All the experiments use CMEM v6.1 in its default version shown in Table 2, with different snow configurations and different approaches to represent vegetation in CMEM. They are conducted at AMSR2 C-band, X-band and Ku-band at vertical (V) and horizontal (H) polarizations, from 01 October 2017 to 30 Jun 2018.
Table 3. Offline CMEM H-TESSEL experiments acronyms and settings. All the experiments use CMEM v6.1 in its default version shown in Table 2, with different snow configurations and different approaches to represent vegetation in CMEM. They are conducted at AMSR2 C-band, X-band and Ku-band at vertical (V) and horizontal (H) polarizations, from 01 October 2017 to 30 Jun 2018.
Exp NameH-TESSEL Snow ModelCMEM Specificity
ML5multi-layer snow ( N max = 5 )Default (Table 2)
SL1single-layer snowML5 but Snow volumetric moisture model is Anderson
ML1multi-layer snow aggregated to single-layerML5 but Snow volumetric moisture model is Anderson
TSOmulti-layer snow ( N max = 5 )ML5 but Vegetation temperature model is Tsoil
ICEmulti-layer snow ( N max = 5 )ML5 but Vegetation dielectric model (cold) is Ice
KOUmulti-layer snow ( N max = 5 )ML5 but Vegetation dielectric model (cold) is Kou
NOHmulti-layer snow ( N max = 5 )ML5 but Fraction of high vegetation is setted to 0
Table 4. Coupled CMEM-RTTOV monitoring experiments in the IFS. All the experiments use IFS cycle 46r1, with RTTOV version 12.2. They are conducted at AMSR2 C-band, X-band, Ku-band, K-band, Ka-band and W-band (Table 1), at vertical (V) and horizontal (H) polarizations, from 01 January 2019 to 31 January 2019.
Table 4. Coupled CMEM-RTTOV monitoring experiments in the IFS. All the experiments use IFS cycle 46r1, with RTTOV version 12.2. They are conducted at AMSR2 C-band, X-band, Ku-band, K-band, Ka-band and W-band (Table 1), at vertical (V) and horizontal (H) polarizations, from 01 January 2019 to 31 January 2019.
Exp NameSnow Surface Emissivity
IFS:ATLASTELSEM 2 [17]
IFS:CMEMCMEM v6.1
Table 5. Modular configuration of IFS:CMEM in Table 4.
Table 5. Modular configuration of IFS:CMEM in Table 4.
CMEM ModulesChoice of Parameterizations
Soil Dielectric mixing modelDobson (≤20 GHz), Calvet (>20 GHz)
Soil Effective temperature modelChoudhury
Soil roughness modelWegmüller
Vegetation optical depth modelWegmüller
Vegetation temperature modelDual(Low Veg.: Tsurf, High Veg.: Tair)
Vegetation dielectric modelMätzler
Vegetation dielectric model (cold)Not frozen
Snow emission modelHUT multi layer model ( N max = 1 )
Snow volumetric moisture modelAnderson
Atmospheric emission modelInput (RTTOV)

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Hirahara, Y.; Rosnay, P.d.; Arduini, G. Evaluation of a Microwave Emissivity Module for Snow Covered Area with CMEM in the ECMWF Integrated Forecasting System. Remote Sens. 2020, 12, 2946. https://doi.org/10.3390/rs12182946

AMA Style

Hirahara Y, Rosnay Pd, Arduini G. Evaluation of a Microwave Emissivity Module for Snow Covered Area with CMEM in the ECMWF Integrated Forecasting System. Remote Sensing. 2020; 12(18):2946. https://doi.org/10.3390/rs12182946

Chicago/Turabian Style

Hirahara, Yoichi, Patricia de Rosnay, and Gabriele Arduini. 2020. "Evaluation of a Microwave Emissivity Module for Snow Covered Area with CMEM in the ECMWF Integrated Forecasting System" Remote Sensing 12, no. 18: 2946. https://doi.org/10.3390/rs12182946

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