the Creative Commons Attribution 4.0 License.
the Creative Commons Attribution 4.0 License.
Barents-2.5km v2.0: an operational data-assimilative coupled ocean and sea ice ensemble prediction model for the Barents Sea and Svalbard
Yvonne Gusdal
Edel S. U. Rikardsen
Marina Durán Moro
Jostein Brændshøi
Nils Melsom Kristensen
Sindre Fritzner
Keguang Wang
Ann Kristin Sperrevik
Martina Idžanović
Thomas Lavergne
Jens Boldingh Debernard
Kai H. Christensen
An operational ocean and sea ice forecast model, Barents-2.5, is implemented for short-term forecasting at the coast off northern Norway, the Barents Sea, and the waters around Svalbard. Primary forecast parameters are sea ice concentration (SIC), sea surface temperature (SST), and ocean currents. The model also provides input data for drift modeling of pollutants, icebergs, and search-and-rescue applications in the Arctic domain. Barents-2.5 has recently been upgraded to include an ensemble prediction system with 24 daily realizations of the model state. SIC, SST, and in situ hydrography are constrained through the ensemble Kalman filter (EnKF) data assimilation scheme executed in daily forecast cycles with a lead time up to 66 h. Here, we present the model setup and validation in terms of SIC, SST, in situ hydrography, and ocean and ice velocities. In addition to the model's forecast capabilities for SIC and SST, the performance of the ensemble in representing the model's uncertainty and the performance of the EnKF in constraining the model state are discussed.
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Rapid changes in water mass distribution and seasonal sea ice cover are underway in the Barents Sea and the areas around Svalbard (Lind et al., 2018). We also see changes in human activities, such as shipping, oil exploration, and fisheries. The ability to provide efficient emergency services in this region, e.g., for search and rescue, accidental oil spills, or ship drift, is much reduced compared to mainland Norway due to the vast distances and challenging environmental conditions. Contingency models for decision support are based on short-term forecast models for weather, surface waves, ocean circulation, and sea ice distribution, and increased predictability in these models translates directly into better emergency preparedness (Röhrs et al., 2023). Of particular interest are upper-ocean transport processes (e.g., Strand et al., 2017, 2021) and energy exchanges across the air–ice–sea interfaces.
In addition, Arctic Ocean ecosystems are vulnerable to change. Projected long-term decline in sea ice cover and the associated “Atlantification” of the Barents Sea (Asbjørnsen et al., 2020) are impacting key species at different trophic levels, and hence they are important topics for investigation (Ingvaldsen et al., 2021). Hence, accurate models of upper-ocean transport processes are also important for understanding connectivity of fish stocks and other physical–biological couplings (Röhrs et al., 2014; Strand et al., 2017).
A high-resolution (2.5 km) numerical weather prediction (NWP) system at the Norwegian Meteorological Institute (MET), AROME-Arctic (MET-AA), for the Barents Sea and the areas around Svalbard was established in 2015 (Müller et al., 2017). This development paved the way for a coupled ocean and sea ice forecast model that operates on the same horizontal grid. Here, we present this coupled ocean–sea ice forecasting system, the Barents-2.5 model.
Ocean forecasting in this region is challenging for several reasons. The first challenge is that the hydrography is poorly observed and that in situ data are scarce compared to other regions. We have frequent passes of polar orbiting satellites, but since the skies are seldom clear, we have relatively few high-resolution observations of sea surface temperature (SST) from infrared sensors. We do have abundant medium-resolution observations of the sea ice cover from passive microwave imagery (Spreen et al., 2008) and frequent high-resolution images from synthetic aperture radars (SARs). Combined, these sensor technologies provide sub-daily coverage in the region.
A second challenge at high latitudes is that the atmospheric low-pressure systems can be small but very intense (Noer et al., 2011; Furevik et al., 2015). Correctly describing the temporal and spatial development of polar lows in the NWP system is difficult, although progress is being made with improvements in physics (Batrak and Müller, 2019) and in the data assimilation (DA) methodology (Hallerstig et al., 2021; Mile et al., 2022). We have, however, significant knowledge gaps when it comes to rapid changes in upper-ocean conditions and sea ice cover due to complex air–sea interactions, including waves. In addition, many surface layer processes are quite crudely parameterized in the models (if at all).
A third challenge is that the inertial period and the dominant tidal period (M2) are very similar at the latitudes considered here (e.g., Röhrs and Christensen, 2015). Hence, it is difficult to disentangle the transient Ekman dynamics from the more predictable tidal circulation. A general lack of long observation time series of ocean currents or mean sea level implies that we cannot easily remove the tidal component of observed drift velocities to isolate effects of air–sea interactions on the upper-ocean transport.
Ocean forecasting in high latitudes must encompass the uncertainties that result from the above challenges. As widely applied in NWP, ensemble prediction systems (EPS) can directly quantify the uncertainties in a forecast. Ensemble prediction has not yet been widely used in regional ocean modeling, but recent work has shown that models may predict uncertainty correctly if the underlying ocean model exhibits statistical skill (Jacobs et al., 2021). Our goal has been to implement an operational EPS for the Barents Sea that assimilates the available observations in this region. The uncertainty provided by the EPS may be used directly in forecast applications, e.g., to quantify the reliability of a prediction for decision support. In addition, the ensemble spread can be used to estimate model background errors, which is needed in DA schemes such as the ensemble Kalman filter (EnKF) applied in this work (Evensen, 1994; Sakov and Oke, 2008a).
This paper describes the operational setup of the Barents-2.5 forecast model. In Sect. 2, we provide details on the configuration and setup of the ocean and sea ice model, including the coupling scheme and forcing data. Section 3 describes the DA scheme. All observation data used for DA and for validation in this paper are described in Sect. 4. Section 5 documents how the model is operationalized, which includes details on the setup as an EPS. In Sect. 6, we describe methods used for validation of the model. Results on model validation and performance are shown in Sect. 7, focusing on validation of SST and sea ice concentration (SIC) as central state variables. Finally, in Sect. 8 we discuss the model's capability as a forecast tool and discuss our plans for future model development.
2.1 Ocean circulation model
Barents-2.5 is built on the Regional Ocean Modeling System (ROMS) version 3.7, which applies a topography-following coordinate system in the vertical (Shchepetkin and McWilliams, 2005) and a curvilinear horizontal grid. ROMS solves the Boussinesq primitive equations. The modeled state variables are temperature, salinity, surface elevation, and horizontal current velocities. The setup in Barents-2.5 includes a second-order turbulence closure scheme with turbulent kinetic energy and a generic length scale as state variables (Warner et al., 2005).
The model domain and bathymetry are shown in Fig. 1. The model resolution is approximately 2.5 km, which varies slightly throughout the domain consisting of 737×947 grid points. The bathymetry is based on the GEBCO global data set and interpolated onto the model grid. Minimum depth is set to 10 m. The bathymetry is smoothed to reduce pressure gradient errors as required in ROMS. Additionally, the coastline has been modified to match numeric grid point criteria by ROMS (i.e., every water grid point must have at least two adjacent open boundaries).
2.1.1 Discretization and advection schemes
The applied vertical discretization uses a stretched, topography-following coordinate system. Barents-2.5 has 42 layers, with higher resolution being seen towards the surface. The stretching of vertical coordinates is configured using the transform function 2 and the stretching function 4 in ROMS, with specific parameters of θS=6.0, θB=0.3, and Hc=100 m. This choice of values results in an upper-layer thickness between 0.2 and 1.2 m and maintains an increased resolution in the upper 100 m.
ROMS uses split explicit time stepping, i.e., the barotropic modes are solved using a shorter time step than the baroclinic modes. Barents-2.5 uses 90 s outer time steps for the baroclinic mode to solve the 3D momentum equations and 30 inner time steps (i.e., 3 s) for the solution of 2D momentum, including tides.
Momentum and tracers are advected using a third-order upwind scheme in the horizontal and a fourth-order centered scheme in the vertical. Turbulent kinetic energy and length scale are advected vertically and horizontally using a fourth-order centered scheme.
2.1.2 Sub-scale processes
Vertical mixing is modeled using a second-order scheme for turbulent kinetic energy (TKE) and a generic length scale (GLS). Our setup is the one recommended by Umlauf and Burchard (2005). Parameters for this turbulence scheme are documented in Table 1. It is noted that turbulence dissipation rate and turbulent length scale may be calculated from TKE and GLS according to Eqs. (14) and (15) in Warner et al. (2005). The CANUTO_A
stability function is chosen for the diffusion of momentum and tracers (Canuto et al., 2001; Warner et al., 2005).
The boundary condition for TKE at the surface is based on the model of Craig and Banner (1994) using a flux condition, wherein the energy flux at the surface is proportional to the cube of the air-side friction velocity with a scaling factor of 100. Surface roughness is set by the wind stress using a Charnok constant of 1400. Buoyancy and shear are horizontally smoothed using the N2S2_HORAVG
pre-compiler option. The background vertical diffusivity is set to 10−6 m2 s−1 for tracers, 10−5 m2 s−1 for momentum, and m2 s−1 for TKE and GLS. Furthermore, the pre-compiler options RI_SPLINES
, SPLINES_VVISC
, and SPLINES_VDIFF
are used.
Harmonic horizontal diffusion of tracers is applied using a diffusivity of 2 m2 s−1. Explicit harmonic horizontal diffusion is applied using a viscosity of 50 m2 s−1 only in the sponge zone of 30 grid points, increasing from zero to a viscosity of 100 m2 s−1 using an arctangent-shaped smooth transition. A harmonic horizontal diffusivity for TKE and GLS is set to 0.1 m2 s−1.
Tracers are mixed along surfaces of constant geopotential, while momentum is mixed along the bottom topography following coordinate surfaces.
Quadratic bottom friction is applied using a drag coefficient of 0.003 where the water depth is greater than 100 m. In shallower regions, the bottom drag coefficient is increased up to 0.009 for the shallowest parts with a water depth of 10 m, with linear transition as a function of water depth.
The bottom drag is limited such that the current cannot reverse sign using the pre-compiler option LIMIT_BSTRESS
in ROMS. Limiting the bottom drag in such fashion is useful to avoid numeric instabilities in very shallow waters during strong storm surges. A full list of all applied pre-compiler options for ROMS, static files such as grid files, and run-time options are provided in a code repository for Barents-2.5 (https://doi.org/10.5281/zenodo.7607191; Röhrs, 2023).
2.2 Sea ice model
The sea ice model used in Barents-2.5 is the Los Alamos sea ice model (CICE) version 5.1 (Hunke et al., 2017). CICE describes both dynamic and thermodynamic processes. In this work, CICE is configured to use elastic–viscous–plastic (EVP) rheology (Hunke and Dukowicz, 1997), which is a compromise for computational cost compared to the elastic–anisotropic rheology (e.g., Heorton et al., 2018). The model solves the evolution of the sea ice state using five ice thickness classes, described by the ice thickness distribution (ITD) function (Thorndike et al., 1975; Hibler, 1980):
where is defined as the fractional area covered by ice in the thickness range at a given time t and location , f is the rate of thermodynamic ice growth, and ψ is a ridging redistribution function. The ice velocity u is calculated from the sea ice momentum equation that accounts for air and water drag, Coriolis force, sea surface tilt, and the divergence of internal ice stress. The evolution of internal stress is described by the EVP rheology, with the ice strength reformulated according to Rothrock (1975) and the advection using the incremental remapping scheme (Lipscomb and Hunke, 2004). The subgrid sea ice deformation and the redistribution of various ice categories follow Rothrock (1975), with a modified expression for the participation function (Lipscomb et al., 2007).
The sea ice thermodynamic growth and melting f is determined by solving the one-dimensional vertical heat balance equations for each ice thickness category and snow. The sea ice heat balance equation is solved with the mushy-layer scheme that also accounts for the evolution of sea ice salinity (Turner et al., 2013). The upper snow and ice boundary is assumed to be in balance with short- and long-wave radiation and the sensible, latent, and conductive heat fluxes when the surface is below freezing point. When the surface temperature reaches the melting point, it is held constant, and the extra heat is used to melt the snow and ice surface. The bottom water–ice interface is assumed to be at thermodynamic balance, such that growing or melting results from the difference between ice conductive heat flux and the under-ice oceanic heat flux. An example of the CICE input parameter file, including all choices of numeric schemes and input parameters, is provided in the aforementioned code repository for Barents-2.5 (Röhrs, 2023).
2.3 Ocean–ice coupling
The ROMS–CICE coupling utilizes the Model Coupling Toolkit (MCT, Larson et al., 2005) for inter-model exchange of state variables and fluxes, as implemented in the METROMS framework (https://github.com/metno/metroms.git, last access: 15 September 2023; Debernard et al., 2021). The coupling was briefly explained in Naughten et al. (2017) and Naughten et al. (2018), and in more detail by Duarte et al. (2022). The underlying philosophy behind the coupling is that surface fluxes are calculated in the component with most information about the surface, utilizing required information from the other component. Finally, the heat, water, and momentum fluxes are passed back to the other component. In METROMS, the coupling is based on the principle of “levitated” ice, so there is no actual exchange of mass between the ocean and the ice. Freshwater and salt fluxes from the ice model are converted to a virtual salt flux before they are used in ocean model. In this “massless” state, the ice does not displace water, and it is only seen by the ocean as a source of surface fluxes responding to the present ocean state. The ice and ocean models are run concurrently, with exchange of information every baroclinic ocean time step. The information used by each model is therefore time-lagged compared with its own state.
2.4 Boundary conditions and river input
The boundary conditions for Barents-2.5 are provided by Topaz version 4, a coupled ocean and sea ice DA system based on the Hybrid Coordinate Ocean Model (HYCOM) ocean model and an EnKF DA scheme. Topaz4 is configured for the North Atlantic Ocean and Arctic Ocean with a horizontal resolution of 12–16 km (Xie et al., 2017). It provides daily averages of temperature, salinity, sea surface elevation, and ocean current velocities for the ocean component. For the sea ice component, it provides daily averages of SIC, sea ice thickness, first-year ice age, snow depth, and ice velocity. The inverse barometric effect due to the local atmospheric pressure is added to the sea surface elevation boundary conditions because Topaz4 does not include the barotropic signal of atmospheric pressure.
The numerical schemes for boundary conditions used in ROMS are given in Table 2, and they differ for the various state variables.
A sponge zone with up to 10-fold-increased horizontal tracer diffusivities and viscosity is implemented within 40 grid points from the boundary.
Nudging of passive tracers towards the boundary fields from Topaz4 is imposed within the sponge zone. The 2D momentum anomalies are radiated out of the model domain using the tangential phase speed of the barotropic signal and using ROMS' RADIATION_2D
option. Details about the implementation of boundary conditions in CICE are given in Duarte et al. (2022).
Point sources for river influx along the coast in the model domain are shown in Fig. 1. At each of the 318 river locations, daily values for temperature, salinity, and mass flux are specified. Climatological values for rivers in the Svalbard archipelago are used, while river data on mainland Norway originate from daily estimates provided by the Norwegian Water Resources and Energy Directorate.
Tidal forcing is provided as amplitudes and phases of the 10 major tidal constituents in the model domain (Table 3). These are obtained from the TPXO global inverse barotropic model (Egbert and Erofeeva, 2002) and imposed on velocities and free surface elevation. The tidal signal is also added to velocities and surface elevation during the processing of boundary data.
2.5 Atmospheric forcing
Surface forcing in Barents-2.5 is provided by ensemble forecasts from the Integrated Forecast System (IFS) at European Centre for Medium Weather Forecasts, hereafter referred to as ECMWF-ENS, which has a horizontal resolution of about 18 km. Hourly surface fields of wind speed, air temperature, humidity, rainfall, and cloud cover are used by the bulk flux module of ROMS to calculate surface fluxes as upper-boundary condition in the ocean. CICE uses air temperature, humidity, density, precipitation rate, and winds to calculate surface stress, heat fluxes, and snow aggregation on sea ice.
Barents-2.5 is configured as an EPS with 24 members, wherein 20 members are forced with random members from ECMWF-ENS and four members are forced by MET-AA (Müller et al., 2017). MET-AA is nested into the IFS high-resolution forecasts.
The model state in Barents-2.5 is constrained by an EnKF DA scheme (Evensen, 1994; Burgers et al., 1998; Houtekamer and Mitchell, 1998; Evensen, 2003). Central in this scheme are the model errors, estimated by the spread of the EPS, and the observation errors. A new analysis is obtained on a daily basis, which aims to reduce the errors in the model state compared to the available observations. The assimilated variables are SST, SIC, and in situ hydrography, i.e., salinity and temperature observations (Table 4).
3.1 The deterministic ensemble Kalman filter
The EnKF is a sequential ensemble-based assimilation method that has been used for many geophysical applications (Houtekamer and Zhang, 2016). The standard analysis equation solved by the EnKF is given by
where is the analysis state vector representing the updated variables after assimilation, is the model background state, and is the observation vector. N is the number of ensemble members, n is the number of variables multiplied by the number of spatial grid points in our model, m is the total number of observations, is the observation covariance matrix, and is the observation operator. The Kalman gain K, defined as in Eq. (2), corresponds to the weight given to the observations and current background state. The key property of the EnKF is that the background error covariance matrix , approximating the model uncertainty and covariance between variables and locations, is estimated as the flow-dependent covariance of the ensemble of background states as
In the equation above, the overbars denote the ensemble average operator.
In this study, the deterministic version of the EnKF (Sakov and Oke, 2008a) is applied. The same DA scheme was also applied in a preceding study with Barents-2.5 assimilating only sea ice variables (Fritzner et al., 2019, 2020). The deterministic ensemble Kalman filter (DEnKF) does not require perturbation of observations to maintain ensemble spread as is required by the original formulation of the EnKF. For the stochastic EnKF, perturbations are added to the ensemble equivalence of the observation, accounting for non-symmetric observation errors (van Leeuwen, 2020). Perturbing observations introduces additional sampling error in the analysis, which for applications with few ensemble members might be a significant contribution (Sakov and Oke, 2008a; Whitaker and Hamill, 2002). In the DEnKF, the assumption of a small KH term leads to a simplified ensemble transform matrix (ETM) used to update the ensemble anomalies. The left ETM (Sakov and Oke, 2008b) is expanded into a Taylor series with only the two first terms retained, resulting in , where Aa and Ab are the analysis and background ensemble anomalies, respectively. The DEnKF analysis scheme consists of four main steps. First, the background ensemble mean is computed as and the background ensemble anomalies as , for and each ensemble model state of size n. Following this, the analysis is computed using Eq. (2). The analyzed ensemble anomalies are computed using the ETM TL as previously defined. Finally, the analyzed ensemble is provided by . More details on the theoretical and technical aspects of the DEnKF can be found in Sakov and Oke (2008a) as well as in the EnKF-C user manual (Sakov, 2014).
3.2 Implementation of the data assimilation method
The implementation of the DEnKF in Barents-2.5 is accomplished using the EnKF-C software package. The DEnKF is executed offline, i.e., in between daily forecast cycles, thereby providing updated initial conditions xa to ROMS and CICE at 00:00 UTC each day. Observations y taken during the previous 24 h are synchronously evaluated and compared with the model state xb at 00:00 UTC, hence assuming that observed variables retain validity for 24 h. The limitations of these assumptions are discussed in Sect. 8.2.
In situ temperature and salinity are directly mapped to the respective model state variables. SST observations are compared to the upper-layer model temperature. We note that surface skin temperature may differ from the upper-layer temperature and comment on this simplification in Sect. 8.2.
While CICE models the sea ice cover using five ice thickness classes with SIC for each class, observations of SIC are compared with aggregated SIC from all classes, wherein we ensure that the analysis increments do not exceed the lower and upper bounds of aggregated SIC, e.g., 0 < SIC < 1, by capping the model increments after the EnKF step. While the EnKF formally requires a Gaussian distribution of variables across the ensemble, SIC distributions deviate from Gaussian distributions due to the lower and upper bounds. In Sect. 8.2, the ensemble distribution of SIC at various model locations is evaluated.
3.3 Configuration of EnKF-C
The EnKF-C software package allows configuration of the DA scheme in terms of an exaggeration parameter R, a localization radius rloc for each observation type (Table 4), a global moderation factor K=1.5, and an inflation factor. The latter applies a scaling of the model increments; when set above 1 the ensemble anomalies are inflated. This inflation factor is set to 1.05 (5 % inflation) for all model variables except for SIC using 1.1 (10 % inflation); a higher inflation factor is required for SIC compared to other variables because of its lower ensemble spread, which is particularly needed around the ice edge area.
The impact of observations is moderated through the observation errors, the exaggeration factor R, and the moderation factor K. The used in situ, SST, and SIC observations provide observation errors along with observed values. R is tuned to balance the effectiveness of analysis increments while maintaining sufficient ensemble spread in the model. K regulates the moderation of the observation impact by smoothly increasing the observation error as a function of the innovation magnitude. For large innovations, K plays an important role in the increase in the observation error; for small innovations, observations errors are mostly kept unchanged. For details on the observation error moderation we refer to Sakov and Oke (2008a) and the user manual for EnKF-C (Sakov, 2014).
The localization radius rloc in EnKF-C allows us to perform the DA analysis based on a horizontal subset of the full model domain, i.e., limiting the covariance matrices to non-zero entries only within the localization area. In essence, this allows us to use the EnKF method for a system with large degrees of freedom with a relatively low number of ensemble members. The EnKF-C software only provides a horizontal localization, and hence no vertical localization is applied.
Observations used for DA in Barents-2.5 are in situ temperature and salinity, SST from satellite, and passive microwave SIC. For validation, the same observations are used in addition to subjective ice charts, passive microwave ice drift vectors, and radial currents from a high-frequency (HF) radar station at the coast of northern Norway. A subset of in situ temperature and salinity data that have not been assimilated are presented separately during the validation of the model results. Access paths for all used data are given in the “Code and Data Availability” section.
4.1 In situ temperature and salinity
In situ observations of salinity and temperature are routinely collected from the in situ thematic assembly center of the Copernicus Marine Environment Monitoring Service (CMEMS) (http://marine.copernicus.eu, last access: 15 September 2023). The data set consists of observations from a variety of platforms, such as drifting buoys, profiling floats, moorings, conductivity–temperature–depth (CTD) casts, and thermosalinographic data from monitoring cruises and the Ships of Opportunity Program. As an illustration of the quantity of this in situ data within the Barents-2.5 domain, Fig. 2 shows the spatial location of this data for a specific date in 2022. Additional in situ observations are retrieved from the Global Telecommunication System (GTS) and from MET's observation database (http://frost.met.no, last access: 15 September 2023). The observations are run through basic quality control procedures prior to DA, and duplicate observations between different sources are removed.
4.2 Sea surface temperature
Level 2P satellite SST from the infrared sensors AVHRR (MetOp satellites), VIIRS (Suomi NPP and NOAA-20 satellites), and SLSTR (Sentinel-3 mission) are used for DA. A bias correction scheme is applied to ensure consistency between the different SST products. The SLSTR measurements are used as a reference because this instrument uses a dual-view technique that gives more accurate SST measurements. The bias correction scheme is described in more detail in Iversen et al. (2023).
All in situ and SST observations are processed using the Python package pyromsobs (https://github.com/metno/pyromsobs, last access: 15 September 2023). When more than one observation of a given state variable is available within the same grid cell at the same time, they are replaced with a so-called super-observation, which is a mean of the available observations.
4.3 Sea ice concentration
Observations of SIC are computed from microwave brightness temperature observations from the Advanced Microwave Scanning Radiometer-2 (AMSR2) sensor on board the Global Change Observation Mission – Water “Shizuku” (GCOM-W1) satellite. The SIC algorithm SIRANO (Rusin et al., 2023) is an evolution of the algorithm described in Lavergne et al. (2019), which involves dynamic tuning of the algorithm coefficients and atmospheric correction of the brightness temperatures using a radiative transfer model. Two SIC fields are computed independently and then combined before they are assimilated: a low-resolution, low-uncertainty SIC from the 18.7 and 36.5 GHz imagery channels and a higher-resolution, higher-uncertainty SIC from the 89.0 GHz imagery channels. The two SICs are then combined using a pan-sharpening method to preserve the higher-resolution and low-noise characteristics from each. Because the nominal spatial resolution of the 89.0 GHz imagery of AMSR2 is 3×5 km, the resulting SIC fields have a spatial resolution slightly coarser than the 2.5 km grid spacing of the model.
In the operational setup, SICs are computed for each incoming satellite orbit (every 100 min) and then combined and projected to cover the geographic domain of the model in 12-hourly fields, including uncertainties. Because of the orbit of the GCOM-W1 satellite, the domain is observed in the period from 10:00 UTC of the previous day to 02:00 UTC in the morning. Data from this period are used for assimilation at 00:00 UTC model time. The observed SIC is compared to the model SIC accumulated over all thickness classes.
4.4 Subjective ice charts
The ice charts are based on a manual production by ice analysts at MET, who define the ice edge and ice classes. Subjective ice charts are produced daily from Monday to Friday and provided with a 1 km horizontal resolution, based on Sentinel-1A/B synthetic aperture radar (SAR) images taken in the morning passes (Dinessen and Hackett, 2011; WMO, 2017). Other satellite sources (optical and passive microwave) may be used when no SAR scenes are available. The ice charts distinguish between six ice classes that are defined by the following thresholds in SIC: fast ice (SIC = 1.0), very close drift ice (0.9 < SIC < 1.0), close drift ice (0.7 < SIC < 0.9), open drift ice (0.4 < SIC < 0.7), very open drift ice (0.1 < SIC < 0.4), and open water (0.0 < SIC < 0.1). They provide a higher-resolution assessment of ice conditions that is independent from the passive microwave data and that exhibits different systematic errors.
4.5 Passive microwave ice drift vectors
The sea ice drift is monitored using an analysis of subsequent passive microwave images. Data from SSMIS, ASCAT and AMSR2 sensors are processed using the continuous maximum cross correlation method (Lavergne et al., 2010) and provided in near-real time (NRT) by the Ocean and Sea Ice Satellite Application Facility (OSI SAF). The OSI SAF ice drift product represents 2 d averages of ice drift on 62.5 km resolution. Model data from Barents-2.5 is interpolated to the same grid as the observation data and time-averaged over the same time window for comparison.
4.6 High-frequency radar surface currents
We use data from a CODAR SeaSonde HF radar operated by MET at the coast of northern Norway on the Fruholmen island (71.09∘ N, 23.98∘ E) to validate the statistical skill of surface currents from Barents-2.5. The Fruholmen HF radar operates at a central frequency of 4.453 MHz and can reach distances up to 180 km with a range resolution of approximately 5 km. We compared hourly observed HF radar radial current components with modeled radial current components from the Barents-2.5 for the period November–December 2021.
Barents-2.5 is executed four times daily, spreading the 24 ensemble members into four sets of six members – as visualized in Fig. 3. While a new analysis by the EnKF is only computed at 00:00 UTC, each bulletin time benefits from the updated NWP forecasts. In practice, the 00:00 UTC model run is executed with a 6 h real-time delay to allow for enough time for processing incoming observations. The atmospheric forcing from MET-AA is available with 4 h delay. The 06:00, 12:00, and 18:00 UTC model runs are executed with a 4 h delay as these only need to wait for the updated atmospheric forecast. The first member in each set is forced by the most recent MET-AA forecast, and the remaining members are forced by ECMWF-ENS.
5.1 Ensemble prediction system
At each of the four daily bulletin times, six ensemble members are executed with a 66 h forecast range. Each member is initialized by the state of the same member from the previous day, with individual analysis increments from the EnKF DA scheme, resulting in 24 unique members. The forecast runs after 06:00, 12:00, and 18:00 UTC require a spin-up run from the analysis time at 00:00 UTC.
A conscious choice for the design of the ensemble forecast system is to initialize the ensemble runs from the model states of previous-day forecasts, instead of using perturbed states of the identical analysis, which is more common in NWP. The latter approach yields an estimate of the uncertainty when the initial condition is well constrained by the observing network and most of the uncertainty arises internally within the forecast cycle.
The Barents-2.5 EPS, however, retains the state of previous forecast runs in order to preserve sufficient ensemble spread. The EnKF moderates the ensemble spread. Such an approach is beneficial because the initial state of the ocean circulation is poorly observed. At the same time, the mesoscale circulation exhibits features with timescales larger than the assimilation window and forecast range. Therefore, a small perturbation of the initial state would not yield ensemble spread in the forecast that covers the actual uncertainty in the mesoscale circulation.
To represent the actual forecast uncertainties in the circulation field, we initialize the EPS forecast with largely varying initial conditions in the mesoscale circulation. At the same time, the EnKF reduces the ensemble spread for variables that are observed well, i.e., SST and SIC. The ensemble spread for these variables is evaluated in Sect. 7.4.
5.2 Operationalization
Barents-2.5 has been operational in its current setup since September 2021, tagged as version 2.0. The model is implemented at MET and part of Norway's national ocean and weather forecast service. Timely triggering of the model components and pre-processing steps for observation data, forcing, and boundary conditions are managed through ECMWF's scheduling software package ecFlow (https://github.com/ecmwf/ecflow, last access: 29 January 2023). The following backup measures are in place to secure a reliable operation of the Barents-2.5 setup to deal with exceptions from normal operation.
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Computing and data storage facilities are set up in two physical locations to mitigate the risk of hardware failures. All model pre- and post-processing is set up in both locations with continuous synchronization.
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For pre-processing of forcing and boundary data, alternative data sources have been set up, e.g., older forecast cycles from the ECMWF-ENS atmospheric forcing and the Topaz4 model can be accessed to produce necessary input data.
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Initial states can be obtained from the previous 2 d forecast cycles of Barents-2.5 in case of lost forecast cycles during temporary outages.
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The forecast runs can be executed without analysis increments by the EnKF.
Such exceptions are dealt with automatically through triggering in ecFlow. If new types of technical errors occur, they are added to the scheduling system to deal with the same problems in the future. Typical failures have been hardware malfunctioning, broken input data chains, or delays in the observation data chain due to high loads of satellite data during cloud-free conditions. While the first three types of exceptions rarely occur, a failure of the EnKF update is more common. This may occur either due to unexpected deviations during observation data processing or due to poorly performing statistic representations in the EnKF algorithm, e.g., as a result of insufficient ensemble spread or model bias. In such cases, which occur about twice a month, the model continues without DA increments.
6.1 Validation of sea surface temperature
The upper model layer temperature is validated against SST measurements from the SLSTR sensor of the Sentinel-3A/B satellites using its NRT data product. Only SST data with the best quality flag are used. Multiple swaths in the model domain may be available each day, but only cloud-free conditions provide SLSTR SST measurements. A composite map of the difference between model values and SST observations within a 24 h period is shown in Fig. 4. As the coverage of SST observations varies, the validation of SST is not uniform throughout the day, season, or location, generally providing more data during spring and summer and during daytime.
In the validation setup, SST swaths are combined into 6 h fields centered around 00:00, 06:00, 12:00, and 18:00 UTC. Since we compare gridded model data with observations at point locations, we upscale the observations to the model resolution by averaging all observations within a grid cell over the 6 h interval. The model domain is divided into areas as shown in Fig. 5, which are the same regions as used in validation of the Arctic CMEMS product. These regions exhibit different water depths, water masses, and ice conditions. We compute the root-mean-square error (RMSE) and mean error (ME) from the available observations on a weekly basis to gather enough data for representable statistics. The metrics are computed for the separate regions and, in addition, an area-weighted mean of all areas is calculated.
The area-weighted mean is also calculated as a function of model lead time, ranging from the 0 h forecast up to the 48 h forecast, with an interval of 6 h. For comparison, we calculate an RMSE and ME of the persistence forecast, which is the difference between a past observation with a later observation for the same forecast intervals. By definition, the persistence forecast yields zero error for the 0 h forecast. Furthermore, we compute the sum of the observation at the forecast reference time and the change in SST between the forecast reference time and the forecast lead time, which we refer to as the model trend. The model trend provides a forecast without an initial error from the model, focusing on the model's ability to predict changes in SST. Persistence and model trend may only be calculated when observation locations of the model analysis time overlap with future observation locations for the forecast lead time.
A rank histogram (Hamill, 2001) is calculated from the modeled ensemble SSTs. The objective is to assess whether the spread provided by the EPS matches the actual uncertainty in the forecast system compared to the SST observations. For a given SST observation, the rank of the observation in the model ensemble is identified by finding the number of members with a lower SST value. Hence, the rank ranges from 1 to N+1, where N=24 is the number of ensemble members. The rank N+1 is assigned if the observation value is larger than all ensemble values. In an ideal ensemble that reflects the uncertainty in the forecast system, each rank number has equal probability of occurrence. Under-dispersive ensembles are identified by accumulation of observations in the lowest and highest ranks, meaning that the model values rarely yield as high or low values as those seen in observations. A biased model would yield a skewed histogram.
6.2 Validation of sea ice concentration
Model SIC is validated against SIRANO SIC, which is used for assimilation, and (in addition) against the subjective ice charts, which are not part of the DA system, in order to provide an independent assessment of the model performance. We validate SIC within an area around the ice edge. After detecting the ice edge (the transition zone between open water and very open drift ice) based on the observed SIC field, we include a zone by a footprint of 150 km around the edge. This method is used to avoid a situation where the total ice extent does not drive the RMSE and ME metrics. At the same time, areas of open water along the sea ice edge are included in the validation. Since model results are continuous values, while ice charts are based on different sea ice classifications (as mentioned in Sect. 4.4), we map the model SIC into the same classes as the ice charts. In order to do an accurate comparison between all available data in the validation, the same classification is used on the SIRANO product. Daily metrics of ME and RMSE are computed for the model analysis, 24 h forecast lead time, and 48 h lead time.
An assessment of the ensemble's ability to describe uncertainty in SIC is obtained by means of the reliability to describe probabilities for exceeding certain SIC thresholds (e.g., Saetra et al., 2004; Bröcker and Smith, 2007). The reliability diagram fulfills a similar purpose to the rank histogram for SST but is more suitable for non-Gaussian distributed variables. The method consists of the following steps: (i) a binary event is defined by checking whether SIC is above or below a certain threshold value, (ii) the forecast probability of this event occurring in the model ensemble is assessed for each grid point and time step, and (iii) forecast probability intervals are mapped onto how often this event occurs in the observations for the same cases.
In a highly reliable prediction system, the observed frequency matches forecast probability for each probability interval, resulting in a straight diagonal line for the reliability diagram that plots observed frequency against model probability. Deviations from the diagonal are due to (i) imperfect ensemble spread and (ii) model biases. An ensemble with insufficient spread will have higher model probabilities for low observed frequencies and lower model probabilities for high observed frequencies, resulting in a reversed S-shaped reliability diagram. An S-shape indicates excessive model spread. A biased model exhibits too low or too high probabilities for all observation frequencies, resulting in an upward- or downward-shifted curve in the reliability diagram (e.g., Bröcker and Smith, 2007).
The method allows for direct comparison with the reported ice classes that are commonly used in ice charting, and we use the same SIC intervals as defined in Sect. 4.4 for calculating the reliability of the ensemble. For validation purposes, open-water and ice-free classes are merged into one SIC class (0 < SIC < 0.1) because they are indistinguishable in the SIRANO SIC product.
The general performance of Barents-2.5 is evaluated (i) by comparison with independent observations not used for DA, (ii) in terms of validation metrics close to analysis time (0–24 h), (iii) in terms of skill in the forecast range up to 66 h, and (iv) in terms of its ensemble spread. The spread controls the EnKF DA scheme and is also used to estimate the forecast uncertainty.
7.1 Validation against independent observations
Observations that were not assimilated during the model analysis cycles include a subset of the available in situ temperature and salinity data, subjective ice charts, ice drift vectors, and radial HF radar surface currents.
The performance of Barents-2.5 in representing the hydrography in the model domain is evaluated in Fig. 6 by means of temperature and salinity, i.e., a TS diagram. The diagram shows the organization of water masses. In general, the model captures the variability in water masses for the presented data. Errors in temperature are larger for the colder water masses, particularly at depths around 500–1000 m. We also see that the warmer waters above 10 ∘C are slightly too fresh.
The quality of ocean surface currents in the model is assessed by comparison with radial currents observed by a HF radar antenna at the coast of northern Norway (Fig. 7). The histogram of radial current speed (Fig. 7a) shows that the model values for radial current exhibit a similar distribution to observations. However, the most extreme velocities are underestimated, while low velocities occur too often in the model. The 2D histogram of model speed versus observed speed (Fig. 7b) shows that the model has limited capabilities in terms of predictive skill for surface currents at the observed scale, but they are correlated. In the same figure, the quantile–quantile graph is indicating that the model achieves good statistical skill for the radial surface current speeds.
The sea ice component is validated by the comparison of model SIC with subjective ice charts (Fig. 8a) and model sea ice velocities with OSI SAF sea ice drift (Fig. 9). The performance in terms of SIC largely depends on the availability of the DA system. Periods without DA result in larger errors for SIC, which is further discussed below. Sea ice drift generally matches the direction of the observed drift (Fig. 9b), which confirms the description of sea ice dynamics in response to ocean currents and winds. However, we note that the ice moves generally too fast in the model compared with the OSI SAF ice drift vectors (Fig. 9a).
7.2 Validation of model analysis
Validation of model SST analysis using SST from Sentinel-3 SLSTR swaths is displayed in Fig. 10, separately for each region, for the course of 1 year. Only SST observations from the Sentinel-3 satellite have been used in order to avoid bias differences in various sensor platforms in the validation. Model errors in SST peak during summer months, which is the time period with the most rapid changes in SST and in skin temperature driven by short-wave radiation.
A comparison between observed SIC (Sect. 4.3) with model values is shown in Fig. 11 for an exemplary day. A comparison for the full model domain is possible during most days given the coverage by the AMSR2 swaths. Daily validation metrics (RMSE and ME) for SIC in forecast ranges of 0–18, 24–42, and 48–66 h are computed during the course of a year and shown in Fig. 8.
As a second reference for validation of SIC, a comparison with subjective ice charts is provided in Fig. 8a. The largest anomalies in the model errors for SIC are related to the model spin-up and failures in the DA scheme. During the beginning of the year in consideration, deviations occurred more frequently, and during the second half of the displayed period, very few technical failures occurred in the assimilation scheme, maintaining low model error. Likewise, the model performance deteriorates within a few days when no DA is applied for subsequent cycles, as seen for two periods during March and May 2022 in Fig. 8. A positive SIC bias is present in the model during periods without DA, possibly as a result of too fast ice drift velocities resulting in the ice cover extending into open-water areas.
7.3 Forecast skill
Predictive skill in the model forecast is assessed by computing model validation metrics as a function of forecast lead time; e.g., the validation metrics can be obtained by comparison with a value of older forecast cycles. For SIC, we see that the model error is larger for higher lead times, indicating skill in the model analysis (see Fig. 8). In the periods with no DA, the model error grows rapidly and is distinguished in various lead times. Hence, we conclude that skill in sea ice forecast is provided by assimilation of SIC.
For SST in Fig. 12, we provide a mapping of model error as a function of model lead time as averages over periods of 3 months. Time averaging of the model errors for many forecast cycles is necessary in this case because individual days rely on the availability of sparse SST observations, covering different regions from day to day, as shown for one particular day in Fig. 4.
Comparing SST validation metrics with the persistence forecast as a reference (e.g., Mittermaier, 2008), we describe skill of a model system in the following two ways.
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The model forecast is considered skillful for lead times where the error in the model forecast is lower than the reference forecast.
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The model analysis is skillful compared to the forecast if the model error grows with lead time.
Skill in model SST is present for forecast ranges beyond 12 h in spring and summer, extending beyond the forecast range of 66 h (Fig. 12b and c). For the autumn and winter seasons, we see that the model error is on par with the errors in the persistence forecasts beyond 12 h lead time (Fig. 12a and d). In general, combining the model trend with past observations performs better at intermediate lead times, but the valuable information content in observations vanishes for longer lead times. In this range, dynamical changes that are resolved by the model provide superior value in predicting the ocean state conditions.
Skill in SIC analysis is concluded from the fact that the short forecast range (0–24 h) yields lower errors than the longer range forecasts. However, the modeled SIC field exhibits large systematic errors in terms of ME and RMSE (Fig. 8). In particular, SIC increases rapidly in periods without DA. This uncertainty is also present in the difference between the two observation types used for validation, i.e., passive microwave SIC and ice charts. Some forecast cycles show skill compared to the persistence forecast (not shown), but most cycles do not provide a better forecast than using the last observation as reference. Model skill is present in situations with rapid movements in the sea ice edge that are driven by strong winds. Refreezing of the sea ice cover in the winter is not as skillful in the model predictions as summer melting and dynamic response to wind forcing.
7.4 Ensemble spread
The ensemble of model states is an integral part of the EnKF DA scheme: it provides model error covariances to weigh observational impact with model state in order to compute model increments in each analysis cycle through Eq. (3). The objective of the ensemble spread is to reflect the actual uncertainty in the model, which is possible to assess by comparing observations with the ensemble by means of a rank histogram and reliability (see Sect. 6).
The rank histogram for SST is shown in Fig. 13. We see a fair ensemble spread for this variable across the center part (i.e., a flat distribution in the rank histogram) but note a skewed offset that reflects a negative overall bias in model SST. We also acknowledge that the most extreme SSTs are not represented in the model, indicated by excessive lowest and highest ranks.
In Fig. 14, the spread in SIC is evaluated using a reliability diagram. We assess the reliability of forecast probabilities for occurrences of open water up to a given ice class (Fig. 14a). The opposite approach assesses forecast probabilities of high SICs down to a certain ice class minimum (Fig. 14b). Both figures indicate an offset that represents a positive SIC bias of the model, e.g., forecast probabilities for SIC tend to be too low from the ensemble. In addition, the reversed S shape in both figures indicates too low ensemble spread. Parts (but not all) of the insufficient ensemble spread seen in the reliability diagram could be attributed to observation errors, as discussed in Saetra et al. (2004). The highest forecast probabilities of open water, e.g., 80 % chance for the occurrence of 0 < SIC < 0.4, are nevertheless addressed fairly well by the model. In addition, low chances of occurrences for high SIC, e.g., in the range 0.4 < SIC < 1, are predicted accurately by the model. Addressing the lack of sufficient EPS spread using forecast probabilities in the decision-making process could benefit from scaling as a post-processing step to match the observed occurrence frequencies (e.g., Chang et al., 2015).
7.5 Analysis increments
The EnKF provides new initial states for each ensemble member. For each state variable, the analysis increment is the difference between the new model analysis provided by the EnKF and the model background, i.e., the forecast of the previous cycle. The objective of the analysis increments provided by the EnKF is to reduce deviations from the observation while maintaining ensemble spread to reflect uncertainty. In this section, we show some characteristics of the analysis increments for an exemplary day in order to illustrate the functioning of the DA scheme. Similar model increments are calculated for the analysis in each forecast cycle, applied daily at 00:00 UTC.
Figure 15 shows forecast increments of SST, surface salinity, and SIC on 15 December 2022. The differences result from the observations that were available during the preceding 24 h. The most substantial increments in model hydrography occur in regions where both SST and in situ observations are present (see Fig. 2) and spread in SST is large (Fig. 15d). In situ observations provide rather localized increments in surface fields. SIC increments are most pronounced in the marginal ice zone where the ensemble has large spread (Fig. 15d).
To confirm that the DA increments move the model state towards the observed ocean state, we present a 2D histogram of observed versus model values for SST and SIC in Fig. 16. The correlation between modeled and observed SST is slightly improved for the analysis (Fig. 16b) compared to the background (Fig. 16a). In the case of SIC, which generally has larger errors than SST, we see more radical updates to the model state in each cycle.
Ensemble spread – which is the standard deviation for each state variable computed from the ensemble – is an essential characteristic of the EPS. Sufficient ensemble spread is required by the EnKF to yield appropriate model increments. Spread increments, i.e., the difference between ensemble spread before and after DA, is generally negative, and the spread again grows during the model forecast.
The spread for SST, salinity, and SIC during one analysis cycle is shown in Fig. 15d–f. Spread in SST and surface salinity is present throughout the model domain, but it may be pronounced in certain areas, e.g., below the sea ice cover. This indicates pronounced uncertainty in the model state. For example, the present hydrography below the sea ice cover is not well known, and the model is expected to exhibit larger errors in these areas.
The ensemble spread is reduced in each analysis such that model state variables converge towards the observations. The spread increment is shown in Fig. 15g–i. For SST, we see a substantial reduction in spread that is associated with coverage by SST observations during that analysis cycle. All shown variables experience a spread reduction in the marginal ice zone, owing to the impact of SIC observations in this area. There is little modification to ensemble spread below the dense sea ice cover and in other places where no observations are present during the analysis cycle.
Model state variables that are not observed are adjusted by the EnKF along the observed variables based on the covariance matrices between each variable. This includes the 3D current field, surface elevation, and all ice state variables. Surface current increments are on the order of 0.05 m s−1, and sea surface elevation increments are on the order of 0.01 m and mostly associated with alterations in the density field due to modifications in temperature fields.
The Barents-2.5 ocean and sea ice forecast model provides daily short-term predictions with a forecast range up to 66 h. This operational model suite has been built from various components and code repositories: the dynamic ocean component is based on ROMS v3.7 (Shchepetkin and McWilliams, 2005); the dynamic sea ice component is CICE 5.1 (Hunke et al., 2017); model coupling is achieved by MCT (Larson et al., 2005); DA is handled through EnKF-C; and operational scheduling is implemented in ecFlow, including the maintenance of the ensemble. In addition, Barents-2.5 involves static data, such as the GEBCO bathymetry and TPXO tidal constituents, and a constantly updated stream of forcing data. The atmospheric forcing is provided by ECWMF-ENS and MET-AA, lateral boundary conditions are provided by Topaz4, and river influx is generated from climatology and data from the Norwegian Water Resources and Energy Directorate. Finally, observations of SIC, SST, and in situ hydrography are assimilated. All components combined constitute the Barents-2.5 model, and the model capabilities and the presented validation are a consequence of the interactions between all of those components.
8.1 Forecast capabilities
Forecast skill and validation metrics have been presented for SST and SIC. These are central variables describing the state of ocean and sea ice conditions that are frequently observed by satellite imagery. The forecast skill and ensemble spread for surface currents are the subject of a separate investigation in Idžanović et al. (2023).
Barents-2.5 shows predictive skill in temperature forecasts (Fig. 12) compared to the persistence reference by Sentinel-3 SST imagery. Forecast skill is better during spring and summer when SST observations are more abundant and solar radiation drives rapid changes in SST. Mismatches in the modeled ice cover dominate the SST errors in the marginal ice zone; therefore, all regions that contain ice have been excluded in the consideration for SST validation. SST fields are directly needed in forecast applications, e.g., to warn about icing on ships (Samuelsen, 2018) and to provide surface forcing in NWP models (e.g., Müller et al., 2017).
Skillful SST predictions in the forecast range are a consequence from the model's capability to represent realistic air–sea fluxes, vertical mixing, and water mass transport. A requirement for low errors at the analysis time is the constraint by the observations. Without DA, the model state tends to drift away from the real ocean state due to the compounding of systematic model errors. Such model state drift is particularly evident for SIC during the periods when no DA is applied (Fig. 8) due to a systematic model bias in SIC (Figs. 8, 11). Due to varying SST observation availability, SST validation is not comparable between daily cycles, but similar drift may occur. For SIC, we see that the model state loses skill within a few days without DA. Deterioration of model skill within a few days is generally expected when DA is halted in regional ocean models (e.g., Moore et al., 2011).
Validation of SST indicates larger errors during summer (Fig. 10) but also a higher skill compared to the persistence forecast (Fig. 12). Variability in SST during the summer is generally higher, resulting from the availability of direct sunlight to heat up the surface. Most of the model region is at high latitudes with midnight sun. The diurnal effect may dominate in early spring, while in the summer the solar heating is largely controlled by cloud cover. Skillful SST predictions by the ocean model thus require accurate cloud cover and atmospheric radiative fluxes, highlighting the role of the used NWP model. Due to the stronger solar forcing, SST in summer changes more rapidly than during the winter season. Barents-2.5 is forced by hourly fields from MET-AA, giving SST forecasts an advantage over the persistence forecast during spring and summer (Fig. 12).
While errors in SIC are variable throughout the year (Fig. 8), we see a persistent advantage of short lead times compared to longer lead times. The model is hence skillful, but the remaining systematic model errors make it difficult to use predicted SIC fields directly in forecasting applications. Use of ice charts based on remote sensing alongside model forecasts remains necessary. Predictions of ice drift in ocean–ice forecast models have been shown to be skillful (Schweiger and Zhang, 2015) as a result of the skillful NWP and realistic description of sea ice rheology. The freezing and melting along the ice edge, however, depends on a number of thermodynamic processes (Fichefet and Maqueda, 1997), and these are critically sensitive to water mass properties and higher-resolution details in the atmospheric forcing (Kusahara et al., 2017).
8.2 Configuration of the ensemble and data assimilation schemes
The information provided by the EPS is useful in two ways. Firstly, ensemble spread guides the DA scheme. Secondly, the ensemble allows users to assess model uncertainty in the forecast range. Spread in SST is satisfactory (Fig. 13), with only slight underestimation of extremes. Spread in SIC is too low (Fig. 14), possibly as a result of a positive SIC bias, but the model shows a capability to predict the uncertainty in ice forecasts.
Difficulties in representing SIC spread in similar EnKF setups have previously been reported by Lisæter et al. (2003). As a bounded variable between 0 and 1, SIC is generally non-Gaussian, but the EnKF formally requires Gaussian distributed variables and observation errors. Figure 17 shows some examples of local SIC distributions across the ensemble. We identify that SIC may be approximated by Gaussian statistics for intermediate SIC, but close to areas of dense ice (SIC →1) and open water (0 ← SIC) we notice that SIC exhibits skewed and bounded distributions, which are occasionally bimodal. We hence expect a weakness in the applied DA method in areas close to open water or very dense ice. Methods to address these issues are provided by, e.g., Bishop (2016) and Anderson (2022). Use of bimodally distributed variables in DA filters have been discussed in Chan et al. (2023). These techniques are most likely to be encompassed in future model versions of Barents-2.5.
The initialization of the ensemble in each forecast cycle is based on an approach where the individual members retain their identity. DA increments are provided individually for each member, and the spread is reduced during each analysis. The major differences between the ensemble members result from diverging history of the members. Each member is also forced by different atmosphere ensemble members, but the most important spread in the mesoscale ocean circulation stems from the history of the EPS.
The ensemble spread is modified through (i) a reduction by EnKF analysis step, (ii) an increase during the model integration, and (iii) an inflation of the analysis increments during the DA analysis. The inflation allows us to control the ensemble spread and avoid collapse. A moderate inflation factor is used for most variables, and a slightly higher factor is used for SIC, which suffers from a low spread. While higher inflation has the potential to further improve the spread in SIC, we also experience that large inflation factors lead to multivariate artifacts in the model analysis. Anderson (2009) propose a spatially and temporally varying adaptive inflation algorithm to allow for a larger covariance inflation, leading to a more efficient increase in ensemble spread. El Gharamti (2018) iterates on this method, improving the stability of the adaptive inflation to the occurrence of negative and physically intolerable inflation.
The EPS and EnKF system requires spin-up time due to the system's dependence on its own history of ensemble spread. Initialization of the EPS took place in March 2021, and the EnKF was activated in September 2021. About 3 months were required for a sufficient spin-up of the full DA system.
The choice of a 24 h analysis cycle is based on the practical need to issue daily forecasts. The assimilation cycle length is a compromise between the amount of observations, the ensemble's ability to maintain spread, and the need for rapid update cycles. The number of ensemble members is limited by computational resources. The EnKF DA scheme relies on a statistical description of possible model states compared to the available observations, and therefore the ensemble needs to cover the degrees of freedom for the ocean state within a localization radius (Table 4), which is maintained in the current setup using 24 ensemble members. Only horizontal localization is applied here, but we note that the system could benefit from vertical localization as well.
Observations are directly mapped to model state variables in Barents-2.5, which is straightforward for in situ temperature and salinity. For SIC, a mapping to aggregated SIC is needed because CICE operates with SIC for separate thickness classes. For SST, the upper model layer temperature is selected to represent the surface temperature, which is a valid assumption during moderate or high winds, cloudy skies, or low solar radiation, conditions that are common in Arctic waters. During conditions with low wind and strong solar radiation, the skin temperature retrieved by the satellite sensor differs from the temperature of the upper model layer (Price et al., 1986). Hence. we expect discrepancies primarily during spring and summer months, affecting both assimilation and validation routines, which motivates ongoing work on asynchronous SST assimilation using observation operators to describe the skin temperature (e.g., Zeng and Beljaars, 2005).
The current DA setup in Barents-2.5 evaluates all observations at analysis time 00:00 UTC. For slowly varying model state parameters, such as the hydrography at depth, this assumption bears limited consequences as long as the model error is larger than the diurnal variability in the observed parameter. Ongoing development work on Barents-2.5 focuses on assimilation of SIC and SST observations at the observation time, showing positive improvements for modeling SIC (Durán Moro et al., 2023).
8.3 Integration with contingency models
The Barents-2.5 model forecasts are routinely used in trajectory models that serve as decision support tools in emergency response situations. The OpenDrift framework (Dagestad et al., 2018) encompasses oil spill transport, iceberg drift forecasts, and leeway drift (e.g., person in water, large floating objects) applications. All of these models require timely computation of trajectory forecasts that are based on surface current, wave, and wind forecasts. Among these forcing variables, surface current forecasts exhibit by far the largest uncertainty (Dagestad and Röhrs, 2019). OpenDrift makes use of the Barents-2.5 EPS by issuing ensembles of trajectory forecasts, allowing one to assess the uncertainty in trajectory simulations in a given situation. In practice, the difference in trajectory forecasts from various ensemble members varies from case to case. The Barents-2.5 model is useful for distinguishing cases of low and high uncertainty in drift applications (de Aguiar et al., 2023).
8.4 Model development history and outlook
An earlier implementation of the Barents-2.5 has been operational since March 2019, including a DA scheme for SIC using a combined optimal interpolation and nudging scheme (Fritzner et al., 2018), which allows the model to reflect the observed SIC state closely. No ocean temperature data were assimilated in the version 1 model implementation, and as a consequence the model hydrography drifted away from the observed ocean state. The most notable changes for the model version described here are the implementation as an EPS with 24 members and the introduction of the EnKF DA scheme for both sea ice and ocean variables.
Asynchronous assimilation of SIC, i.e., swath data, is in a development stage, and SST assimilation will also likely benefit from asynchronous assimilation. In asynchronous DA, each satellite swath is compared to the model field at the respective retrieval time instead of applying observations at a fixed time of the day. This may lead to a reduction in the representation error in observations and hence introduce a tighter constraint on the model state. Constraint of mesoscale ocean current fields beyond assimilation of SST is planned by assimilation of sea level anomaly from satellite altimetry and HF radar currents.
The lack of ensemble spread in SIC is a major weakness in the current model setup. A more explicit perturbation of sea ice variables is planned in order to introduce larger spread in SIC and adoptive inflation in the EnKF analysis (Anderson, 2009; El Gharamti, 2018). Perturbation may be applied to the initial conditions or as a physics perturbation in the sea ice component by variation in empirical parameters in CICE. In addition, applying transform operators for SIC, e.g., through remapping of SIC to a Gaussian variable, can mitigate difficulties of the EnKF in assimilating SIC directly (e.g., Bishop, 2016; Chan et al., 2023; Cipollone et al., 2023).
A stronger coupling with NWP models and wave prediction models is foreseen as soon as such coupling is shown to improve forecasts. Atmosphere models require SST as lower boundary conditions, and these may benefit from skillful predictions of SST by Barents-2.5, provided that the coupling will not introduce artifacts through poorly defined feedback loops. At present, MET-AA, which provides surface forcing for Barents-2.5, uses static SST fields based on the Operational Sea Surface Temperature and Ice Analysis (OSTIA) daily satellite retrieval product. Coupling can either be implemented as a fully coupled online product or by using SST forecasts of the previous forecast cycle. A coupling with wave prediction models is foreseen in which the wave prediction model provides surface wave dissipation, momentum fluxes, and Coriolis–Stokes forcing to the ocean model (e.g., Breivik et al., 2015). Such coupling has been shown to improve SST predictions in the global ocean forecast model at the ECMWF (Janssen, 2012).
The source code for the coupled ROMS–CICE ocean and sea ice model is available through https://doi.org/10.5281/zenodo.5067164 (Debernard et al., 2021) and tagged as version 0.4.1 of the METROMS repository. Specific configuration and grid files for Barents-2.5 are archived at https://doi.org/10.5281/zenodo.7607191 (Röhrs, 2023). The source code for the EnKF-C v.2.9.9 is obtained from https://github.com/sakov/EnKF-C.git (Sakov, 2021), which is at commit 7eea4d8 as of 8 July 2021. The source code for the ecFlow scheduling software is available at https://github.com/ecmwf/ecflow (ECMWF, 2023).
Archived data from the operational model runs of Barents-2.5 are disseminated on https://thredds.met.no/thredds/fou-hi/barents_eps.html (Norwegian Meteorological Institute, 2023a). Observations of satellite SST and in situ hydrography are retrieved from CMEMS (https://doi.org/10.48670/moi-00036; Copernicus Marine Service, 2023). Observations of SIC are available through https://thredds.met.no/thredds/osisaf/osisaf_seaiceconc.html (Norwegian Meteorological Institute, 2023b). The subjective ice charts data are available as graphic maps and through an API at https://cryo.met.no/en/latest-ice-charts (Norwegian Meteorological Institute, 2023c). The low-resolution ice drift observations are available through https://doi.org/10.15770/EUM_SAF_OSI_NRT_2007 (EUMETSAF Data Services, 2023). Data from the Fruholmen HF radar are accessible in near-real time through https://thredds.met.no/thredds/catalog/remotesensinghfradar/catalog.html (Norwegian Meteorological Institute, 2023d).
Model setup and implementation: JR, JB, ER, SF, NMK, KW, JD, and KHC. Observation preparation: AKS, TL, and MI. Configuration of DA scheme: SF, JR, and MDM. Model validation: YG, ER, MDM, MI, and AKS. Manuscript preparation: all authors. Project management: JR and KHC.
The contact author has declared that none of the authors has any competing interests.
Publisher's note: Copernicus Publications remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
We acknowledge funding by the Research Council of Norway through grant nos. 237906 (CIRFA), 300329 (EcoPulse), 302917 (SIRANO), and 314449 (ACTION) and by the Norwegian FRAM Flagship program project SUDARCO (no. 2551323). This study has been conducted using EU Copernicus Marine Service Information, i.e., model data as boundary conditions and observation data used in assimilation. We acknowledge the research and development contribution of the ESA CCI Sea Ice and EUMETSAT OSI SAF projects to the preparation of the regional SIC product. We would like to express our gratitude to the reviewers, who helped to improved the original manuscript and also provided valuable ideas for the future development of the model.
This research has been supported by the Norges Forskningsråd (grant nos. 237906, 302917, 300329, and 2551323).
This paper was edited by Shu-Chih Yang and reviewed by Benjamin Barton and Chih-Chi Hu.
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- Abstract
- Introduction
- Model physics and configuration
- Data assimilation scheme
- Observations
- Operational implementation
- Validation methods
- Performance of Barents-2.5
- Discussion
- Code and data availability
- Author contributions
- Competing interests
- Disclaimer
- Acknowledgements
- Financial support
- Review statement
- References
- Abstract
- Introduction
- Model physics and configuration
- Data assimilation scheme
- Observations
- Operational implementation
- Validation methods
- Performance of Barents-2.5
- Discussion
- Code and data availability
- Author contributions
- Competing interests
- Disclaimer
- Acknowledgements
- Financial support
- Review statement
- References