36 research outputs found
Quantifying black carbon deposition over the Greenland ice sheet from forest fires in Canada
Black carbon (BC) concentrations observed in 22 snowpits sampled in the northwest sector of the Greenland ice sheet in April 2014 have allowed us to identify a strong and widespread BC aerosol deposition event, which was dated to have accumulated in the pits from two snow storms between 27 July and 2 August 2013. This event comprises a significant portion (57% on average across all pits) of total BC deposition over 10 months (July 2013 to April 2014). Here we link this deposition event to forest fires burning in Canada during summer 2013 using modeling and remote sensing tools. Aerosols were detected by both the CloudâAerosol Lidar with Orthogonal Polarization (on board CALIPSO) and Moderate Resolution Imaging Spectroradiometer (Aqua) instruments during transport between Canada and Greenland. We use highâresolution regional chemical transport modeling (WRFâChem) combined with highâresolution fire emissions (FINNv1.5) to study aerosol emissions, transport, and deposition during this event. The model captures the timing of the BC deposition event and shows that fires in Canada were the main source of deposited BC. However, the model underpredicts BC deposition compared to measurements at all sites by a factor of 2â100. Underprediction of modeled BC deposition originates from uncertainties in fire emissions and model treatment of wet removal of aerosols. Improvements in model descriptions of precipitation scavenging and emissions from wildfires are needed to correctly predict deposition, which is critical for determining the climate impacts of aerosols that originate from fires
Melt pond fraction and spectral sea ice albedo retrieval from MERIS data â Part 1: Validation against in situ, aerial, and ship cruise data
The presence of melt ponds on the Arctic sea ice strongly affects the energy balance of the Arctic Ocean in summer. It affects albedo as well as transmittance through the sea ice, which has consequences for the heat balance and mass balance of sea ice. An algorithm to retrieve melt pond fraction and sea ice albedo from Medium Resolution Imaging Spectrometer (MERIS) data is validated against aerial, shipborne and in situ campaign data. The results show the best correlation for landfast and multiyear ice of high ice concentrations. For broadband albedo, R2 is equal to 0.85, with the RMS (root mean square) being equal to 0.068; for the melt pond fraction, R2 is equal to 0.36, with the RMS being equal to 0.065. The correlation for lower ice concentrations, subpixel ice floes, blue ice and wet ice is lower due to ice drift and challenging for the retrieval surface conditions. Combining all aerial observations gives a mean albedo RMS of 0.089 and a mean melt pond fraction RMS of 0.22. The in situ melt pond fraction correlation is R2 = 0.52 with an RMS = 0.14. Ship cruise data might be affected by documentation of varying accuracy within the Antarctic Sea Ice Processes and Climate (ASPeCt) protocol, which may contribute to the discrepancy between the satellite value and the observed value: mean R2 = 0.044, mean RMS = 0.16. An additional dynamic spatial cloud filter for MERIS over snow and ice has been developed to assist with the validation on swath data
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Impact of melt ponds on Arctic sea ice simulations from 1990 to 2007
The extent and thickness of the Arctic sea ice cover has decreased dramatically in the past few decades with minima in sea ice extent in September 2007 and 2011 and climate models did not predict this decline. One of the processes poorly represented in sea ice models is the formation and evolution of melt ponds. Melt ponds form on Arctic sea ice during the melting season and their presence affects the heat and mass balances of the ice cover, mainly by decreasing the value of the surface albedo by up to 20%. We have developed a melt pond model suitable for forecasting the presence of melt ponds based on sea ice conditions. This model has been incorporated into the Los Alamos CICE sea ice model, the sea ice component of several IPCC climate models. Simulations for the period 1990 to 2007 are in good agreement with observed ice concentration. In comparison to simulations without ponds, the September ice volume is nearly 40% lower. Sensitivity studies within the range of uncertainty reveal that, of the parameters pertinent to the present melt pond parameterization and for our prescribed atmospheric and oceanic forcing, variations of optical properties and the amount of snowfall have the strongest impact on sea ice extent and volume. We conclude that melt ponds will play an increasingly important role in the melting of the Arctic ice cover and their incorporation in the sea ice component of Global Circulation Models is essential for accurate future sea ice forecasts
Greenland ice sheet surface mass loss: recent developments in observation and modeling
Surface processes currently dominate Greenland ice sheet (GrIS) mass loss. We review recent developments in the observation and modelling of GrIS surface mass balance (SMB), published after the July 2012 deadline for the Fifth Assessment Report of the Intergovernmental Panel on Climate Change (IPCC AR5). Since IPCC AR5 our understanding of GrIS SMB has further improved, but new observational and model studies have also revealed that temporal and spatial variability of many processes are still
poorly quantified and understood, e.g. bio-albedo, the formation of ice lenses and their impact on lateral meltwater transport, heterogeneous vertical meltwater transport (âpipingâ), the impact of atmospheric circulation changes and mixed-phase clouds on the surface energy balance and the magnitude of turbulent heat exchange over rough ice surfaces. As a result, these processes are only schematically or not at all included in models that are currently used to assess and predict future GrIS surface mass loss
Strong constraints on aerosol-cloud interactions from volcanic eruptions.
Aerosols have a potentially large effect on climate, particularly through their interactions with clouds, but the magnitude of this effect is highly uncertain. Large volcanic eruptions produce sulfur dioxide, which in turn produces aerosols; these eruptions thus represent a natural experiment through which to quantify aerosol-cloud interactions. Here we show that the massive 2014-2015 fissure eruption in Holuhraun, Iceland, reduced the size of liquid cloud droplets-consistent with expectations-but had no discernible effect on other cloud properties. The reduction in droplet size led to cloud brightening and global-mean radiative forcing of around -0.2 watts per square metre for September to October 2014. Changes in cloud amount or cloud liquid water path, however, were undetectable, indicating that these indirect effects, and cloud systems in general, are well buffered against aerosol changes. This result will reduce uncertainties in future climate projections, because we are now able to reject results from climate models with an excessive liquid-water-path response
Wind redistribution of snow impacts the Ka- and Ku-band radar signatures of Arctic sea ice
Wind-driven redistribution of snow on sea ice alters its
topography and microstructure, yet the impact of these processes on radar
signatures is poorly understood. Here, we examine the effects of snow
redistribution over Arctic sea ice on radar waveforms and backscatter
signatures obtained from a surface-based, fully polarimetric Ka- and Ku-band
radar at incidence angles between 0â (nadir) and 50â.
Two wind events in November 2019 during the Multidisciplinary drifting Observatory for
the Study of Arctic Climate (MOSAiC) expedition are evaluated. During both events, changes in Ka- and
Ku-band radar waveforms and backscatter coefficients at nadir are observed,
coincident with surface topography changes measured by a terrestrial laser
scanner. At both frequencies, redistribution caused snow densification at
the surface and the uppermost layers, increasing the scattering at the
airâsnow interface at nadir and its prevalence as the dominant radar scattering surface. The waveform data also detected the presence of previous
airâsnow interfaces, buried beneath newly deposited snow. The additional
scattering from previous airâsnow interfaces could therefore affect the
range retrieved from Ka- and Ku-band satellite altimeters. With increasing
incidence angles, the relative scattering contribution of the airâsnow
interface decreases, and the snowâsea ice interface scattering increases.
Relative to pre-wind event conditions, azimuthally averaged backscatter at
nadir during the wind events increases by up to 8âdB (Ka-band) and 5âdB (Ku-band). Results show substantial backscatter variability within the scan
area at all incidence angles and polarizations, in response to increasing
wind speed and changes in wind direction. Our results show that snow
redistribution and wind compaction need to be accounted for to interpret
airborne and satellite radar measurements of snow-covered sea ice.</p
Open-source algorithm for detecting sea ice surface features in high-resolution optical imagery
Snow, ice, and melt ponds cover the surface of the Arctic Ocean in
fractions that change throughout the seasons. These surfaces control albedo
and exert tremendous influence over the energy balance in the Arctic.
Increasingly available meter- to decimeter-scale resolution optical imagery captures
the evolution of the ice and ocean surface state visually, but methods for
quantifying coverage of key surface types from raw imagery are not yet well
established. Here we present an open-source system designed to provide a
standardized, automated, and reproducible technique for processing optical
imagery of sea ice. The method classifies surface coverage into three main
categories: snow and bare ice, melt ponds and submerged ice, and open water.
The method is demonstrated on imagery from four sensor platforms and on
imagery spanning from spring thaw to fall freeze-up. Tests show the
classification accuracy of this method typically exceeds 96âŻ%. To
facilitate scientific use, we evaluate the minimum observation area required
for reporting a representative sample of surface coverage. We provide an
open-source distribution of this algorithm and associated training datasets
and suggest the community consider this a step towards standardizing optical
sea ice imagery processing. We hope to encourage future collaborative
efforts to improve the code base and to analyze large datasets of optical
sea ice imagery
Reflective properties of melt ponds on sea ice
Melt ponds occupy a large part of the Arctic sea ice in summer
and strongly affect the radiative budget of the atmosphereâiceâocean system.
In this study, the melt pond reflectance is considered in the framework of
radiative transfer theory. The melt pond is modeled as a plane-parallel layer
of pure water upon a layer of sea ice (the pond bottom). We consider pond
reflection as comprising Fresnel reflection by the water surface and
multiple reflections between the pond surface and its bottom, which is
assumed to be Lambertian. In order to give a description of how to find the
pond bottom albedo, we investigate the inherent optical properties of sea
ice. Using the WentzelâKramersâBrillouin approximation approach to light
scattering by non-spherical particles (brine inclusions) and Mie solution for
spherical particles (air bubbles), we conclude that the transport scattering
coefficient in sea ice is a spectrally independent value. Then, within the
two-stream approximation of the radiative transfer theory, we show that the
under-pond ice spectral albedo is determined by two independent scalar
values: the transport scattering coefficient and ice layer thickness. Given
the pond depth and bottom albedo values, the bidirectional reflectance factor
(BRF) and albedo of a pond can be calculated with analytical formulas. Thus,
the main reflective properties of the melt pond, including their spectral
dependence, are determined by only three independent parameters: pond depth
z, ice layer thickness H, and transport scattering coefficient of ice
Ït.The effects of the incident conditions and the atmosphere state are examined.
It is clearly shown that atmospheric correction is necessary even for in situ
measurements. The atmospheric correction procedure has been used in the model
verification. The optical model developed is verified with data from in situ
measurements made during three field campaigns performed on landfast and pack
ice in the Arctic. The measured pond albedo spectra were fitted with the
modeled spectra by varying the pond parameters (z, H, and Ït). The coincidence of the measured and fitted spectra
demonstrates good performance of the model: it is able to reproduce the
albedo spectrum in the visible range with RMSD that does not exceed 1.5âŻ%
for a wide variety of melt pond types observed in the Arctic