Javascript must be enabled to continue!
Revisiting NASA's Operation IceBridge Snow on Sea Ice Radar Measurements in the Arctic
View through CrossRef
Snow on sea ice plays a critical role in modulating ice mass changes in response to anthropogenic warming, with significant implications for ocean mixed layer processes, the surface energy budget, and marine ecosystems. Most importantly, accurate snow depth measurements are essential for deriving reliable sea ice thickness estimates from all altimetry satellites. Operation IceBridge (OIB), which collected snow depth data using the airborne CReSIS FMCW C/S-band snow radar for a decade, remains a pivotal reference for understanding pan-Arctic snow depth changes and validating remote sensing snow retrievals. Despite its importance, significant concerns persist regarding snow retrieval algorithms from snow radar, particularly around algorithm performance and the representation of snow properties.In this study, we revisit OIB snow depth retrieval algorithms by comparing them with underutilized in-situ snow depth measurements from MagnaProbe surveys conducted near Eureka, Canada, in 2016. To enhance the spatial representation of the in-situ data, we employ Kriging interpolation methods. Additionally, we make use of the co-collected conical laser scanner data. A detailed comparison of retrieval algorithms - focusing on the detection of the air-snow and snow-ice interfaces as well as the derived snow depth - reveals that the Continuous Wavelet Transform (CWT) algorithm performs best for the 2-8 GHz snow radar version, yielding a correlation of R=0.72 over undeformed sea ice. However, the CWT algorithm predominantly detects snow depths within the 80-90% quantile of the in-situ distribution within the radar footprint. This bias is attributed to the air-snow interface being identified as the first rise above the radar noise floor, which typically corresponds to the highest snow elevations within the footprint. Finally, we compare a subset of newly derived snow depth data from OIB  including highly-valuable uncertainties with existing datasets, highlighting potential improvements.Looking ahead, we propose a framework to enhance snow depth retrieval algorithms, offering robust pathways for validating and improving satellite-based snow datasets. This approach holds significant promise for advancing the accuracy of snow depth measurements critical to polar science in the future campaigns.
Title: Revisiting NASA's Operation IceBridge Snow on Sea Ice Radar Measurements in the Arctic
Description:
Snow on sea ice plays a critical role in modulating ice mass changes in response to anthropogenic warming, with significant implications for ocean mixed layer processes, the surface energy budget, and marine ecosystems.
Most importantly, accurate snow depth measurements are essential for deriving reliable sea ice thickness estimates from all altimetry satellites.
Operation IceBridge (OIB), which collected snow depth data using the airborne CReSIS FMCW C/S-band snow radar for a decade, remains a pivotal reference for understanding pan-Arctic snow depth changes and validating remote sensing snow retrievals.
Despite its importance, significant concerns persist regarding snow retrieval algorithms from snow radar, particularly around algorithm performance and the representation of snow properties.
In this study, we revisit OIB snow depth retrieval algorithms by comparing them with underutilized in-situ snow depth measurements from MagnaProbe surveys conducted near Eureka, Canada, in 2016.
To enhance the spatial representation of the in-situ data, we employ Kriging interpolation methods.
Additionally, we make use of the co-collected conical laser scanner data.
A detailed comparison of retrieval algorithms - focusing on the detection of the air-snow and snow-ice interfaces as well as the derived snow depth - reveals that the Continuous Wavelet Transform (CWT) algorithm performs best for the 2-8 GHz snow radar version, yielding a correlation of R=0.
72 over undeformed sea ice.
However, the CWT algorithm predominantly detects snow depths within the 80-90% quantile of the in-situ distribution within the radar footprint.
This bias is attributed to the air-snow interface being identified as the first rise above the radar noise floor, which typically corresponds to the highest snow elevations within the footprint.
Finally, we compare a subset of newly derived snow depth data from OIB  including highly-valuable uncertainties with existing datasets, highlighting potential improvements.
Looking ahead, we propose a framework to enhance snow depth retrieval algorithms, offering robust pathways for validating and improving satellite-based snow datasets.
This approach holds significant promise for advancing the accuracy of snow depth measurements critical to polar science in the future campaigns.
Related Results
Ground ice detection and implications for permafrost geomorphology
Ground ice detection and implications for permafrost geomorphology
Most permafrost contains ground ice, often as pore ice or thin veins or lenses of ice. In certain circumstance, larger bodies of ice can form, such as ice wedges, or massive lenses...
Combined measurement of snow depth and sea ice thickness by helicopter EM bird in McMurdo Sound, Antarctica
Combined measurement of snow depth and sea ice thickness by helicopter EM bird in McMurdo Sound, Antarctica
<p>Snow on sea ice is a controlling factor for ocean-atmosphere heat flux and thus ice thickness growth, and surface albedo. Active and passive microwave remote sensi...
A textural approach to snow depth distribution on Antarctic sea ice
A textural approach to snow depth distribution on Antarctic sea ice
<p>Understanding the distribution of snow depth on Antarctic sea ice is critical to estimating the sea ice thickness distribution from laser altimetry data, such as f...
The sea ice in Young Sound: Implications for carbon cycling
The sea ice in Young Sound: Implications for carbon cycling
Most of the year, Young Sound is covered by c. 160 cm thick sea ice overlain by a 20-100 cm thick snow cover. During the last 50 years the sea-ice-free period has varied between 63...
Sea-ice ridges - an understudied yet key component of the Arctic sea-ice system
Sea-ice ridges - an understudied yet key component of the Arctic sea-ice system
Sea-ice ridges (or more precisely, deformed ice) constitute a large fraction of the Arctic ice pack, however, estimates range broadly from 30 to 70%. Yet, we know disproportionally...
Dissolved Neodymium Isotopes Trace Origin and Spatiotemporal Evolution of Modern Arctic Sea Ice
Dissolved Neodymium Isotopes Trace Origin and Spatiotemporal Evolution of Modern Arctic Sea Ice
<p>The lifetime and thickness of Arctic sea ice have markedly decreased in the recent past. This affects Arctic marine ecosystems and the biological pump, given that ...
Seasonal Arctic sea ice predictability and prediction
Seasonal Arctic sea ice predictability and prediction
Arctic sea ice plays a central role in the Earth’s climate. Changes in the sea ice on seasonal-to-interannual timescales impact ecosystems, populations and a growing number of stak...
Differences in Arctic sea ice simulations from various SODA3 data sets
Differences in Arctic sea ice simulations from various SODA3 data sets
<p>SODA (Simple Ocean Data Assimilation) is one of the ocean reanalysis data widely used in oceanographic research. The SODA3 dataset provides multiple ocean reanalys...

