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Decadal Changes in the Polar Sea Ice Cover

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Title: Decadal Changes in the Polar Sea Ice Cover


1
Decadal Changes in the Polar Sea Ice Cover
  • Josefino C. Comiso
  • NASA Goddard Space Flight Center, Code 614.1
  • Greenbelt, MD 20771
  • IGOS/CliC Cryosphere Theme Workshop, Kananaskis,
    Alberta, CA, 2-4 March 2005

2
Why Study Changes in theSea Ice Cover
  • Amplification of climate change signal due to
    ice-albedo feedback
  • Good insulator keeps polar ocean warm
  • Redistributes salt- forms in one place, melts in
    another
  • Initiates convection
  • Forms high salinity and dense bottom water
  • Affects weather
  • The Arctic perennial ice cover is observed to be
    rapidly declining

3
Sea Ice Parameters
  • Ice Concentration needs a good definition
  • Ice Extent/Area depends on IC/resolution
  • Ice Type new, young, FY, MY
  • Average Ice Thickness Seasonal, Perennial
  • Snow Cover Characteristics thickness,
    granularity, layering, wetness
  • Ice Temperature Surface and snow/ice interface

4
Ice Concentration
  • Must provide scientific information about the ice
    cover, e.g., compactness, thickness, etc
  • Must not be binary ice vs no ice
  • This means, we should not threshold on grease
    ice
  • Must be consistently defined regardless of
    sensor, i.e., passive, infrared, visible
  • Must enable first order estimate of volume and
    useful for heat flux calculations
  • Must take advantage of detailed ice cover
    information that satellite data provides

5
Cluster Plots illustrating the basic differences
between NT1 and Bootstrap results
6
High Resolution AMSR vs Landsat
  • Higher spatial details can be inferred from
    AMSR-E data, especially at 89 GHz
  • AMSR-E data at 6.25 km resolution captures many
    of the spatial features from a high resolution
    visible channel
  • The 12.5 km data show some details but the 25 km
    data smear out much of the features.

7
Divergence in the vicinity of Novaya Zemlya
IslandDivergence and polynyas must be revealed
in IC maps
8
Large leads in AlaskaIC maps must show large
cracks in the ice
9
The statistical error depends on the standard
deviation with respect to the line AD (in Blue)
which has been evaluated to be around 1.5 K.
This means the limit in the ice concentration
error is about 2.
10
Combining Satellite Data Records
  • Need consistency checks from one sensor to
    another ESMR-SMMR-SSMI-AMSR
  • Match TBs, ICs, ice edge, land mask, land/ocean
    mask, open ocean mask
  • Account for time difference (AM vs PM sensors)
  • Account for differences in resolution
  • Account for differences in radiometric accuracy

11
Antarctic ice anomaliesSMMR (red) to SSM/I
(black) toAMSR (green)
12
Arctic Ice AnomaliesSMMR (red) to SSM/I (black)
toAMSR (green)
13
AMSR Ice edge12.5 km resolution
  • High resolution data provide a better definition
    of the ice edge.
  • With AMSR data, all channels provide consistent
    ice edge information.
  • Some discrepancies between AMSR and SSM/I IC ice
    edge location is observed.

14
Record Length
  • What is the minimum data record that must be
    available for trend analysis to be credible?
  • Is it okay to combine data from different
    sources?
  • How many cycles are needed for harmonic analysis?
  • How do we evaluate the trend results in terms of
    known data errors?

15
Sensitivity of trends to record length and
climate cycles
  • Data with different record lengths (rl) provide
    different trends but those with rl less than 15
    years may not provide meaningful trends.
  • A negative trend is inferred from about 65 years
    of data while spectral analysis show
    periodicities at 12 and 33 years.

16
Total and Regional Ice Extents in the Arctic
17
The Ross versus Bel-Amundsen SeasWhen combining
satellite data with in situ data with longer
records, only relevant local changes must be
considered
18
Sources of Errors in Total Ice Areas
  • Consistency in time series Connecting data from
    different satellites with different resolutions
    and calibration is not trivial. One year of
    overlap is highly desirable.
  • Geolocation and side lobe effects.
  • A one pixel error in the ice edge is possible.
  • Ice Concentration (IC) Retrieval
  • 1K error in tie point causes 1 error in IC
  • Open Ocean Masking-due to extreme weather wind
  • Land Masking-algorithm is suitable for oceans
    only
  • Land/Ocean Boundary Masking
  • Many ice and surface types

19
Satellite sea ice extent record
  • SMMR and SSMI records provide different trends
    for the ice extent.
  • In the Arctic, the trends are similar and
    slightly higher than average. In the Antarctic,
    the trends have opposite sign and significantly
    different from average.

20
Satellite sea ice area anomalies/trends
  • Ice area distributions are similar to those of
    ice extent.
  • In the Arctic, the trends for SMMR and SSMI are
    more consistent with average values. In the
    Antarctic, the differences are not as marked.

21
Ice Edge Errors
  • Ice edge is difficult to monitor because of high
    temporal and spatial variability.
  • SAR data provides much higher resolution but may
    sometimes miss the ice edge because of similar
    backscatter as open water.
  • Ship data at x (in red) show actual location of
    the ice edge.

22
Sensitivity of 1 pixel mismatch at the ice edge
to estimated trend in ice extent in the NH
  • Consistent mismatch for all months from 1978
    through 2001 yields insignificant difference in
    the NH.
  • A mismatch during SMMR years but not during SSM/I
    years or vice-versa shows large change in trend
    estimates.
  • Matching of results during periods of overlap is
    very important for accurate trend analysis.

23
Sensitivity of 1 pixel mismatch at the ice edge
to estimated trend in ice extent in the SH
  • Trends in ice extent in the Southern Oceans is
    negligible when ice edge is defined as usual.
  • Mismatch during SMMR or SSM/I years produced
    significant trends with opposite signs.
  • Consistency and accuracy in the identification of
    the ice edge is very important.

24
On September 11, 2002, the Arctic Perennial Ice
Cover was at its lowest extent during satellite
era. AMSR-E is consistent with SSM/I and will
provide continuity and more accurate data in the
series.
25
Sensor TB and IC spatial consistency
  • Differences in TBs are mainly in open ocean
    regions where weather effects are apparent.
  • The changes are mainly caused by differences in
    revisit times over the polar regions.
  • Despite bias and a slight change in TB
    calibration, the derived ice concentrations are
    basically identical.

26
Arctic Ice Cover during Minimum Extent1979-2003
27
Arctic Perennial Ice Cover, 1979-2004
28
Updated Perennial Ice Trends
  • Overall, the ice cover in the Northern Hemisphere
    is declining but mainly due to that of summer ice
  • The perennial ice cover continues to decline
    rapidly

29
Summary and Conclusions
  • We can derive ice concentration, extent, and ice
    area consistently using satellite data.
  • Ice concentration should provide scientific
    information about temporal changes in the ice
    cover.
  • Trend results depend on length of record. Need
    about at least 20 years to be credible.
    Combining satellite with older in situ
    observation is tricky.
  • Trend errors include use of multiple sensors with
    different resolution, visit time, and
    performance.
  • We are beginning to get reasonable assessments of
    thickness, type, as well as snow and surface ice
    temperatures. But data records of these
    parameters are still too short for decadal
    studies.

30
End of Presentation
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