Title: GCOS SST
1GCOS SSTSI Working Group
- Chairs
- Nick Rayner
- Tom Smith
- Executive committee
- Ken Casey
- Elisabeth Kent
- Alexey Kaplan
- Craig Donlon
- Ed Harrison
- Dick Reynolds
Sea ice subcommittee Søren Andersen, DMI/EUMETSAT
OSISAF Florence Fetterer Walt Meier, NSIDC Tony
Worby Steve Ackley, ASPeCt Per Gloersen, NASA
GSFC Cathleen Geiger, CRREL/U. Delaware John
Stark, UK Met Office Vasily Smolyanitsky,
AARI/JCOMM ETSI Pablo Clemente-Colon, NIC Mark
Drinkwater, ESA Stefan Kern Dirk Notz, U.
Hamburg Jinro Ukita, Chiba University
2Outline
- Background and summary of objectives
- Organisation
- Motivation and mission
- Illustrative examples
- Proposed list of activities
- Status
- Events
- Reports
- Intercomparison
- Outlook
- Recent relevant results
3Organisation
4Motivation and mission
- Motivation from a climate data user perspective
- Uneven data coverage as well as inconsistencies
between different passive microwave sea ice
timeseries and ice charts have been identified by
climate community constructing longterm SSTSI
analyses
- No uncertainty estimates in existing ice
analyses. - An overwhelming number of data sets/algorithms
with poorly known relative and absolute skills. - For microwave data Principal homogeneity issues
with short overlap periods and different equator
crossing times. - The popular NSIDC gridded dataset has only 16
days of overlap between DMSP F8 and F11 - SMMR and SSM/I overlap is 22 days
- For ice charts Changes in analysis capabilities
and practices are not always well documented - Major challenge to reconcile ice chart,
observation and satellite records. - The Antarctic has significantly less historical
coverage than the Arctic
Mission To provide analysis and recommendations
on long term consistent sea ice fields with
uncertainty estimates for use in SST SI
analyses. Initially focus on ice concentration
but consider ice thickness as methods and data
sets mature.
5Rapid changes in MY sea ice
Nghiem et al., 2006
6Arctic trends
Analysis by Kaleschke, presented in Andersen et
al. 2006 (b). Merged ESMR SSM/I Cavalieri et
al.,2003 with NSIDC sea ice index. Recent
developments have no correlation with AO, but
Maslanik et al. (2007) suggest atm. circulation
may still be significant
Meier et al. Ann. Glaciol. (46) 2007 Confirms
the uniqueness of recent decline in ice coverage,
while illustrating the sensitivity of trends to
period and length of time series.
7Trends in Antarctic
May be due to increased snow ice formation with
increased Precipitation. (Ice mass growth is a
balance between insulation and snow ice), Powell
et al., 2005.
8NICs Sea Ice Climatology
1976
1993
Example from Partington et al showing change in
chart detail , 1976 to 1993 Over time Increase
in quality, quantity, and effective resolution of
charts
Courtesy Florence Fetterer, NSIDC
9Differences in trends
Arctic area trends from 7 Microwave algorithms
Ice chart and Microwave trends
1987-2004
-42611
-58111
-33230
Nearly a factor 2 between lowest and highest
estimate
1991-2004
-42611
Courtesy Nick Rayner, Hadley Centre
10Some blind spots, the Antarctic
HadISST extents (Rayner et al, 2003)
- Available time series
- Arctic has systematic observations back to late
1800s - Antarctic data is extremely scattered and spotty
up to satellite era - GDSIDB Arctic 1901-1997
- GDSIDB Antarctic 1973-1991
Gaps
German Atlas
Russian Atlas
11Focused activities
- Systematic and comprehensive intercomparison of
sea ice analyses - Help characterize important temporal and
spatially distributed differences - Provide starting points for further investigation
and cooperation - Help evaluate effects of different assumptions
- Provide a step towards meaningful accuracy and
uncertainty estimates - Error estimates
- Develop and promote methods for standardized
error estimates for both ice charts and satellite
analyses - Data
- Provide overview of the numerous data sets
available - Promote easy and standardized access to field and
ship observations - Examine data gaps and, if possible, recommend
mitigation actions
12Implementation
The full level of activity will depend on level
of community commitment and funding. However,
some initial activities are already committed to
- Demonstration of intercomparison of a limited set
of IC products - Products repository in common simple netCDF
format - Develop statistics and comparison procedures
(initial short list exists) - Presentation of analyses and download of data
- Ice chart based ice edge uncertainty project
(NSF, Geiger) - Outcome of IICWG 2006
- First step towards a more informed use of ice
chart information in climate science - Not to forget, progress through cooperation
- Structuring and collection of in situ
observations and use of ice chart data for ice
thickness in ASPeCt - Structuring, collection and documentation through
IICWG, ETSI - Scientific coordination through CliC/WCRP and
others.
13Status
- Overview of events
- Documents
- Intercomparison
14Recent events
- Group meetings
- Reformed in Exeter October 2005 with a wide
initial representation in sst and the decision to
form a specific subgroup on sea ice - Inaugural sea ice meeting in Boulder, March 2006,
established initial plans - Participation in IICWG in Helsinki, September
2006, featuring a dedicated morning session in
plenary and several break outs. Resulting in an
IICWG supported proposal to NSF for error
analysis of ice chart based ice edge estimates. - Interactions with other groups and bodies
- Presentation at Antarctic Sea Ice thickness
Workshop, Hobart (July 2006) - IGOS-Cryo meeting, Noordwijk (October 2006)
- JCOMM-ETSI meeting, Geneva (March 2007), plans
for a common ice analyst workshop in 2008. - The SI group is leaving the formative phase,
entering ops.
15Reports
16Intercomparison
- Intercomparison is not a new concept in sea ice
retrieval. - Bad news
- It can be implemented in many ways.
- Small details and assumptions (e.g. spatial and
temporal coverage, products considered,
filtering/averaging) may affect results. - Interpretation is often difficult (e.g. in terms
of which product is more correct) - Good news
- Comparison of products efficiently reveals
signatures of underlying algorithm and system
sensitivities. Links well with efforts to
understand the underlying processes (e.g.
radiative/microphysical, retrieval/classification)
- Experience from existing intercomparison
exercises may help identify best practices and
limitations.
17Systematic intercomparison
netcdf gdsidb_blended-ps dimensions ni
304 nj 448 time 588
variables float lon(nj, ni)
float lat(nj, ni) short time(time)
timeunits "Months since Reference_time"
short ct(time, nj, ni)
ctlong_name "Ice concentration"
ctunits ""
ct_Fillvalue 165s float pix_area(nj,
ni) pix_arealong_name "Pixel
area" pix_areaunits "km2"
// global attributes
Reference_time 1950.
Data_set_name "GDSIDB blended analysis
1950-1998" Version "1.00"
- In practice the idea is
- Get data in common simple, self-contained format,
example - Compute statistics and intercomparison products
- Make comparison products and data sets easily
available - The hard part Interpret the results
18Example problem Regridding
- Nearest neighbour regridding of GDSIDB product
from 0.25? geographical to 25 km polar stereo
projection - 2.5 difference in extent trend (-13.9 to -14.2
x 103 km2/year) - 6.5 difference in area trend (-8.9 to -9.5 x
103 km2/year)
Original
Regridded
Extent
Area
19Development snapshot
- Intercomparison implemented in Python using
matplotlib, numpy and Nio packages. - Possible evolution to web application via
CherryPy and TurboGears - Data sets HadISST, NASA/Team, Bootstrap, GDSIDB
- Initial list of products
- Linear trends of monthly mean values of sea ice
extent and area results in a measure of the
spread in estimated retreat or increase in the
sea ice cover. Taking one product as reference
can be useful. - Maps of linear trend in concentration or sea ice
persistence provide the spatial structure of
differences in estimated sea ice trends. - Per pixel range of concentration based on several
products or maps of anomaly with respect to
wintertime average ice concentration provide
spatial structure of single algorithm results. - Maps of differences between algorithms on various
time scales provide the spatial structure of
inter-algorithm differences.
Intended to augment SST intercomparison system at
NODC
20Outlook
- IPY
- Snapshot activities will make large quantities of
high resolution EO data available and facilitate
comprehensive validation activities - Field activities will help in developing and
validating models that relate snow and ice
parameters to emissivity - Massive deployment of buoys will at least help
relating observed signals to meteorological
conditions and ice drift patterns - The systematic data management will make the
application of the data possible. - New ice thickness measurement capabilities
- Space based altimeters are becoming operational
(IceSAT and follow-on, Cryosat-II, Sentinel-3) - Development of AUV systems is picking up speed,
in part thanks to IPY - The ASPeCt data set is close to 25000
observations spanning more than 2 decades in the
Antarctic and still growing - General movement towards sustained operational
satellite programmes, e.g. ESA Sentinels, (JAXA
GCOM?) also a movement towards free access to
SAR data. - SMMRSSM/I is approaching 30 years of continuous
operation - but there will most likely be a gap
in AMSR class passive microwave observations and
Seawinds scatterometer continuity is very
unlikely.
21Conclusions
- The group is coming out of its formative phase
- Group members span ice charting, in-situ,
satellite observations and to some extent
modelling disciplines - Activities and organisation have been outlined
and agreed in a white-paper document - Many of the defined activities have basic support
from existing activities of members. - An expanded set of activities, including
standardisation of error estimates,
interpretation of differences and thorough
investigations of ice chart records, may require
external funding, some initiatives have started
already. - The group is seen to benefit from and add to the
momentum of existing groups like ASPeCt and IICWG - In the longer term, it is hoped that the group,
in cooperation with the ice charting community,
may help lessen the gap between ice chart and
satellite observations to achieve longer data
sets of sea ice concentration with improved
confidence.
22Examples of recent results by group members
23ASPeCt Tracks of 83 good voyages
Worby et al., 2007
24 Annual mean ice thickness including ridges
and open water 2.5 x 2.5º grid
Worby et al., 2007
25AMSR-E v ASPeCt snow thickness data
Worby et al., 2007
26Arctic Sea Ice from Passive Microwave (PM)
Sensors and Operational Ice Charts
From Meier, Fetterer, Fowler, Fall AGU 2006
27MEMLSI simulations of ice concentration
NASA Team sensitive to layer contrast. Comiso
frequency moderately sensitive to
scattering. Near 90 GHz moderately sensitive to
deep scattering, sensitive to layer contrast.
Upper snow-layer density 100-410kg/m3 Above ice
correlation length 0.14-0.32mm
NASA Team
Comiso frequency
Near 90GHz
Scattering
Layering
Tonboe et al. 2006
28Winter concentration anomalies
31 Oct 2000 31 Mar 2001
CP
NT2
BRI
Polarisation
NT
N90
CF
Spectral Gradient
Ice/snow Layering
Less Ice/snow Layering
Andersen et al. 2007
29Backup material
30Trends
31Satellite trend
- Analysis by Kaleschke, presented in Andersen et
al. 2006 (b). - Merged ESMR SSM/I Cavalieri et al.,2003 with
NSIDC sea ice index
32Rapid changes in MY sea ice
Nghiem et al., 2006
33Temporal analysis of ice index data variability
and linear trends in August for Eurasian
(1900-2003) and Canadian Arctic (1968-2004)
Greenland, Barents, Kara
Laptevs, Eastern-Siberian, Chukcha
Western CA (blue) Eastern CA (green) East Coast
(red) (April) Hudson Bay (light blue)
From V. Karklin, Z.Gudkovich, I.Frolov,
V.Smolyanitsky, J.Falkingham Interannual
variability of Eurasian and Canadian Arctic sea
ice in the 20th century and expectations for the
21st century. JCOMM-II Scientific Conference
Operational Oceanography and Marine Meteorology
for the 21st Century. Septembr 15-17th, Halifax,
Nova Scotia, Canada.
34Wavelet analysis of sea ice extent variations for
Eurasian Arctic Seas (based on 1900-2003 period)
and Canadian Arctic Seas (based on 1968-2004
period) in August (red more ice, blue less
ice)
Greenland
Barents Kara
Laptev
Eastern-Siberian Chukcha
Western CA Eastern CA
Hudson Bay
35Trends in Antarctic
May be due to increased snow ice formation with
increased Precipitation. (Ice mass growth is a
balance between insulation and snow ice), Powell
et al., 2005.
36Differences
37NICs Sea Ice Climatology
Courtesy Florence Fetterer, NSIDC
in 1996/1997 , NIC - Transitioned to digital
imagery (OLS/AVHRR) and digital analysis in GIS
format Started using SAR data in tactically
significant areas Now, NIC uses Quicksat to
compensate for deficiencies in SSM/I
38Chart vs. NASA/TEAM SSM/I
Agnew Howell, 2003
39Differences in trends
Arctic ice area trends from 7 Microwave
algorithms
1987-2004
1991-2004
Andersen et al., 2007
40Error sources
41Atmospheric
Water vapour
Wind
Cloud liquid water
Andersen et al., 2006
42Atmospherically induced stdev
Bristol
Bootstrap
43Same with clouds
Bristol
Bootstrap
44Empirical fit
- Collocation of large number of SSM/I passes gives
following relation (Schyberg) - s0.040.07(C(1-C)/0.25)
Schyberg
Combined
Atmosphere
Ice tiepoint
45MEMLSI simulations of snow effects
MEMLSI emissivity model setup to explore effects
of layering and coarse grains in the snow layers
above sea ice.
1
2
Layer 1 snow density 100-410kg/m3, varying layer
contrast btw. layers 1 and 2 Layer 3 correlation
length (grain size) 0.14-0.32mm, simulating
effect of depth hoar
NASA Team
Comiso frequency
Near 90GHz
Scattering
Layering
46Footprint convolution errors
Deconvoluted
Reference
True low res.
Combined convolution and simple averaging
Limaye et al. (2006) Particularly important in
gradient areas, i.e. ice edge and coast.
Additional errors come from mixing of Channels
with different footprint size
47In summer Melt ponds and others
In summer, melting snow and ice forms open
freshwater ponds on top of the ice that, in the
microwave regime, can be distinguished from the
open ocean only by salinity. Additional
complications occur e.g. due to refreezing of the
ponds. Sea ice topography exerts an important
control on the spatial extent and depth of the
ponds. Spatial coverage can range from 20-50
Russ Hopcroft, from the University of Alaska
Fairbanks, takes a sip from one of the many
meltponds scattered around the ice. (Photo
courtesy of Ian MacDonald.) From NOAA Ocean
Explorer site
48Applications/impacts
49Impact in climate models
- Singarayer et al. (2005) Fig.2 Fig.3
- Sea ice uncertainty is large but ocean - atm.
gradient is small during summer. - Other contributions Rinke etal. (2006)
Influence of sea ice on atmosphere. - Parkinson et al. Impact on climate models (2001)
50Assimilation over sea ice
Estimation of the surface emissivity
51Positive impactHirlam AMSU-A assimilation
experiment over sea ice, 24 hour forecasts
Black Control run Green Experiment
Courtesy H. Schyberg, met.no
52Ice mass
53Ice mass is the important quantity
IceSAT thickness Kwok et al.,2006