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[Starry Globe]
------------------------------------------------------------------------
Earth is not a jigsaw puzzle with separate domains of land, sea, and
atmosphere. After centuries of study we have learned that Earth's components
and processes do not function as separate phenomena, but as a set of
interrelated systems. We must abandon old practices of studying discrete
elements of our complex planet and apply our efforts to the evolving
approach called Earth Systems Science. The approach recognizes that the
so-called "discrete elements" of Earth's behavior are really interdependent
phenomena whose interactions can best be understood from simultaneous,
multidisciplinary studies. (Vincent Salomonson, director, Earth Sciences
Directorate, NASA Goddard Space Flight Center, in the Goddard News, April
1995)
------------------------------------------------------------------------
Readme Contents
Introduction
List of Included Data Sets and Their Formats
Alphabetical List of Physical Parameters
Brief Summary of Contents of Each Data Set
References
Appendex
Organization of CIDC CD-ROM set
[rule]
Introduction
To facilitate the use of integrated, multiyear data sets related
to the Global Change Program, the Distributed Active Archive
Center (DAAC), at the NASA Goddard Space Flight Center, compiled a
consistent summary of 25 important data sets. Select data from the
atmospheric, oceanic, and land use sciences were placed on a
common global map grid. Most are on a uniform spatial and temporal
scale (1 x 1 degree, monthly), but a few of our data sets do have
larger meshes (2 x 2 degrees, etc.). Measurements not presented in
map form include the total solar irradiances, carbon dioxide
station data, the Southern Oscillation Index and angular
distribution models (to aid in the interpretation of measured
radiances). Only in recent years have some of these data products
been upgraded to a level suitable for interannual investigations.
In making the data set selections, we considered such factors as
the advice of senior scientists in various fields, the number of
years available, the quality of the data sets and the reformatting
effort required. These data products come from many sources, but
when two or more similar product sets are available we have a
preference, in this collection, for those archived at the Goddard
DAAC or produced at Goddard. This climate data collection is
planned to meet the needs of interdisciplinary scientists for
research and for university undergraduate and graduate level class
room applications. This is a dynamic collection, and specific
products will be added, extended, or replaced as new data become
available. We are interested in the suggestions and comments of
our data users concerning the results of their investigations,
data and documentation problems encountered while using a data
set, and new products they would like added to this collection.
This data collection contains approximately 70 different physical
climate parameters distributed among the 25 different data sets
listed in section 2. The full name, and an abbreviated name, are
given for each data set. In a second table the format, spatial
resolution, and spatial & temporal coverage of the data sets are
summarized. The physical parameters are listed alphabetically in
Section 3 together with the abbreviated name(s) of the associated
data set(s). In Section 4, a brief description of each data set is
given. This includes a parameter list, the time period covered,
the source of the data set and a principle reference. Each data
set is accompanied by a detailed Readme User's Guide which
describes the background of the data set, the data format, and
lists several references dealing with the formation, validation
and scientific uses of the data set. Data users are urged to read
the User's Guide before analyzing the data.
The making of accurate measurements is an exacting science. It
requires excellent instruments which have to be carefully
maintained and calibrated. For satellite observations the emphasis
is on excellent instruments and adjustments to the calibration
equations as the instruments and the observing conditions change.
This is because it is difficult or often impossible to adjust or
replace specific satellite instruments. Satellite instruments
observe the Earth's surface through the Earth's atmosphere which
is continuously changing. Because of the many problems, observing
teams are normally set up to derive specific physical parameters
such as precipitation or atmospheric ozone from the satellite
measurements. Over time these teams develop algorithm changes
which better interpret instrument changes and the variable
observing conditions. An example in our collection is the Nimbus-7
Total Ozone Mapping Spectrometer (TOMS) data set. These monthly
mean maps of total column atmospheric ozone (1978-1993) come from
version-7 of the production algorithm. It is common for the data
teams to produce at least two or three algorithm versions. Both
the data teams and other scientists spend a good deal of time
examining the accuracy of the various climate data sets. Rossow et
al. (1993) examine the differences between the International
Satellite Cloud Climatology Program (ISCCP) C- algorithm cloud
products and those from some other well known cloud data sets.
Rossow et al. (1996) describe why the new ISCCP D-algorithm was
adopted to replace the original C-algorithm. The Earth's surface
radiation budget is hard to observe; this makes it difficult to
validate the various computed surface radiation budgets. There are
considerable uncertainties concerning the effects of clouds on the
surface radiation budget. These are discussed by Li et al. (1997),
Wielicki et al. (1995) and Cess et al. (1995). In analyzing
climate parameters, it is important to consider how accurate each
is. In many cases the accuracy can only be estimated. We have
attempted to include only well documented, state of the art data
sets in this Interdiscipline Data Collection. However we leave it
to each user to examine the user's guides and listed references
before deciding how accurate specific data sets are.
All of the many climate parameters interact to produce regional
and global climate regimes. If climate is to be understood and
predicted, then these various interactions must be examined and
modeled. Global Data Assimilation Systems (GDAS) are used to model
the atmospheric climate system. Geophysical equations of
atmospheric motion, programmed into a General Circulation Model
(GCM), are used to blend selected observational measurements with
climate data and coefficients to produce self consistent models of
the dynamic atmosphere. This ensures that the thermodynamical
structure of the atmosphere in each region of the globe is
physically consistent in space and time with that of other regions
and also with the large-scale circulation of the atmosphere.
These models do not perfectly mirror the physical world. They do
best with the parameters that are directly assimilated such as
winds, pressures and specific humidity. They do less well with
parameters such as precipitation, cloudiness, and surface energy
fluxes which are strongly influenced by the physical
parameterization of the model and the level of sophistication in
its analysis techniques. Our Interdiscipline Data Collection
includes 26 parameters subsetted from the reanalyzed assimilated
data set produced by the Data Assimilation Office (DAO) at the
Goddard Space Flight Center (Schubert et al, 1993). This is a
program to reanalyze recent climate data records to produce a
consistent picture of the climate for the past decade or so.
Schubert et al. (1995) discuss some of the strong and weak points
of this data set. Problems can arise from deficiencies in the
input data, in the assimilation algorithm and with the GCM itself.
Cess et al. (1990 & 1993) compare a number of GCMs and some of
their deficiencies. Trenberth and Guillemot (1995) examine the
global atmospheric moisture budget as seen in the DAO and two
competing reanalysis data sets. These are the European Climate
Model for Medium Range Weather Forecasts (ECMWF) model and the
National Centers for Environmental Prediction (NCEP) model data
sets. Boney et al. (1997) compared the DAO and NCEP hydrology and
radiation budgets with each other and with several independent
measurement and calculation data sets. They used a number of the
data sets included in this collection. These include the
Atmospheric Soundings (TOVS), Clouds (ISSCP), Surface Radiation
Budget (NASA/Langley), Sea Surface Temperature (NOAA/NCEP),
Atmospheric Precipitable Water (SSMI), and the Global Land and
Ocean Precipitation Analysis (GPCP) data sets. Details concerning
these data sets are given in Section 4.
Boney et al. (1997) noted some large differences and some
deficiencies in the hydrological and radiative fields of the DAO
and NCEP reanalyses but found that these did not affect the
large-scale dynamics too strongly. "Thus, in investigating the
behavior of large-scale atmospheric circulations , the choice of a
particular set of reanalyses may not be too critical". However
when using parameters such as the surface net heat flux the biases
and specificities of each set of reanalyses should be recognized.
In general these several comparison papers tend to agree that
programs to derive specific parameter types (precipitation,
clouds, surface radiation budget, etc.) give more accurate results
for these specific parameters than do the DAO and other reanalysis
data assimilation programs which attempt to produce all or most of
them. In the data assimilation programs, all these physical
parameters interact with one another and at times the
uncertainties and errors can be compounded. Boney et al. (1997)
conclude: "Regardless, these reanalyses provide, at the present
time, a unique and extraordinary global dataset for research
purposes: to better understand the physical and dynamical
processes that govern the stability, variability, and evolution of
our climate."
The global climate program is quite dynamic both in terms of
developing improved measurement techniques as well as keeping the
observations up to date. Therefore the data sets in this
collection are periodically updated. As indicated in Section 3, a
number of the physical parameters in our collection appear in two
or more data sets. In making a choice as to which parameter
version to use please read carefully the data set User's Guides
and the pertinent references.
The Goddard DAAC is interested in receiving your comments
concerning your experiences with the Goddard DAAC in general and
particularly with the Interdisciplinary Data Collection. Comments
concerning the data products themselves can also be sent directly
to the science team chair persons or data producers identified in
the dataset READMEs. Comments concerning the Interdisciplinary
Data Collection should be directed to,
H. Lee Kyle
Code 902.2,
NASA Goddard Space Flight Center
Greenbelt, MD 20771
Phone: Voice 301-614-5352; Fax: 301-614-5268
Email: lkyle@eosdata.gsfc.nasa.gov
------------------------------------------------------------------------
II. List of Included Data Sets and Their Formats
The included data sets are grouped into seven categories in Table 1. These
categories are based partial on the physical parameters involved and
partially on the procedures used to calculate the parameters. The same
physical parameter, such as precipitation, may be found in two or more
categories, and in several data sets. Following the name of each data set,
an abbreviated name appears in parenthesis. This abbreviation is used to
identify the data set in the Physical Parameters Table 3. It also frequently
appears in the names of the data files.
Table 1: Included Data Sets
Atmospheric Dynamics & 1. Assimilation Atmospheric Dynamics
Atmospheric Soundings Subset, DAO (assim)
2. Atmospheric Soundings, TOVS, (tovs)
1. Outgoing Longwave Radiant Flux, ERBE
(erbe)
2. Total Solar Irradiance (solarirrad)
3. Clouds, ISCCP C2 (isccpc2)
Radiation and Clouds 4. New Clouds, ISCCP D2 (isccpd2)
5. Surface Solar Irradiance, NASA/GISS
(srfsolar)
6. Surface Radiation Budget, NASA/Langley
(srb)
1. Vegetation Index, AVHRR NDVI (ndvi)
The Biosphere 2. Ocean Pigment Concentration, CZCS
(czcs)
3. Global Land Cover, ISLSCP (vegmap)
Variable Atmospheric 1. Ozone, Nimbus-7 TOMS (tomsn7)
Constituents 2. Greenhouse Gases, CDIAC (cdiacgrnh)
1. Sea Surface Temperature, NOAA/NCEP
(ncepsst)
2. Temperature Deviations, U. East Anglia
Measured Surface (ueatemp)
Temperatures & Pressures 3. Southern Oscillation Index, U. East
Anglia (ueasoi)
4. Global Temperatures Deviations,
NASA/GISS (gisstemp)
1. Atmospheric Precipitable Water, SSMI
(pwssmi)
2. Snow Depth, SMMR (smmrsnw)
3. Sea Ice Concentration, SMMR & SSMI
(seaice)
Hydrology 4. Global Rain Gauge Analysis, GPCC
(gpgauge)
5. Global Land and Ocean Precipitation
Analysis, GPCP (gpcmb)
6. Soil Characteristics, FAO (soilchar)
7. Monsoon Rain, SMMR (msnrain)
Remote Sensing Science Angular Radiation Distribution Models, ERBE
(erbeadm)
Data Set Characteristics
Most of the data is in IEEE 4 byte floating point format but some small
files are in ascii. World grid data start in the North and at 180-degrees
west and progresses to the east and then southward. In most cases the data
values are grid square averages. However in the Assimilated Atmospheric
Dynamics data set the values refer to the grid points. The data sets are
listed below by data categories and not alphabetically--see start of Section
2. The full data set names and abbreviations are given in Table 1.
Table 2: Data Set Formats and Spatial & Temporal Coverage
Data Set Resolution File Coverage
(abbreviation) (degrees) Format Fill Value Size Spatial Temporal
(Bytes)
Atmospheric Dynamics 65520 & Global
(assim) 2x2 IEEE -999.9 524160 3/80-11/93
Atmospheric Soundings 259200 Global
(tovs) 1x1 IEEE -999.9 to 1/85-12/92
1814400
Outgoing Longwave Global
(ERBE) 1x1 IEEE -999.9 259200 1/86-12/88
Solar Irradiance ASCII -9.9 to 400 to Solar Disc
(solarirrad) N/A Tables -9999.999 123000 11/78-12/96
Clouds ISCCP-C2 Global
(isccpc2) 1x1 IEEE -999.9 259200 7/83-6/91
Clouds ISCCP-D2 Global
(isccpd2) 1x1 IEEE -999.9 259200 1/86-1/87;1/90-12/92
Surface solar Global
irradiance (sfrsolar) 1x1 IEEE -999.99 259200 7/83-6/91
Surface Radiation Global
Budget (srb) 1x1 IEEE -999.9 259200 7/83-6/91
Vegetation Index data Global
(ndvi) 1x1 IEEE gap=-99.999 259200 7/81-8/94
water=-9.999
Ocean Pigment data gap=-99.0 Global
(czcs) 1x1 IEEE land,ice=-999.9 259200 11/78/6/86
Land Cover (vegmap) 1x1 IEEE none 259200 Global
Ozone, Toms (tomsn7) 1x1 IEEE -999.9 259200 Global
11/78- 4/93
Greenhouse Gases varies: -99.9, 280 to Station
(cdiacgrnh) Station Data IEEE -999.9,-999.99 38000 168000 b.p.-6/94
Sea Surface Global Ocean
Temperature (ncepsst) 1x1 IEEE -99.999 259200 11/81- 7/97
Temperature 5x5, IEEE & -999.0 varies 1851-1996
Deviations (ueatemp) hemispheres& ASCII -99.9 10368 to 1856-1996
global Tables 1244160
Temperature ASCII Global
Deviations (gisstemp) Global Tables none 16000 1/1866-9/1997
S. Oscillation Index ASCII Global
(ueasoi) Station Data Tables none ~13000 1866-1994
Precipitable Water Global Ocean
(pwssmi) 1x1 IEEE -999.9 259200 8/87/-11/91
data gap =
-999.9;
Snow Depth (smmrsnw) 1x1 IEEE permanent ice = 259200 Global Land
254 10/78-8/87
water =-99.0
Top latitudes
(84-90 North)
=-999.9
Sea Ice (seaice) 1x1 IEEE land=-9999.0 259200 Global Ocean
oceans where no 10/78-12/96
data available
=-1
Rain Gauge Data Global, chiefly Land
(gpgauge) 1x1 IEEE -999.99 259200 1/86-6/97
Land & Ocean Global
Precipitation(gpcmb) 1x1 IEEE -99.99 259200 7/87-6/97; except
Dec'87
land=-9.0 Ocean
Monsoon Rain land (30.5N,29.5E)
(msnrain) 1x1 IEEE contaminated 417244 - (30.5S,200.5E)
=-99.0 10/78-8/87
Soil Characteristics Global
(soilchar) 1x1 IEEE -999.0 259200 Land only
Angular Radiance varies
Distribution Models 12 Scene ASCII -999.9 204 to 12 Global
(erbeadm) Types Tables 3430 Scene Types
III. Alphabetical list of Physical Parameters
The included physical parameters are listed alphabetically in the following
table together with the abbreviated names of the data set(s) in which they
appear. A list of the data set names and abbreviations are given in Table 1.
In most cases when the same parameter appears in more than one data set,
some what different algorithms were used to derive the parameter.
Table 3: Physical Parameter List
Parameter Units Data Sets Notes
at 7 pressure levels,
Cloud Fractions by tovs,
Levels: unitless Isccpd2 at 3 levels (low, mid
& high)
Cloud Fractions by
Type:
Day time cloud cover
Low(cumulus, at 3 levels (Low, mid
stratocumulus, & & high.)
stratus) % Isccpd2 (Low & mid level
Mid(altocumulus, clouds have liquid
altostratus & and ice
nimbostratus) subcategories. High
High(cirrus, clouds assumed ice.)
cirrostratus, deep
convective)
assim,tovs, assim are calculated,
Cloud fraction, Total % isccpd2,
isccpc2,srb Others observed
srb same as isccpc2
Cloud Optical for mean day time
Thickness unitless isccpc2 & Isccpd2 clouds
Cloud Top Pressure mb tovs,isccpc2, for mean total cloud
Isccpd2
Cloud Top Temperature K tovs,isccpc2, for mean total cloud
Isccpd2
Cloud Mean Water Path g/m2 Isccpd2 total mean day time
cloud
Chlorophyll in the mg/m3
Ocean czcs from Ocean Color
Evaporation from
Surface mm/day assim ..
Geopotential Height m assim at 8 pressure levels
Greenhouse Gas, CH4 ppb cdiacgrnh station & ice core
data
Greenhouse Gas, CO2 ppm cdiacgrnh station & ice core
data
Greenhouse Gas, N2O ppb cdiacgrnh station
Greenhouse Gas, Air from glacier ice
Temperature Variation C cdiacgrnh cores
Humidity, specific
(sphu) g/kg assim at 8 pressure levels
Humidity, specific
(sphu) kg/kg assim at 2 meters
Humidity,sphu Fluxes (m/s)(g/kg) assim vertically averaged
(u & v) winds x sphu
Ice/cloud % isccpd2 ..
Ice/snow % isccpd2, assim see also 'snow'
Ice, sea % seaice ..
16 surface types
Land cover classes code vegmap (water, vegetation,
etc.)
NDVI unitless ndvi normalized difference
vegetation index
Ozone, total Dobson tomsn7 From TOMS on Nimbus-7
Precipitable Water, atmospheric water
total cm assim, tovs,pwssmi vapor
Precipitable Water,for tovs: 5 layers
atmospheric layers cm tovs, isccpd2 isccpd2: 2 layers
in gpgauge units are
assim, tovs, mm/month; in msnrain
Precipitation mm/day gpgauge, gpcmb, microns/hr.
msnrain climatology included
in msnrain.
Precipitation
measurement error mm/day gpcmb ..
Pressure, Boundary
level depth hPa assim ..
Pressure, Cloud top .. .. see cloud top
pressure
Pressure, Sea level mb or hPa assim ..
Pressure (P), Surface mb or hPa assim, tovs,isccpd2 ..
based on sea level
Pressure, Southern pressure difference
oscillation index unitless ueasoi between Tahiti and
Darwin, Australia
Radiation, Solar at mean Earth to Sun
irradiance W/m^2 solarirrad distance, Measured
Radiation, terrestrial
at surface: srb has both clear
LW downward W/m^2 srb and all-sky downward
SW downward W/m^2 srb,srfsolar LW & SW
Radiation,Surface,net:
LW, SW W/m^2 assim, srb ..
Radiation, terrestrial
at top of atmosphere:
LW, cloud forcing W/m^2 tovs all sky - clear sky
LW, outgoing W/m^2 assim,tovs,erbe in erbe it is
SW,incoming W/m^2 assim measured
SW, outgoing W/m^2 assims downward SW
reflected SW
Snow, depth cm smmrsnow see also : ice, snow
From the Food and
Soil, average slope degrees soilchar Agricultural
Organization (FAO) of
the UN
Soil, profile depth cm soilchar ..
Soil, Texture code soilchar ..
Soil, Type code soilchar ..
Surface reflectance fraction isccpc2, isccpd2 for clear sky
conditions
Surface roughness m assim ..
Surface stress
velocity m/s assim ..
Surface type code assim land,water,ice
vegmap vegetation type
Temperature, cloud top .. .. see:cloud,temperature
Temperature 11/81-7/97(only
deviations, C ncepsst, ocean)
global maps ueatemp 1851-1996
Temperature
deviations, C ueatemp 1856-1996
mean global gisstemp 1866-1996
Temperature, at
different pressure K assim at 8 pressure levels
levels
Temperature,mean for Temperature means for
layers K tovs 4 atmospheric layers
Temperature, near
surface air K assim, isccpd2 ..
isccpc2 & isccpd2 are
Temperature,surface assim,tovs,isccpc2, for clear skies;
skin K isccpd2,ncepsst ncepsst is sea
surface only &
includes climatology
Winds, surface speed m/s assim ..
Winds (u&v), at
different pressure K assim at 8 atmospheric
levels pressure levels
Anisotropic SW ERBE broad spectral
reflection & LW unitless erbeadm band, top of the
emission factors atmosphere, scene
dependent models
Scene dependent
correlation of LW & SW unitless erbeadm for the ERBE scene
radiances types
Mean scene dependent for the 12 ERBE
albedo unitless erbeadm global scene types
Mean scene dependent for season and
daytime LW W/m^2 erbeadm latitude band
Mean LW flux for the ERBE scene
difference (day-night) W/m^2 erbeadm types
Scene dependent
standard deviations of W/m^2 erbeadm for the ERBE scene
LW & SW radiances types
IV. Brief Summary of Contents of Each Data Set
(Dataset summaries: Source, Parameter list, and Period Covered)
Summaries of over 20 data sets are grouped into seven categories. The
grouping is influenced partially by the types of physical parameters invalid
and partially by the way that they are processed. Because of this the same
physical parameter may appear in several data sets and in more than one
category. When this occurs different algorithms have normally been used to
produce the parameter. The included data sets, source, time period covered,
their parameters and an abbreviated data set name are listed below. The
abbreviated name frequently forms part of the file name in the data files.
Detailed science, reference and format information about each data set can
be found in its Readme User's Guide.
------------------------------------------------------------------------
Atmospheric Dynamics & Atmospheric Soundings
Name: Assimilation Atmospheric Dynamics Subset, DAO (abbreviation: assim).
This is a 26 parameter subset.
Source: The Data Assimilation Office (DAO) at NASA/Goddard Space Flight
Center
Reference: Schubert et al. (1993)
Area Covered: Global
Period: March 1980-November 1993
Parameters: Upper air variables include vertical profiles of u &v winds,
geopotential height, temperature, and specific humidity at 8 pressure levels
(1000, 950, 900, 850, 700, 500, 300 200 mb)
Variables related to moisture include surface evaporation, precipitation,
total precipitable water above the surface, and vertically integrated
moisture fluxes
Variables related to the radiative energy budget include incident solar
radiation at the top of the atmosphere, and net longwave and net shortwave
radiative fluxes at the top and bottom of the atmosphere, and total cloud
fraction
Diagnostic variables related to the surface and the boundary layer
characteristics include: ground temperature, surface pressure, sea level
pressure, surface type, temperature and specific humidity at 2 meters,
surface wind speed, surface friction velocity, surface roughness and
planetary boundary layer
Notes: These data were produced by the Goddard Data Assimilation Office
(DAO) using the Version 1 Goddard Earth Observing System (GEOS-1). The
original data were on a 2 x 2.5 degree latitude-longitude grid that started
at map coordinates (90S, 180W). In this collection the monthly data are
reformatted to a 2 x 2 degree latitude-longitude world grid that starts at
(90N, 180W) and runs eastward and southward to latitude 90S. Thus a total of
16,380 grid points span the globe. The values given are calculated from the
input data and refer to the grid points. In most of the other data sets grid
square means are given.
------------------------------------------------------
Name: Atmospheric Soundings, TOVS (abbreviation: tovs)
This is an 11 parameter subset.
Source: The Sounder Research Team of the Laboratory for Atmospheres,
NASA/Goddard Space Flight Center
Reference: Susskind et al. (1997)
Area covered: Global
Period: 1985-1992
Parameters: Upper air: mean temperature in 4 layers(*), precipitable water
at 5 layers (**), cloud fractions for seven layers(***), top of the
atmosphere outgoing longwave radiation, longwave cloud forcing (clear sky -
mean), total cloud fraction, mean cloud top temperature and pressure,
surface skin temperature, total precipitation, and surface pressure.
Notes: These products are from the TIROS Operational Vertical Sounder (TOVS)
Pathfinder A program. The monthly data are on a 1 x 1 degree world grid that
starts at the N Pole and the Date line. The original data started at the S
Pole.
(*)The atmospheric temperature layers are: Surface to 500, 500-300, 300-100,
and 100-30 mb. (**) Integrated precipitable water is given above the levels:
the surface, 850, 700, 500, and 300 mb. (***)Cloud fractions are given
between: Surface-800, 800-680, 680-560, 560-440, 440-310, 310-180, above 180
mb.
------------------------------------------------------------------------
Radiation and Clouds
Name: Outgoing Longwave Radiant Flux, ERBE (abbreviation: erbe)
Source: The Earth's Radiation Budget Experiment (ERBE) Team
Reference: Barkstrom et al. (1989)
Area covered: Global
Period: 1985-1988
Parameter: Outgoing longwave radiant flux at the top of the atmosphere
Notes: We plan to add other ERBE products soon. This is the scanner combined
satellites S4 product regridded from the original 2.5 x 2.5 degrees to a 1 x
1 degree world grid.
------------------------------------------------------
Name: Clouds, ISCCP C2 products (abbreviation: isccpc2)
Source: The International Satellite Cloud Climatology Program (ISCCP)
production team at the Goddard Institute for Space Studies (GISS).
Reference: Rossow and Garder (1993)
Area covered: Global
Period: July 1983 - June 1991
Parameters ( a six parameter subset): Monthly mean diurnal cloud fraction,
cloud top pressure and temperature, mean daytime cloud optical thickness,
surface reflectance, and surface temperature.
Notes: The ISCCP C1 (daily) and C2 (monthly) products were originally
produced on a (275x275 km^2) equal area world grid. At the equator this is
equivalent to (2.5 degrees latitude by 2.5 degrees longitude) grid squares.
In our data collection the products have been regridded to a 1-degree by
1-degree world grid. The ISCCP Team is in the process of reprocess the data
to produce the improved ISCCP new D version cloud products. When the
reprocessing is completed the ISCCP C version cloud products will be
withdrawn from this site.
--------------------------------------------------------
Name: Clouds, ISCCP D2 (new version) products (abbreviation: isccpd2)
Source: The International Satellite Cloud Climatology Program (ISCCP)
production team at the Goddard Institute for Space Studies (GISS).
Reference: Rossow et al. (1996)
Area cover: Global
Period: Jan'86-Jan'87, Jan'90-Dec'92
Parameters (a 36 parameter subset): Low, mid & high altitude IR only
determined cloud fractions with associated cloud top pressures and
temperatures; cloud fractions for 9 daytime bispectral (visual plus IR
channels used in algorithm) cloud types with ice and water cloud
differentiation; monthly mean diurnal cloud fraction, cloud top pressure and
temperature, mean daytime cloud optical thickness, surface reflectance, and
surface temperature.
Additional parameters are the mean: ice/snow cover, surface pressure,
near-surface air temperature and the integrated precipitable water for the
layers (1000-680 mb) and (680- 310 mb); these are input parameters used as
an aid in estimating the cloud fractions.
Notes: The monthly mean data are presented on 1x1 degree latitude-longitude
world grids that starts at (89.5N, 179.5W) and runs eastward and southward
to latitude 89.5 S. The original ISCCP D1 (daily) and D2 (monthly mean)
products were calculated on an approximately equal area world grid (275x275
km^2) which is equivalent to a 2.5x2.5 degree latitude-longitude grid at the
equator. When the reprocessing is completed the ISCCP C version cloud
products will be with drawn from this site.
-----------------------------------------------------
Name: Total Solar Irradiance (abbreviation; solar)
Source: These are the daily and monthly means from the Nimbus-7 ERB (Hoyt et
al., 1992), ACRIM I & II (Willson 1994), and the ERBS/ERBE (Lee 1995)
measurement programs.
Area covered: The Solar disk
Period: total period is November 16, 1978 - December 31, 1996. The period
for the four component data sets varies.
Parameter: The total Solar irradiance
Notes: All measurements are converted to the mean Earth/Sun distance. This
is the incoming solar energy outside of the Earth's atmosphere.
-----------------------------------------------------
Name: Surface Solar Irradiance derived by NASA/GISS (abbreviation: srfsolar)
Source: Produced at the Goddard Institute for Space Studies (GISS)
Reference: Bishop et al. (1994)
Area covered: Global
Period: July 1983-June 1991
Parameter: down welling surface solar irradiance.
Notes: The surface solar irradiance presented here is from Version 2 of the
Bishop and Rossow surface solar irradiance algorithm. The original data was
on a 2.5x2.5 degree grid. We have interpolated this to a 1x1 degree grid
starting at (89.5N, 179.5W) and runs eastward and southward. Bishop and
Rossow have started production on their version 3 products. These will be
made available at this site sometime in the future.
------------------------------------------------------
Name: The Surface Radiation Budget as derived by NASA/Langley (abbreviation:
srb)
Source: The Surface Radiation Budget (SRB) Team at the NASA/Langley Research
Center.
Reference: Darnell et al. (1996)
Area covered: Global
Period: July 1983-June 1991)
Parameters: All-sky surface downward SW & LW and net SW & LW fluxes;
clear-sky downward SW & LW fluxes, and cloud fraction.
Notes: The Staylor SW and the Gupta LW algorithms were used to calculate the
parameters on a global grid of 6596 equal area (275x275 km^2) regions
(Darnell et al., 1996). Here this has been regridded to a 1x1 degree world
grid starting at (89.5N, 179.5W) and runs eastward and southward. The
primary input data for their computations came from the ISCCP C-version
cloud data set. The team plans to reprocess the data set and to extend it
through 1995.
------------------------------------------------------------------------
The Biosphere
Name: Ocean Pigment Concentration from the CZCS measurements (abbreviation:
czcs)
Source: The Nimbus-7 Coastal Zone Color Scanner (CZCS) Team. The data were
produced at the NASA/Goddard Space Flight Center.
Reference: Feldman et al. (1989)
Area Covered: Global oceans
Period: November 1978-June 1986)
Parameters: Pigment concentration (an indication of the abundance of ocean
chlorophyll) Monthly fields, A 12-month climatology and a 7.5-year
climatology are available.
Notes: The data are on a 1 x 1 degree world grid.
------------------------------------------------------
Name: Vegetation Index, AVHRR NDVI (abbreviation: ndvi)
Source: The NOAA/NASA AVHRR Pathfinder Land Team
Reference: Townshend (1994)
Area covered: Global, land only
Period: July 1981-August 1994
Parameters: Normalized Difference Vegetation Index (NDVI)
Notes: This parameter indicates the greenness of the land cover. These data
were produced by the NOAA/NASA Pathfinder Land program to reprocess Advanced
Very High Resolution Radiometer (AVHRR) measurements. The 1x1 degree
latitude/longitude monthly climate data presented here were produced from 8
km x 8 km 10-day composted NDVI products.
------------------------------------------------------
Name:Global Land Cover Classifications. from (ISLSCP) (abbreviation: vegmap)
Source: University of Maryland at College Park
Reference: DeFries and Townshend (1994)
Area covered: Global, Land Only
period: invariant
Parameters: Global Land Cover Classifications.
Notes: Land cover is described in terms of 13 vegetation types plus water,
ice and bare desert soil. The data set was derived from vegetation index
(NDVI) data collected in 1987. The data sets is also available on the ISLSCP
Initiative I CD-ROM set.
------------------------------------------------------
Variable Atmospheric Constituents
Name: Total Ozone derived from the Nimbus-7 TOMS (abbreviation: tomsn7)
Source: The Ozone Processing Team (OPT) of the Atmospheric Chemistry &
Dynamics Branch (Code 916) at the Goddard Space Flight Center.
Reference: McPeters et al. (1996)
Area covered: Global
Period: November 1978-April 1993
Parameters: Total column ozone derived from the Total Ozone Mapping
Spectrometer (TOMS) on the Nimbus-7 satellite.
Notes: Monthly means are presented on a 1x1 degrees world grid. These means
are from the 7th and final algorithm version.
-----------------------------------------------------
Name: Greenhouse Gases, CDIAC (abbreviation: gnhgas)
Source : This is a subset of station and ice core data obtained from the
Carbon Dioxide Information Analysis Center (CDIAC).
Reference: This is a collection of several data sets --see Readme User's
Guide for the references.
Area covered: 36 stations S. Pole to Alert (Northwest Territories, Canada)
and 21 shipboard measurement sites.
Period: 160000 before present to June 1994, but this varies somewhat with
the parameter
Parameters (4): Carbon dioxide, methane and nitrous oxide, and near ice
atmospheric temperature variations.
Notes: The historical data, including the temperature variations, are
obtained from ice cores. Direct atmospheric measurements started in recent
years. In the sum, the increases in the minor greenhouse gases are as
significant to Greenhouse warming as the increase in CO2 (Houghton et al.
1995).
-----------------------------------------------------
Measured Surface Temperatures & Pressures
Name: Sea Surface Temperature, NOAA/NCEP (abbreviation: ncepsst)
Source: The National Centers for Environmental Prediction (NCEP).
Reference: Reynolds and Smith (1994),
Area covered: Global, ocean only
Period: 1981- July 1997.
Parameters: Monthly mean sea surface temperature, sea surface temperature
anomalies, and a climatology for each of the 12 calendar months.
Notes: The products were produced and are presented on a 1-degree latitude
by 1-degree longitude world grid.
-----------------------------------------------------
Name: Temperature Deviations from the U. of East Anglia (abbreviation:
ueatemp)
Source: The data was derived by the Climate Research Unit at the University
of East Anglia.
Reference: Jones et al. (1997)
Area covered: Global, land and ocean
Period: 1851-1996
Parameters: Monthly mean surface temperature anomalies, monthly and annual
hemispherical and global anomalies and the percent of the hemisphere or
globe reporting.
Notes: Departures of the surface air temperatures from the 1961-1990
reference period as determined by the Climate Research Unit (CRU) of the
University of East Anglia on a 5 x 5 degree world grid. Some data gaps occur
particularly in Equatorial and Southern Hemispheric regions. In the 1850s
only a few regions were reporting.
-----------------------------------------------------
Name: Global Temperature Deviations derived by NASA/GISS (abbreviation:
gisstemp)
Source: This data set was constructed by the Surface Air Temperature Study
Group at the Goddard Institute for Space Studies (GISS).
Reference: Hansen and Lebedeff (1987)
Area covered: Mean global values are given
Period: January 1866 - September 1997
Parameters: This subset contains only monthly and annual global mean
temperature deviations.
Notes: Temperature deviations from the reference period mean, 1951-1980, are
given. The GISS study group first determines regional deviations and then
finds the global averages. Our subset contains only the global averages.
-----------------------------------------------------
Name: Southern Oscillation Index (SOI) from the U. of E. Anglia
(abbreviation: ueasoi).
Source: Data produced by the Climate Research Unit (CRU) at the University
of East Anglia.
Reference: Ropelewski and Jones (1987)
Area covered: station data
Period: 1866-1994
Parameters: Normalized pressure difference (Tahiti minus Darwin)
------------------------------------------------------------------------
Hydrology
Name: Atmospheric Total Precipitable Water derived from SSM/I measurements
(abbreviation: pwssmi)
Source: The original data products were produced by Remote Sensing Systems,
Santa Rosa, CA, using an algorithm by Frank Wentz.
Reference: Wentz (1992)
Area covered: Global, Oceans only
Period: August-November 1987 and February 1988-November 1991)
Parameters: Monthly mean total precipitable water
Notes: Microwave measurements of total atmospheric water vapor on a 1 x 1
degree world grid obtained from the Special Sensor Microwave/Imager (SSM/I)
on Defense Meteorological Satellite Program satellites.
----------------------------------------------------
Name:Snow Depth from SMMR (abbreviation: snowsmmr)
Source: NASA/Goddard Space Flight Center
Reference: Chang et al. (1987)
Area cover: Global, land only
Period: October 1978 - August 1987
Parameters: Monthly mean snow depth on 1x1 degree world.
Notes: The snow depth was derived on a 0.5x0.5 degree latitude/longitude
world grid from measurements made by the Scanning Multichannel Microwave
Radiometer (SMMR) on the Nimbus-7 Satellite. We have averaged the original
data to a 1x1 degree world grid for compatibility with the other data sets
in our collection.
----------------------------------------------------
Name: Sea ice concentration, SMMR & SSMI (abbreviation: seaice).
Source: The Oceans and Ice Branch at NASA/Goddard Space Flight Center
Reference: Cavalieri et al. (1997)
Area covered: Global, oceans only
Period: October 1978 - December 1996
Parameters: Sea ice concentration expressed as percent x 10.
Notes: The original Sea ice dataset was on a polar stereographic projection
with grid elements of approximately 25 x 25 km. It is here resampled to a
1x1 degree grid. Sea ice concentration data is obtained from the brightness
temperature measured by the Scanning Multichannel Microwave Radiometer
(SMMR) on the Nimbus-7 Satellite (october 1978- August, 1987), series of
Special Sensor Microwave/Imager SSMI F8 (September 1987-December 1991), SSMI
F11 (January 1992- September 1995),and SSMI F13 (October 1995-December
1996)on the Defense Meteorological Satellite Program (DMSP)
-----------------------------------------------------
Name: Global Rain Gauge Analysis data, GPCC (abbreviation: gpgauge)
Source: The Global Precipitation Climatology Center (GPCC)
Reference: Rudolf et al. (1994)
Area covered: Land plus a few ocean regions
Period: January 1986 - June 1997
Parameters: Surface precipitation plus three statistical parameters
Notes: Monthly mean precipitation for 1x1 degree grid areas are estimated
from the objective analysis of rain gauge measurements acquired from about
6700 stations
-----------------------------------------------------
Name: Global Land and Ocean Precipitation Analysis, GPCP (abbreviation:
gpcp).
Source: The original data products were produced by the science
investigators Dr. George Huffman and Dr. Robert Adler of Laboratory of
Atmospheres, NASA Goddard Space Flight Center, under the auspices of the
Global Precipitation Climatology Project (GPCP)
Reference: Huffman et al.(1997)
Area covered: Global
Period: July 1987 - June 1997 , except December 1987
Parameters: Surface precipitation and measurement error estimate
Notes: The original GPCP dataset was on a 2.5x2.5 degree grid. It is here
resampled to a 1x1 degree grid. The analysis program combines satellite
observations with precipitation gauge measurements to yield global, land and
ocean, precipitation estimates.
--------------------------------------------------
Name: Monsoon Rain from SMMR Measurements (abbreviation: msnrain).
Source: Space Science and Engineering Center, University of Wisconsin at
Madison
Reference: Hinton et al. (1992)
Area covered: Tropical ocean in the region: 30.5S to 30.5N latitude and
29.5E to 200.5E longitude.
Period: October 1978 - August 1987
Parameters: Monthly and Annual rainfall rates, Harmonic analysis Annual and
Semiannual Amplitudes and Phases of rainfall rates. The phases indicate the
time of the year when the annual and semiannual rain rates are maximum.
Notes: The rain rates were derived from measurements by the Scanning
Multichannel Microwave Radiometer (SMMR) on the Nimbus-7 Satellite.
-----------------------------------------------------
Name: FAO soil data, (abbreviation: faosoil)
Source: This data set was developed from the Food and Agriculture
Organization (FAO) Soil Map of the World.
Reference: See Notes.
Area covered: Global, land only
Period: invariant
Parameter: Soil texture, depth, slope and type
Notes: Climate modelers need information on the water holding capacity of
global soils. Various researchers derived the parameters; soil texture,
depth, slope and type, putting them in a 1 degree x 1 degree grid that can
be used in global modeling. The soil texture and soil type data are based on
the work by Zobler (1986). Soil profile depth data was derived by Web et al.
(1993). The average topographical slope was derived from data sets
constructed, from the FAO soil map, by the Science and Applications Branch
of the EROS Data Center in Sioux Falls, South Dakota.
------------------------------------------------------------------------
Remote Sensing Science
Name: Radiation Angular distribution models (ADMs) for ERBE (abbreviation:
erbeadm)
Source: The Earth Radiation Budget Experiment (ERBE) Team
Reference: Suttles et al. (1988 &1989)
Area covered: Models for 12 mean global scene types
Period: invariant
Parameters (eight): Normalized anisotropic shortwave reflectance factor,
Standard deviation of corresponding reflected radiances, Mean scene
directional albedo, Correlation of longwave and shortwave radiances,
Normalized anisotropic longwave emission factor, Standard deviation of
emitted radiances, Mean emitted daytime fluxes, Mean day minus night flux
differences
Notes: This data set was developed as an aid in converting broad spectral
band shortwave and longwave scanner observed radiances into
top-of-the-atmosphere fluxes. For this purpose it is assumed that there are
twelve global scene types: Clear ocean, land, snow, desert, land-ocean mix;
Partly cloudy over ocean, land or desert, land-ocean mix; Mostly cloudy over
ocean, land or desert, land-ocean mix; overcast.
The shortwave anisotropic factors are presented in a three dimensional
matrix which has ten solar zenith angle (0 to 90 degrees), seven viewing
angle (0 to 90 degrees), and eight azimuth angle ( 0 to 180 degrees) rows.
In the azimuth angle, symmetry is assumed about the principle plane. The
mean albedo is given for the ten solar zenith angle bins. The longwave
emission anisotropic factors are presented for four seasons, ten latitude
bands (N to S Pole), and seven viewing angle bins (0 to 90 degrees). The
mean scene longwave daytime flux and (day-night)flux difference are given
for four seasons and ten latitude bands.
------------------------------------------------------------------------
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------------------------------------------------------------------------
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NASA Goddard GDAAC CIDC
Last update:Tue Dec 9 17:01:54 EST 1997
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