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Radiation Belt Tools and Climatology

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Radiation Belt Tools and Climatology Completing the Data Environment Eric A. Kihn NOAA/NGDC Paul O Brien- Aerospace Robert Weigel GMU – PowerPoint PPT presentation

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Title: Radiation Belt Tools and Climatology


1
Radiation Belt Tools and Climatology
Completing the Data Environment
  • Eric A. Kihn NOAA/NGDC
  • Paul OBrien- Aerospace
  • Robert Weigel GMU

2
State of the Data Environment
  • Observational data is available, but often
    scattered, minimally documented and difficult to
    access
  • Working with data often involves directly
    securing a PIs time or a minor research project
  • No sense of community support or access for those
    outside the field

3
Science Data Stewardship
  • A focus on reaching a broader customer base
  • An effort to reduce redundant functions on the
    data
  • An effort to improve understandability through
    metadata
  • A new focus on machine based access support
    multiple community based front-ends

4
Example Data Set POES- MEPAD
  • Data available at poes.ngdc.noaa.gov (78-08)
  • Data in POES binary
  • Has known contamination issues
  • Preview (QC) plots in linear time
  • 16 sec avg data as CDF or ASCII

5
Improved Data Product
  • Data available at poes.ngdc.noaa.gov N15 and
    later
  • Data in NetCDF
  • The cross channel contamination has been removed
    (Green)
  • Preview plots in L-shell and include Auroral Oval
  • Full time resolution data
  • Full metadata record in SPASE format

6
Data Matrix
  • 1.1 Reanalysis
  • 1.2 AMPTE
  • 1.3 SAMPEX
  • 1.4 GOES
  • 1.5 POES
  • 1.6 METOP
  • 1.7 HEO
  • 1.8 GPS
  • 1.9 LANL GEO
  • 1.10 Polar
  • 1.11 CRRES
  • 1.12 Akebono
  • 1.13 SCATHA
  • 1.14 ICO
  • 1.15 S3-3
  • 1.16 OV3-3

Details http//virbo.org/wiki
7
Climatology vs. Reanalysis
  • Gives you min/max/mean
  • Is derived from direct observations
  • Is useful for quick look-up of environmental
    specs
  • Doesnt contain the correlations between
    observables
  • Gives you a state representation
  • Is derived observation plus model
  • Is useful for extracting scenarios
  • Represents the physical correlations and
    boundaries

8
Introduction to Reanalysis
  • The US atmospheric science community produces a
    standardized reanalysis (via NCEP and NCAR)
  • The reanalysis is built by going back as far as
    the data allows and running a consistent standard
    data assimilative physics-based global analysis
    model
  • The reanalysis provides numerous climate and
    weather data for the entire globe on a standard
    grid. The reanalysis is run after the fact, when
    all data are available.
  • Scientists around the world use the reanalysis
    data for
  • Climate studies
  • Seasonal climate prediction
  • Climate variability studies
  • Initial/boundary conditions for
    regional/sub-grid-scale models
  • Diagnostic studies
  • Verification of climate models
  • Testbed for operational models

Figure courtesy US National Climate Reanalysis
Project
9
Space Weather Analysis
  • New HPI database (DMSP, NOAA)
  • New 100 magnetometer database.
  • 210 MM, Canopus, Tromso, Greenland, Image, etc..
  • Complete IMF Record
  • AMIE Runs _at_ 1.0 minute (1989-2003)
  • GITM Runs (1991-2002)
  • SIMM runs (1991-2001)

10
Pros and Cons of Reanalysis
  • Pros
  • The final product, a Standard Solar Cycle is
    conceptually simpler than a model that attempts
    to statistically characterize the temporal
    dependence
  • Reanalysis can be stored on any coordinate
    system (even time-alt-lat-lon!)
  • Specifications for different domains with their
    own natural coordinates can be combined on a
    single, common coordinate system (again, e.g.,
    time-alt-lat-lon)
  • Reanalysis captures real events rather than
    simulated ones, thus capturing realistic temporal
    correlations (especially useful for determining
    the frequency and duration of an effect)
  • Cons
  • Probably a lot more work than mean/worst case
    flux maps
  • Smooths out spatial variations (artificially
    increases spatial correlations)
  • May not accurately capture tails of distributions
    (we must be careful about this)
  • (Much) larger database
  • This is much less of a concern now

11
What makes it Reanalysis
  • Part of the fitting procedure is to determine the
    best estimate for the state x of the system
    conditioned on minimizing the error between the
    observations y and the estimates of those
    observations l. The measurement matrix H relates
    the fluxes to the observations (which are
    typically count rates in a detector)
  • It is important to note that in reanalysis we do
    NOT try to convert the observations into fluxes
    or phase space densities. Rather, we use the
    instrument response function to predict what
    the instrument would measure given the state x
    and penalize that state x for any deviation
    between those predictions and the observations.
    Knowledge of the instrument response (and its
    uncertainty) becomes paramount.
  • The observation penalty function (pe) is
    multiplied by another function that penalizes
    deviations from the output of a statistical p(x)
    or physics-based model for x

12
Example Statistical Reanalysis Results
_at_ GPS
  • Energetic Electron Statistical Reanalysis
  • Inner and Outer belt electron flux from 100 keV
    to 7 MeV
  • Derived from a static model of statistical
    variation
  • This reanalysis covers a full solar cycle
  • It was constrained with HEO-1 and HEO-3 data
  • Prior to the launch of HEO-3, the specification
    is essentially useless at this energy (703 keV)
  • There are also spectral features (e.g., bumps)
    that dont appear to be realistic

13
Coming Work in this Area
  • GEM Focus Group -Space Radiation Climatology
    (2006 - 2011, P. O'Brien and G. Reeves)
    -(Paul.OBrien_at_aero.org, reeves_at_lanl.gov)
  • ONERA Salammbo model has data assimilative
    models for GPS and GEO satellites
  • LANL-DREAM project is pursuing a more ambitious
    model that couples the radiation belt into a
    global model that includes the ring current,
    plasmasphere and convection electric fields.

14
Quality Control
  • In activities like a reanalysis a lot of issues
    fall out
  • New tools that more easily identify and retrieve
    satellite conjunctions will
  • Better metadata and metadata accessibility should
    document instrument temporal changes
  • Needs to be an on going community coordinated
    effort.

15
Virtual Radiation Belt Observatory (ViRBO)
Reanalysis
Custom Interface
Models
Models
ViRBO API
Documents
End User
Data
Data
Data
Software
Commercial Interface
16
Conclusions
  • The new data stewardship paradigm will mean a
    fundamental shift in the way research is done and
    provide many opportunities to operations.
  • The tremors are already past the data center
    level profoundly effecting the center missions.
  • Most researchers are accustomed to studying a
    relatively small data set for a long time, using
    statistical models to tease out patterns. At some
    fundamental level that paradigm has broken down.

Nature June, 1999
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