Title: Stable North American Reference Frame (SNARF): Version 1
1Stable North American Reference Frame (SNARF)
Version 1
- SNARF Working Group
- Presented by
- Jim Davis and Tom Herring
2Outline
- Jim Davis
- Problem, approach, initial results
- Tom Herring
- Products, use, future work
3Purpose
- To define a geodetic reference frame for stable
North America - SNARF will form a common geodetic reference frame
for PBO/EarthScope studies
4Definitions and Assumptions
- Large parts of North American continental crust
are currently not deforming (stable) from plate
tectonic forces. - These parts are mostly east of the Rocky
Mountains - The entire North American continent is deforming
significantly due to glacial isostatic adjustment
(GIA)
5Ice-1 LT 120 km nUM 0.8 ? 1021 Pa s nLM 10
? 1021 Pa s
6Definitions and Assumptions
- Given a geodetic solution with site velocities
VGPS at locations (l,f), we can describe the
solution using - The velocity rotation and translation parameters
are unknown and must be estimated as part of the
SNARF definition
7GIA Predictions Requirements
- A model for the Earths viscoelastic structure
- Theory and code to calculate the time-dependent
Greens functions for deformation from surface
loads - A history of the time-dependent ice load,
starting preferably prior to the most recent
glacial maximum 20 kYr ago - Theory and code to convolve the time-dependent
load with the viscoelastic Greens functions,
while simultaneously solving for effects due to
the redistribution of the surface load (ice?water)
8GIA Predictions Practical Issues
- No consensus concerning viscosity structure
- No consensus concerning ice history
- Ice Earth models are generally not independent
(inversions nonunique) - Current Earth models for GIA are spherically
symmetric, but lateral variations are important
(Latychev et al., 2004)
9SNARF Approach
- Rather than adopt an unrealistic ice/Earth model
pair that we know will introduce systematic
errors, SNARF is investigating a novel approach - GPS velocities will be assimilated into an a
priori GIA model based on a suite of predictions
to yield an observation-driven model
10Assimilation of GPS Data into GIA Models
- Bayesian approach
- We use a Kalman-filter to assimilate the GPS
velocities into a prior GIA model - The GIA model is the average model based on a
suite of GIA models spanning a range of Earth
models - The variability of the GIA models is used to
calculate a statistical distribution (and
covariance matrix) for the starting GIA field - We estimate GIA deformations on a grid (2?2)
11GPS Data Assimilation
- We simultaneously estimate six rotation and
translation para-meters, and GIA velocities at n
grid locations and at m GPS sites - At right, the parameter vector (u east
velocity, v north, w radial) - The observations consist of (u,v,w) for GPS sites
- The GIA values at the grid locations are adjusted
through the covariances calculated from the suite
of model predictions - SNARF 1.0 solution n 1537, m 99,
parameters 4617
12Assimilation Tests
- For proofs-of-concept tests, we focus on radial
motions - These tests will use no real GIA information
(no physics - The starting GIA model is the null field w(l,f)
0 - We adopt a Gaussian covariance model
- Lij ?w(li,fi) w(lj,fj)? s2 exp(-dij2/D2)
- Where dij is the angular distance between the
locations, D 10, and s 1 mm/yr - In the first test, we assimilate a single GPS
observation at the location of site Churchill,
Hudsons Bay, Canada (w 9.1 0.2 mm/yr)
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14Assimilation Tests
- In the second test, we assimilate a subset of NA
radial site velocities - The assimilated field (still no physics) has
many features of a realistic GIA field
15Assimilation
- Ice model Ice-1 Peltier Andrews, 1976 gives
slightly better results than Ice-3G Tushingham
Peltier, 1991 - Earth models Spherically symmetric three-layer,
range of elastic lithospheric thicknesses, upper
and lower mantle viscosities (see Milne et al.,
2001) - Elastic parameters PREM
- GPS data set Velocities from good GPS sites,
recent NAREF solution from Mike Craymer - Placed in approximate NA frame by Tom Herring
(unnecessary step but simpler)
16Prior Correlation wrt Churchill
17SNARF 1.0 GIA Field
18Solution Statistics
Prefit statistics WRMS (hor) 1.22 mm/yr WRMS
(rad) 3.81 mm/yr WRMS (all) 1.74
mm/yr Postfit statistics WRMS (hor) 0.71
mm/yr WRMS (rad) 1.30 mm/yr WRMS (all) 0.80
mm/yr
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22Conclusions (Part 1)
- Current accuracy of SNARF 1.0 is 1 mm (30
radial/-30 horizontal) - Estimated rotations/translations (from nominal
no-GIA NA-fixed) ? 1.5 mm/yr - GPS assimilation technique seems to work, may be
useful for GIA work - Straightforward to assimilate other data types
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