Title: GNSS Observations of Earth Orientation
1GNSS Observations of Earth Orientation
- 1. Polar motion observability using GNSS
- concepts, complications, error sources
- subdaily considerations
- 2. Performance of IGS polar motion series
- compare Final, Rapid, Ultra-rapid products
- assess random systematic errors
- 3. Utility of IGS length-of-day (LOD)
- assess value for combinations with VLBI UT1
- 4. Impact of errors in subdaily EOP tide model
- effects on orbits, EOPs, other IGS products
Jim Ray, NOAA/NGS
Wuhan University, May 2013
2Earth Orientation Parameters (EOPs)
- EOPs are the five angles used to
- relate points in the Terrestrial
- Celestial Reference Frames
- CRF P N(?, e) R(UT1) W(xp , yp)
TRF - Precession-Nutation describes the motion
- of the Earths rotation axis in inertial
space - Rotation about axis given by UT1 angle
- Wobble of pole in TRF given by terrestrial
- coordinates of polar motion (xp , yp)
- But only three angles, not five, are independent
- this conventional form is used to distinguish
excitation sources - Nutation ? driven by gravitational
potentials outside Earth system - Polar Motion ? driven by internal
redistributions of mass/momentum - separation of Nutation Polar Motion estimates
given by convention
(xp, yp)
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3Separation of Nutation Polar Motion
- Motions defined in frequency domain
- note that diurnal retrograde motion in TRF is
fixed in CRF - -1.0 cycle per sidereal day (TRF) 0.0
cycles per sidereal day (CRF) - Because GNSS cannot observe CRF (quasar frame),
it does not measure precession-nutation or UT1 - but GNSS can sense nutation-rate UT1-rate (LOD)
changes - GNSS is superb for Polar Motion due to robust
global tracking network - pole position is essentially an unmarked point in
the TRF
frequency in Terrestrial Frame
? polar motion
polar motion ?
frequency in Celestial Frame
precession nutation
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4Observability of Polar Motion (PM)
- Suppose a priori pole position has some unknown
error - Due to diurnal Earth spin, PM error causes
sinusoidal apparent motion for all TRF points as
viewed from GNSS satellite frame - (xp , yp) partials are simple
- diurnal sine waves
- amplitude phase depend
- only on station XYZ location
- quality of PM estimates
- depends mostly on Earth
- coverage by GNSS stations
- IGS formal errors sx,y 5 µas
actual pole position
assumed pole position
Signature of PM error in GNSS Observations
? 1 solar day ?
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5Some Observability Complications
- GPS satellites have period of 0.5 sidereal day
- ground tracks repeat every 1 sidereal day
- differs from 1 solar day by only 4 minutes
- other GNSS constellations have longer or shorter
periods - any common-mode near-diurnal orbit errors can
alias into PM estimates - Any other net diurnal sinusoidal error in GNSS
orbits will also alias into PM estimates - main error comes from model for 12h/24h EOP tides
- mostly caused by EOP effect of ocean tidal
motions - current IERS model has errors at lt 20
- Other common mode effects could also be
important - diurnal temperature effects (e.g., heights of
GNSS stations) - diurnal troposphere modeling errors
- various other tidal modeling errors
- local station multipath signatures due to ground
repeat period
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6On Subdaily" Polar Motion
- First, subdaily polar motion is not a
well-defined concept - overlaps with nutation band in retrograde sense
- inseparable from a global rotation of satellite
frame - so constraint normally applied to block diurnal
retrograde frequencies - this is effectively a filter with poor response
for GNSS arcs of 1 day - D. Thaller et al., J. Geodesy, 2007
- Second, observability is reduced for intervals lt1
solar day - partial diurnal sinusoidal cannot be separated
from other parameters - so parameter continuity is required for direct
subdaily estimates - most common approach (Bern group) is to use 1 hr
continuous segments - this operates as another filter, but with other
disadvantages (next slides) - So subdaily results are easily affected by
spurious effects
subdaily prograde PM ?
? subdaily retrograde PM
frequency in Terrestrial Frame
? polar motion
polar motion ?
precession nutation
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7Effects of Continuity Filter (1/3)
- Compare offset rate to continuous linear
segments (CLS) - IGS requests daily PM estimates as mid-day
offsets rates - but some Analysis Centers prefer CLS approach
- results are not equivalent near Nyquist frequency
- CLS results are non-physical at high freqs
- Consider cosine wave at Nyquist freq
- f p
- CLS offset rate give exactly same
- estimates for this phase
- Now shift cosine by -90
- f p/2
- CLS estimates are all 0.0
- but offset rate estimates are not
- zero not constant
CLS estimation
Offset rate estimation
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8Effects of Continuity Filter (2/3)
- CLS attenuates Nyquist signal amplitudes by
factor of 2 - power reduced by factor of 4 at Nyquist frequency
- power starts dropping at 0.6 x Nyquist frequency
higher - Filter effect clearly seen in IGS PM results
- most Analysis Centers follow f-4 power law for
sub-seasonal periods, - e.g., GFZ (below right, during 11 Mar 2005
29 Dec 2007) - but CODE used CLS parameters had strong
high-freq smoothing
Smoothed PSD for Reprocessed CODE PM
Smoothed PSD for Reprocessed GFZ PM
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9Effects of Continuity Filter (3/3)
- CLS method is not a simple smoothing filter
- it distorts signal content by attenuating certain
phases over others - causes all parameters to be strongly correlated
at all times - should not be used when signals of interest are
near Nyquist sampling - Unfiltered IGS daily PM can be extrapolated to
estimate subdaily PM variance (non-tidal) - sub-seasonal PSD follows f-4 power law
(integrated random walk process) - fits to GFZ PSD over 0.1 to 0.5 cpd
- PSDx(f) (48.11 µas2/cpd) (f/cpd)-4.55    Â
- PSDy(f) (64.21 µas2/cpd) (f/cpd)-4.10
- if valid at f gt 0.5 cpd, then
- integrate over 1 cpd ? infinity
- s2x(subdaily) 13.55 µas2    Â
- s2y(subdaily) 20.73 µas2
- much too small to be detectable
Smoothed PSD for Reprocessed GFZ PM
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10Estimating Subdaily" PM
- Three methods probably feasible
- Kalman filter
- use normal deterministic PM parameters for daily
offset rate - add stochastic model (f-4 integrated random walk)
to estimate deviations - probably can be done with JPLs GIPSY, but I know
of no results - CLS
- only method used till now
- but problems noted above are serious probably
gives unreliable results - invert from overlapping daily fits
- in principle, probably could invert normal daily
offset rate fits - but use overlapping data arcs (highly correlated
estimates) - would probably need to add f-4 integrated random
walk model to inversion - not known to be tried
- could be tested using IGS Ultra-rapid PM series
(24 hr arcs with 6 hr time steps) - Subdaily PM (non-tidal) power is so small, no
clear reason to try to measure
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