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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B5. Istanbul 2004
/
PERPENDICULAR
TO GEOID
SURFACE OF
ELLIPSOID
SURFACE
OF GEOID
7* CENTER OF THE EARTH
CENTER OF THE ELLIPSOID
Figure 1. Deflection of the vertical.
>
Inertial navigation follows Newton’s second law of motion
defined in the inertial (nonrotating) frame (1):
Ÿ=a+g(r) (1)
z2
g=8g +Ag and Ag=|-g,n (2)
Ag
where — X —the total acceleration vector
the acceleration sensed by the accelerometer
e| 8l
I
= the position vector
g(x) = the total gravitational acceleration vector
g, "the gravity model
Ag - the difference between the actual gravity and
the gravity model used
£, 7 the nominal value of gravity
& and 77 = north and east DOVs, respectively
Ag = the gravity disturbance, which corresponds to
the gravity error óg (equation 3) in inertial
navigation, if only the normal gravity term is used
for gravity compensation.
Equation (3), expressing the navigation position errors to the
first order due to errors in the system, is obtained by
perturbing equation (1), i.e., by applying the differential
operator, à. The solution of differential equation (3) provides
expressions for the linearized error equations (Jekeli, 2001).
y
nd asm: (3)
ox
The primary observable provided by an accelerometer is the
difference between kinematic inertial acceleration and mass
gravitation; thus, errors in the observed accelerations are
affected by errors in the gravity model used, translating to
the sensor positioning errors, as seen in equation (3). These,
in turn, translate into errors in the coordinates of objects and
points extracted from the directly oriented imagery. if a
GPS/INS system is used to support a camera or a LiDAR
(Light Detection and Ranging) system. Several models,
ranging from normal gravity to high-order spherical
harmonic expansion, can be used to approximate the Earth's
gravity field. Historically, normal gravity has been sufficient
for inertial navigation, as already mentioned. However,
modern mapping systems based on high-accuracy GPS/INS
may require better representation of the Earth’s gravity in the
navigation algorithm, especially during extended losses of
GPS lock.
The total error dynamics equation in matrix form is as
follows (Jekeli, 2001):
Ly =F" + Gn (4)
dt
where superscript # denotes the navigation frame
& = vector of attitude, velocity and position errors
u = vector of gyro, accelerometer and gravity
errors, which can be estimated together in a
GPS/INS filter (see, for example, Grejner-
Brzezinska and Wang, 1998)
F and G - free-inertial dynamics matrices of the
system.
A detailed analysis of (4) reveals coupling among the
unknowns that, in general, may complicate the estimation
process (see, Jekeli, 2001). The errors in DOVs enter directly
into the horizontal velocity errors in linear combination with
the attitude errors. This, generally speaking, makes the
parameter separation difficult in the estimation procedure
(Grejner-Brzezinska and Wang, 1998). Thus, using DOVs in
gravity compensation, which introduce less tilt error, leads to
less coupling of the horizontal accelerations into the vertical
axis. Therefore, it can be expected that (high-accuracy) DOV
compensation should decrease not only the positioning error,
but also improve the attitude determination.
2. PROCESSING STRATEGY AND TEST RESULTS
2.1 Test data and processing software
The GPS/INS system used in the analyses presented here is
the OSU-developed AIMS™ system (see, for example,
Grejner-Brzezinska and Wang 1998; Toth 1998). The
positioning module of this system is based on a tight
integration of dual frequency differential GPS carrier phases
and raw velocity and angular rates provided by a medium-
accuracy and high-reliability strapdown Litton LN-100 INS.
LN-100 is based on Zero-lock™ Laser Gyro (ZLG™) and
A-4 accelerometer triad (0.8 nmi/h CEP, gyro bias —
0.003°/h, accelerometer bias — 25pgg) The land based
GPS/INS data used in this study were collected on January
31, 2001 near the OSU campus and the airborne data set was
collected in Tucson, Arizona on May 6, 2002. The average
DOVs along the land trajectory were about 6 arcsec (1) and
below 0.5 arcsec (£); and 4-6 arcsec (1) and 3-4 arcsec (&)
for the airborne test, with a sigma of | arcsec. Figure 2
illustrates n together with the corresponding positioning
error for the land-based test.