to multipath compared to a 6 channel receiver.
Also, differences in the receiver tracking loop
design may also affect the performance of a
particular receiver in a sub-optimal environment
since this may affect both multipath
susceptibility and satellite re-acquisition times.
Several tests have been conducted to assess the
performance of GPS in urban environments, and one
such test is reported in Melgard et al. (1994). In
this case, three receivers were assessed, i.e. two six
channel receivers and one ten channel receiver, in
both a residential and urban environment. The
three receivers were mounted in a truck which
drove a trajectory consisting of both residential
and urban areas. Three test runs were conducted,
each lasting about 1.5 hours. The results were
analysed according the availability of GPS,
which is defined as the percentage of time that at
least four satellites were observed. Table 4 gives
the statistics for each of the three receiver types.
The table clearly shows that the performance from
each receiver is not equal, and that the 10 channel
receiver has better availability statistics than
the six channel receivers, as expected. The
statistics for the entire trajectory are about 9096 for
the 10 channel receiver while it is about 50-7096
for the six channel receivers.
Table 4 also shows that the performance is
significantly better in a residential area as
compared to the downtown area. The availability
drops to 50-70% from 92-100 % for the ten channel
receiver and 16-43% for the six channel receivers
from 23-91%. These tests confirm that receiver
selection is critical for cases when sub-optimal
conditions will be observed.
Table 4: GPS Availability Statistics (%)
Test# Trajectory Receiver
1 2 3
Downtown 51 16 40
1 Residential 98 91 78
Entire Traj. 88 67 73
Downtown 69 39 43
2 Residential 100 68 61
Entire Traj. 92 66 75
Downtown 57 31 35
3 Residential 92 24 23
Entire Traj. 88 51 60
4.3 Precision Farming
The application of GPS to the agricultural
industry is beginning to accelerate due to the
168
reduction in receiver costs. The University of
Calgary, together with Alberta Agriculture, is
currently developing a system which can be used to
measure the variability of crop production as a
function of location (Gehue et al., 1994). The
system consists of several components which
include GPS receivers for positioning, a yield
monitoring system which outputs the instantaneous
Bu per acre, an EM conductivity meter for salinity
measurements, and soil samples for determination
of soil types and nutrients. The DGPS/yield
monitoring data can be collected under normal
combining operations. Two 10-channel C/A code
narrow correlator spacing NovAtel GPSCard™
sensors were used as they have shown to provide
sub-metre accuracy in previous field tests using a
robust carrier phase smoothing of the code
approach (e.g. Cannon and Lachapelle, 1992). Once
all this data has been collected and analysed,
variable fertilizing can be used in subsequent years
to optimize productivity. DGPS can be used as a
real-time navigation and guidance tool for this
application.
A GIS is used to organize and collate the variety of
data collected from year to year. Various layers of
information can be draped (using surfacing
routines) over each other through the DGPS
position. It is then possible to overlay crop yields
with salinity, for example, and draw conclusions
based on the relationship (i.e., high salinity
results in low yield). Further, predictions can be
made on how to handle these regions when it is
time to fertilize and/or seed. The GIS can also be
updated with external information such as aerial
photography or remote sensing. Current
information layers of topography, salinity, soil
type, nutrients, and crop yields were collected for
the 1993 harvest.
The goal of the precision farming project is to
optimize the yield-input relationship for any
given field. Since this is the first harvest season of
the project, results to date only give an indication
of the variation within the field for this year,
with the condition that it has been treated
equally in the past. A surfacing routine is used to
view the yield variations with the result shown in
Figure 5 for a subset of the test site. The figure
clearly shows that the field is not homogeneous in
yield. Surface analysis of crop yields allows
agricultural researchers to identify problem areas
and to maintain data quality by detecting results
such as the sudden peak in the NE corner of the
field which is most likely caused by high
moisture in the swath which returns a false
reading from the yield sensor.
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