Within an ultra-tightly (or deeply) integrated
GNSS/INS system, GNSS signal correlation delivers correlator
values as input to the integration filter. On the other side, the
integration filter controls the correlation process by determining
the Numerically Controlled Oscillator (NCO) values. As GNSS
signal correlation is a computational trivial but a time-consuming
process, we propose for R&D in this area an alternative approach
to first generate for each GNSS signal multi-correlator values
and store them for the later GNSS/INS filter development work.
Once the filter runs, it interpolates from the multi-correlator
values the actual needed correlation values. The multi-correlator
values thus act like a data compression for the GNSS signals.
This paper discusses the mathematical framework for this data
compression, which is loosely described as a sufficient statistic.
The statistic consists of the correlation values themselves plus the
NCO values that have been used during the correlation process.
The generation and interpolation process will be described in
the paper with all mathematical details, as well as interpolation
limits in code phase and Doppler direction. The approach is
validated by comparison of Global Positioning System (GPS) C/A
code pseudorange and carrier phase data from direct tracking to
results from a MATLAB based receiver using the multi-correlator
values as sufficient statistics.
«Within an ultra-tightly (or deeply) integrated
GNSS/INS system, GNSS signal correlation delivers correlator
values as input to the integration filter. On the other side, the
integration filter controls the correlation process by determining
the Numerically Controlled Oscillator (NCO) values. As GNSS
signal correlation is a computational trivial but a time-consuming
process, we propose for R&D; in this area an alternative approach
to first generate for each GNSS signal multi-correlato...
»