Full Record Display for the EPA National Library Catalog

RECORD NUMBER: 48 OF 91

Main Title GPS Stochastic Modelling Signal Quality Measures and ARMA Processes / [electronic resource] :
Type EBOOK
Author Luo, Xiaoguang.
Publisher Springer Berlin Heidelberg : Imprint: Springer,
Year Published 2013
Call Number G70.39-70.6
ISBN 9783642348365
Subjects Geography ; Remote sensing
Internet Access
Description Access URL
http://dx.doi.org/10.1007/978-3-642-34836-5
Collation XXIII, 331 p. 129 illus., 127 illus. in color. online resource.
Notes Due to license restrictions, this resource is available to EPA employees and authorized contractors only
Contents Notes Introduction -- Mathematical Background -- Mathematical Models for GPS Positioning -- Data and GPS Processing Strategies -- Observation Weighting Using Signal Quality Measures -- Results of SNR-based Observation Weighting -- Residual-based Temporal Correlation Modelling -- Results of Residual-based Temporal Correlation Modelling -- Conclusions and Recommendations -- Quantiles of Test Statistics -- Derivations of Equations -- Additional Graphs -- Additional Tables. Global Navigation Satellite Systems (GNSS), such as GPS, have become an efficient, reliable and standard tool for a wide range of applications. However, when processing GNSS data, the stochastic model characterising the precision of observations and the correlations between them is usually simplified and incomplete, leading to overly optimistic accuracy estimates. This work extends the stochastic model using signal-to-noise ratio (SNR) measurements and time series analysis of observation residuals. The proposed SNR-based observation weighting model significantly improves the results of GPS data analysis, while the temporal correlation of GPS observation noise can be efficiently described by means of autoregressive moving average (ARMA) processes. Furthermore, this work includes an up-to-date overview of the GNSS error effects and a comprehensive description of various mathematical methods.
Place Published Berlin, Heidelberg
Corporate Au Added Ent SpringerLink (Online service)
Title Ser Add Ent Springer Theses, Recognizing Outstanding Ph.D. Research,
Host Item Entry Springer eBooks
PUB Date Free Form 2013
Series Title Untraced Springer Theses, Recognizing Outstanding Ph.D. Research,
BIB Level m
Medium computer
Content text
Carrier online resource
Cataloging Source OCLC/T
OCLC Time Stamp 20130727071527
Language eng
Origin SPRINGER
Type EBOOK
OCLC Rec Leader 03039nam a22004575i 45