ubc Bayesian Approach for Reliable GNSS-based Vehicle Localization in Urban Areas 2015-03-20 [Electronic ed.] prv Universitätsbibliothek Chemnitz Universitätsbibliothek Chemnitz, Chemnitz Fakultät für Elektrotechnik und Informationstechnik Professur für Nachrichtentechnik male Dresden Nowadays, satellite-based localization is a well-established technical solution to support several navigation tasks in daily life. Besides the application inside of portable devices, satellite-based positioning is used for in-vehicle navigation systems as well. Moreover, due to its global coverage and the availability of inexpensive receiver hardware it is an appealing technology for numerous applications in the area of Intelligent Transportation Systems (ITSs). However, it has to be admitted that most of the aforementioned examples either rely on modest accuracy requirements or are not sensitive to temporary integrity violations. Although technical concepts of Advanced Driver Assistance Systems (ADASs) based on Global Navigation Satellite Systems (GNSSs) have been successfully demonstrated under open sky conditions, practice reveals that such systems suffer from degraded satellite signal quality when put into urban areas. Thus, the main research objective of this thesis is to provide a reliable vehicle positioning concept which can be used in urban areas without the aforementioned limitations. Therefore, an integrated probabilistic approach which preforms fault detection & exclusion, localization and multi-sensor data fusion within one unified Bayesian framework is proposed. From an algorithmic perspective, the presented concept is based on a probabilistic data association technique with explicit handling of outlier measurements as present in urban areas. By that approach, the accuracy, integrity and availability are improved at the same time, that is, a consistent positioning solution is provided. In addition, a comprehensive and in-depth analysis of typical errors in urban areas within the pseudorange domain is performed. Based on this analysis, probabilistic models are proposed and later on used to facilitate the positioning algorithm. Moreover, the presented concept clearly targets towards mass-market applications based on low-cost receivers and hence aims to replace costly sensors by smart algorithms. The benefits of these theoretical contributions are implemented and demonstrated on the example of a real-time vehicle positioning prototype as used inside of the European research project GAlileo Interactive driviNg (GAIN). This work describes all necessary parts of this system including GNSS signal processing, fault detection and multi-sensor data fusion within one processing chain. Finally, the performance and benefits of the proposed concept are examined and validated both with simulated and comprehensive real-world sensor data from numerous test drives. 620 Bayes-Verfahren, Lokalisation Bayes Filter, Fahrzeuglokalisierung, GPS, GNSS, Integrität, EGNOS, Zuverlässigkeit, Städtische Gebiete Bayesian Filtering, Vehicle Localization, GPS, GNSS, Multipath Mitigation, Integrity, EGNOS, NLOS, Reliability, Urban Environment urn:nbn:de:bsz:ch1-qucosa-162894 Technische Universität Chemnitz dgg Technische Universität Chemnitz, Chemnitz Marcus Obst 1984-03-15 aut Gerd Wanielik Prof. Dr.-Ing. dgs rev Peter Protzel Prof. Dr.-Ing. rev eng 2014-06-18 2014-12-19 born digital Zuverlässige satellitengestützte Fahrzeuglokalisierung in städtischen Gebieten Marcus Obst m@apfelsax.de doctoral_thesis