DocumentCode
3603079
Title
Slip and Slide Detection and Adaptive Information Sharing Algorithms for High-Speed Train Navigation Systems
Author
Kwanghoon Kim ; Seung-Hyun Kong ; Sang-Yun Jeon
Author_Institution
LIG Nex1, Yongin, South Korea
Volume
16
Issue
6
fYear
2015
Firstpage
3193
Lastpage
3203
Abstract
The position and velocity information of high-speed trains (HSTs) are essential to passenger safety, operational efficiency, and maintenance, for which an accurate navigation system is required. In this paper, we propose a two-stage federated Kalman filter (TS-FKF) for an HST navigation system that uses multi-sensors, such as tachometer, inertial navigation system, differential GPS, and RFID, with a feedback scheme. However, the FKF with a feedback scheme often shows severe performance degradation in the presence of undetected large sensor errors. Tachometers often have large slip or slide errors during the train´s acceleration, deceleration, and moving along a curved railway, and there are significant performance differences between different sensors. To make the proposed system robust to these errors, we propose a slip and slide detection algorithm for the tachometer and an adaptive information-sharing algorithm to deal with a large tachometer error and performance difference between sensors. We provide theoretical analysis and simulation results to demonstrate the performance of the proposed navigation system with the proposed algorithms.
Keywords
Kalman filters; navigation; radiofrequency identification; railways; HST navigation system; TS-FKF; adaptive information sharing algorithms; feedback scheme; high-speed train navigation systems; tachometer error; two-stage federated Kalman filter; Detection algorithms; Global Positioning System; Kalman filters; Radiofrequency identification; Rail transportation; Sensor fusion; Train navigation system; federated Kalman filter; information sharing; positioning; sensor fusion; slip and slide detection;
fLanguage
English
Journal_Title
Intelligent Transportation Systems, IEEE Transactions on
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/TITS.2015.2437899
Filename
7123638
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