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An overview: Modern techniques for railway vehicle on-board health monitoring systems
journal contribution
posted on 2018-04-23, 00:00 authored by Chunsheng Li, S Luo, Colin ColeColin Cole, Maksym SpiryaginMaksym SpiryaginHealth monitoring systems with low-cost sensor networks and smart algorithms are always needed in both passenger trains and heavy haul trains due to the increasing need for reliability and safety in the railway industry. This paper focuses on an overview of existing approaches applied for railway vehicle on-board health monitoring systems. The approaches applied in the data measurement systems and the data analysis systems in railway on-board health monitoring systems are presented in this paper, including methodologies, theories and applications. The pros and cons of the various approaches are analysed to determine appropriate benchmarks for an effective and efficient railway vehicle on-board health monitoring system. According to this review, inertial sensors are the most popular due to their advantages of low cost, robustness and low power consumption. Linearisation methods are required for the model-based methods which would inevitably introduce error to the estimation results, and it is time-consuming to include all possible conditions in the pre-built database required for signal-based methods. Based on this review, future development trends in the design of new low-cost health monitoring systems for railway vehicles are discussed. © 2017 Informa UK Limited, trading as Taylor & Francis Group.
History
Volume
55Issue
7Start Page
1045End Page
1070Number of Pages
24eISSN
1744-5159ISSN
0042-3114Publisher
Taylor & FrancisPublisher DOI
Peer Reviewed
- Yes
Open Access
- No
External Author Affiliations
Southwest Jiaotong University, ChinaAuthor Research Institute
- Centre for Intelligent Systems
Era Eligible
- Yes
Journal
Vehicle System DynamicsUsage metrics
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