A fault detection method for railway point systems

Failures of railway point systems (RPSs) often lead to service delays or hazardous situations. A condition monitoring system can be used by railway infrastructure operators to detect the early signs of the deteriorated condition of RPSs and thereby prevent failures. This paper presents a methodology...

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Main Authors: Vileiniskis, Marius, Remenyte-Prescott, Rasa, Rama, Dovile
Format: Article
Published: SAGE 2016
Subjects:
Online Access:https://eprints.nottingham.ac.uk/35319/
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author Vileiniskis, Marius
Remenyte-Prescott, Rasa
Rama, Dovile
author_facet Vileiniskis, Marius
Remenyte-Prescott, Rasa
Rama, Dovile
author_sort Vileiniskis, Marius
building Nottingham Research Data Repository
collection Online Access
description Failures of railway point systems (RPSs) often lead to service delays or hazardous situations. A condition monitoring system can be used by railway infrastructure operators to detect the early signs of the deteriorated condition of RPSs and thereby prevent failures. This paper presents a methodology for early detection of the changes in the measurement of the current drawn by the motor of the point operating equipment (POE) of an RPS, which can be used to warn about a possible failure in the system. The proposed methodology uses the one-class support vector machine classification method with the similarity measure of edit distance with real penalties. The technique has been developed taking into account specific features of the data of infield RPSs and therefore is able to detect the changes in the measurements of the current of the POE with greater accuracy compared with the commonly used threshold-based technique. The data from infield RPSs, which relate to incipient failures of RPSs, were used after the deficiencies in the data labelling were removed using expert knowledge. In addition, possible improvements in the proposed methodology were identified in order for it to be used as an automatic online condition monitoring system.
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spelling nottingham-353192020-05-04T20:03:55Z https://eprints.nottingham.ac.uk/35319/ A fault detection method for railway point systems Vileiniskis, Marius Remenyte-Prescott, Rasa Rama, Dovile Failures of railway point systems (RPSs) often lead to service delays or hazardous situations. A condition monitoring system can be used by railway infrastructure operators to detect the early signs of the deteriorated condition of RPSs and thereby prevent failures. This paper presents a methodology for early detection of the changes in the measurement of the current drawn by the motor of the point operating equipment (POE) of an RPS, which can be used to warn about a possible failure in the system. The proposed methodology uses the one-class support vector machine classification method with the similarity measure of edit distance with real penalties. The technique has been developed taking into account specific features of the data of infield RPSs and therefore is able to detect the changes in the measurements of the current of the POE with greater accuracy compared with the commonly used threshold-based technique. The data from infield RPSs, which relate to incipient failures of RPSs, were used after the deficiencies in the data labelling were removed using expert knowledge. In addition, possible improvements in the proposed methodology were identified in order for it to be used as an automatic online condition monitoring system. SAGE 2016-03 Article PeerReviewed Vileiniskis, Marius, Remenyte-Prescott, Rasa and Rama, Dovile (2016) A fault detection method for railway point systems. Proceedings of the Institution of Mechanical Engineers, Part F: Journal of Rail and Rapid Transit, 230 (3). pp. 852-865. ISSN 2041-3017 Railway point systems fault detection point operating equipment one-class support vector machine edit distance with real penalties fault classification http://pif.sagepub.com/content/230/3/852.short doi:10.1177/0954409714567487 doi:10.1177/0954409714567487
spellingShingle Railway point systems
fault detection
point operating equipment
one-class support vector machine
edit distance with real penalties
fault classification
Vileiniskis, Marius
Remenyte-Prescott, Rasa
Rama, Dovile
A fault detection method for railway point systems
title A fault detection method for railway point systems
title_full A fault detection method for railway point systems
title_fullStr A fault detection method for railway point systems
title_full_unstemmed A fault detection method for railway point systems
title_short A fault detection method for railway point systems
title_sort fault detection method for railway point systems
topic Railway point systems
fault detection
point operating equipment
one-class support vector machine
edit distance with real penalties
fault classification
url https://eprints.nottingham.ac.uk/35319/
https://eprints.nottingham.ac.uk/35319/
https://eprints.nottingham.ac.uk/35319/