Fault detection and diagnosis methods for engineering systems

The main aim of this thesis is to investigate available techniques and develop a methodology for the fault detection and diagnostics for two engineering systems, namely railway point systems (RPS) and three-phase separators (TPS). The fault detection of the RPS was performed on the measured current...

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Main Author: Vileiniskis, Marius
Format: Thesis (University of Nottingham only)
Language:English
Published: 2015
Subjects:
Online Access:https://eprints.nottingham.ac.uk/30402/
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author Vileiniskis, Marius
author_facet Vileiniskis, Marius
author_sort Vileiniskis, Marius
building Nottingham Research Data Repository
collection Online Access
description The main aim of this thesis is to investigate available techniques and develop a methodology for the fault detection and diagnostics for two engineering systems, namely railway point systems (RPS) and three-phase separators (TPS). The fault detection of the RPS was performed on the measured current from the motor of point operating equipment (POE). The method of One Class Support Vector Machines has been chosen as the fault detection model. Elastic similarity measures, such as edit distance with real penalties and dynamic time warping, were chosen to compare the data of POE operations. A combination of Euclidean distance and elastic similarity measures has been proposed in order to take into account the absolute values and shape properties of the two compared time series. The proposed methodology has been tested on the in-field RPS data. The results indicated that the fault detection model was able to detect abnormal values and/or shape of the time series of measured current. However, not in all cases these changes could be related to a recorded failure of RPS in the database. The fault detection of TPS was performed given the sensor readings of flow and level transmitters of TPS. The method of Bayesian Belief Networks (BBN) has been proposed to overcome the late detection of faults with the threshold based alarm technique. An approach to observe sensor readings of TPS in several adjacent time intervals and to update the prior probabilities in the BBN after inserting the sensor readings as evidence was proposed. The proposed methodology has been tested on the data obtained from a TPS simulation model. The results indicated that the fault detection and diagnostics model was able to detect inconsistencies in sensor readings and link them to corresponding failure modes when single or multiple failures were present in the TPS.
first_indexed 2025-11-14T19:08:53Z
format Thesis (University of Nottingham only)
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institution University of Nottingham Malaysia Campus
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language English
last_indexed 2025-11-14T19:08:53Z
publishDate 2015
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spelling nottingham-304022025-02-28T11:36:33Z https://eprints.nottingham.ac.uk/30402/ Fault detection and diagnosis methods for engineering systems Vileiniskis, Marius The main aim of this thesis is to investigate available techniques and develop a methodology for the fault detection and diagnostics for two engineering systems, namely railway point systems (RPS) and three-phase separators (TPS). The fault detection of the RPS was performed on the measured current from the motor of point operating equipment (POE). The method of One Class Support Vector Machines has been chosen as the fault detection model. Elastic similarity measures, such as edit distance with real penalties and dynamic time warping, were chosen to compare the data of POE operations. A combination of Euclidean distance and elastic similarity measures has been proposed in order to take into account the absolute values and shape properties of the two compared time series. The proposed methodology has been tested on the in-field RPS data. The results indicated that the fault detection model was able to detect abnormal values and/or shape of the time series of measured current. However, not in all cases these changes could be related to a recorded failure of RPS in the database. The fault detection of TPS was performed given the sensor readings of flow and level transmitters of TPS. The method of Bayesian Belief Networks (BBN) has been proposed to overcome the late detection of faults with the threshold based alarm technique. An approach to observe sensor readings of TPS in several adjacent time intervals and to update the prior probabilities in the BBN after inserting the sensor readings as evidence was proposed. The proposed methodology has been tested on the data obtained from a TPS simulation model. The results indicated that the fault detection and diagnostics model was able to detect inconsistencies in sensor readings and link them to corresponding failure modes when single or multiple failures were present in the TPS. 2015-12-11 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en arr https://eprints.nottingham.ac.uk/30402/1/Fault%20Detection%20and%20Diagnosis%20Methods%20for%20Engineering%20Systems.pdf Vileiniskis, Marius (2015) Fault detection and diagnosis methods for engineering systems. PhD thesis, University of Nottingham. Fault location (Engineering) Railroads Switches Separators (Machines)
spellingShingle Fault location (Engineering)
Railroads
Switches
Separators (Machines)
Vileiniskis, Marius
Fault detection and diagnosis methods for engineering systems
title Fault detection and diagnosis methods for engineering systems
title_full Fault detection and diagnosis methods for engineering systems
title_fullStr Fault detection and diagnosis methods for engineering systems
title_full_unstemmed Fault detection and diagnosis methods for engineering systems
title_short Fault detection and diagnosis methods for engineering systems
title_sort fault detection and diagnosis methods for engineering systems
topic Fault location (Engineering)
Railroads
Switches
Separators (Machines)
url https://eprints.nottingham.ac.uk/30402/