Dynamic impedance measurement for condition monitoring

The three main modes of public transportation in Singapore are the Mass Rapid Transit (MRT), buses and taxi. In reference to SMRT operating data for the financial year of 2017, an average weekday ridership is 2.258 million, which is almost equivalent to half of the population are taking MRT as their...

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Main Author: Chia, Jun Jie
Other Authors: See Kye Yak
Format: Final Year Project
Language:English
Published: 2019
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Online Access:http://hdl.handle.net/10356/77851
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-778512023-07-07T16:18:30Z Dynamic impedance measurement for condition monitoring Chia, Jun Jie See Kye Yak School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering The three main modes of public transportation in Singapore are the Mass Rapid Transit (MRT), buses and taxi. In reference to SMRT operating data for the financial year of 2017, an average weekday ridership is 2.258 million, which is almost equivalent to half of the population are taking MRT as their daily public transport to get around. With the high amount of ridership, the reliability of the MRT is the essential factor for operation in Singapore’s transportation network. A rail failure could cost a huge maintenance cost to the operator, train delays and most importantly, comprising passengers’ safety. In the recent years, there is a significant rising of MRT breakdown. One such major disruption was due to sagging of the “third rail”, damaging the Current Collect Device. In order to prevent such incident from happening again, it is critical to detect any fault on the third rail condition so that preventive actions can be taken before disastrous situation will happen and improving the reliability of the MRT system. This report studies the real time dynamic impedance characterization of various fault condition of the in-house developed third rail jigs. The dynamic impedance characterization is collected between the CCD shoes and the third rail. The in-house third rail jigs are a scaled down version of the actual third rail from the actual MRT system. The scope of the report will cover on using LabVIEW for data acquisition for different condition of third rail jig, developing MATLAB code to calculate the dynamic impedance in terms of its magnitude and phase in time domain and analyzing the results obtained. The methodology of dynamic impedance characterization by A/P See Kye Yak, “Two port network, with inductive coupling probes” and “Time-Variant In-Circuit Impedance Monitoring” will be highly discussed and used in this project. The organization of the report will be as followed by introduction, literature review, project set up, results and finally with conclusion and future work. Bachelor of Engineering (Electrical and Electronic Engineering) 2019-06-07T02:53:16Z 2019-06-07T02:53:16Z 2019 Final Year Project (FYP) http://hdl.handle.net/10356/77851 en Nanyang Technological University 67 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering
spellingShingle DRNTU::Engineering::Electrical and electronic engineering
Chia, Jun Jie
Dynamic impedance measurement for condition monitoring
description The three main modes of public transportation in Singapore are the Mass Rapid Transit (MRT), buses and taxi. In reference to SMRT operating data for the financial year of 2017, an average weekday ridership is 2.258 million, which is almost equivalent to half of the population are taking MRT as their daily public transport to get around. With the high amount of ridership, the reliability of the MRT is the essential factor for operation in Singapore’s transportation network. A rail failure could cost a huge maintenance cost to the operator, train delays and most importantly, comprising passengers’ safety. In the recent years, there is a significant rising of MRT breakdown. One such major disruption was due to sagging of the “third rail”, damaging the Current Collect Device. In order to prevent such incident from happening again, it is critical to detect any fault on the third rail condition so that preventive actions can be taken before disastrous situation will happen and improving the reliability of the MRT system. This report studies the real time dynamic impedance characterization of various fault condition of the in-house developed third rail jigs. The dynamic impedance characterization is collected between the CCD shoes and the third rail. The in-house third rail jigs are a scaled down version of the actual third rail from the actual MRT system. The scope of the report will cover on using LabVIEW for data acquisition for different condition of third rail jig, developing MATLAB code to calculate the dynamic impedance in terms of its magnitude and phase in time domain and analyzing the results obtained. The methodology of dynamic impedance characterization by A/P See Kye Yak, “Two port network, with inductive coupling probes” and “Time-Variant In-Circuit Impedance Monitoring” will be highly discussed and used in this project. The organization of the report will be as followed by introduction, literature review, project set up, results and finally with conclusion and future work.
author2 See Kye Yak
author_facet See Kye Yak
Chia, Jun Jie
format Final Year Project
author Chia, Jun Jie
author_sort Chia, Jun Jie
title Dynamic impedance measurement for condition monitoring
title_short Dynamic impedance measurement for condition monitoring
title_full Dynamic impedance measurement for condition monitoring
title_fullStr Dynamic impedance measurement for condition monitoring
title_full_unstemmed Dynamic impedance measurement for condition monitoring
title_sort dynamic impedance measurement for condition monitoring
publishDate 2019
url http://hdl.handle.net/10356/77851
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