A Proposed Scheme for Fault Discovery and Extraction Using ANFIS: Application to Train Braking System
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Published:2020-07-20
Issue:1
Volume:7
Page:48
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ISSN:2330-2046
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Container-title:Studies in Engineering and Technology
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language:
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Short-container-title:SET
Author:
Sparthan Tse,Nzie Wolfgang,Sohfotsing Bertin,Garro Olivier,Beda Tibi
Abstract
This paper showcases the use of model oriented techniques for real time fault discovery and extraction on train track unit. An analytical system model is constructed and simulated in Mathlab to showcase the fair and unfair status of the system. The discovery and extraction phases are centered on a hybrid adaptive neuro-fuzzy inference feature extraction and segregated module. Output module interprites zero (0) as a good status of the traintrack unit and one (1) as an unpleasant status. Final results showcase the robustness and ability to discover and extract multitude of unpleasant scenarios that hinder the smooth operations of train track units due to its high selectivity and sensitivity quality.
Publisher
Redfame Publishing
Cited by
1 articles.
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1. Development of an Intelligent Safety Monitoring Device for Train-Track System in Cameroon;Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering;2024