2021
DOI: 10.2339/politeknik.693223
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An Artificial Neural Network Model for Maintenance Planning of Metro Trains

Abstract: In urban transportation, trains have an increasingly important place due to the increase in the number of passengers. Meeting the number of passengers is directly related to the number of trains operated on a line. Thus, the frequency of operation of trains affects the level of wear of the equipment. This makes train maintenance more important. Equipment faults are the basis for train maintenance. However, the fault times of the equipment which are unknown causes uncertainty in the maintenance activities and p… Show more

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Cited by 2 publications
(1 citation statement)
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“…Their main objective was to utilize neural networks for obtaining near-optimal solutions in short periods of time, due to the high computational time of conventional solution algorithms producing train formation plans. Furthermore, Gençer et al [20] were the first to implement maintenance planning for metro trains with an ANN model incorporating all train equipment and factors affecting the failure. Within the artificial neural network model, five variables (equipment type, preventive maintenance frequency, material quality, life cycle, line status) were included as input factors which influence equipment faults, while the outputs were represented by the number of failures.…”
Section: Related Studiesmentioning
confidence: 99%
“…Their main objective was to utilize neural networks for obtaining near-optimal solutions in short periods of time, due to the high computational time of conventional solution algorithms producing train formation plans. Furthermore, Gençer et al [20] were the first to implement maintenance planning for metro trains with an ANN model incorporating all train equipment and factors affecting the failure. Within the artificial neural network model, five variables (equipment type, preventive maintenance frequency, material quality, life cycle, line status) were included as input factors which influence equipment faults, while the outputs were represented by the number of failures.…”
Section: Related Studiesmentioning
confidence: 99%