An Architecture for Predictive Maintenance of Railway Points Based on Big Data Analytics. Salierno, G., Morvillo, S., Leonardi, L., & Cabri, G. In Dupuy-Chessa, S. & Proper, H. A., editors, Advanced Information Systems Engineering Workshops, of Lecture Notes in Business Information Processing, pages 29–40, Cham, 2020. Springer International Publishing. doi abstract bibtex Massive amounts of data produced by railway systems are a valuable resource to enable Big Data analytics. Despite its richness, several challenges arise when dealing with the deployment of a big data architecture into a railway system. In this paper, we propose a four-layers big data architecture with the goal of establishing a data management policy to manage massive amounts of data produced by railway switch points and perform analytical tasks efficiently. An implementation of the architecture is given along with the realization of a Long Short-Term Memory prediction model for detecting failures on the Italian Railway Line of Milano - Monza - Chiasso.
@inproceedings{salierno_architecture_2020,
address = {Cham},
series = {Lecture {Notes} in {Business} {Information} {Processing}},
title = {An {Architecture} for {Predictive} {Maintenance} of {Railway} {Points} {Based} on {Big} {Data} {Analytics}},
isbn = {978-3-030-49165-9},
doi = {10.1007/978-3-030-49165-9_3},
abstract = {Massive amounts of data produced by railway systems are a valuable resource to enable Big Data analytics. Despite its richness, several challenges arise when dealing with the deployment of a big data architecture into a railway system. In this paper, we propose a four-layers big data architecture with the goal of establishing a data management policy to manage massive amounts of data produced by railway switch points and perform analytical tasks efficiently. An implementation of the architecture is given along with the realization of a Long Short-Term Memory prediction model for detecting failures on the Italian Railway Line of Milano - Monza - Chiasso.},
language = {en},
booktitle = {Advanced {Information} {Systems} {Engineering} {Workshops}},
publisher = {Springer International Publishing},
author = {Salierno, Giulio and Morvillo, Sabatino and Leonardi, Letizia and Cabri, Giacomo},
editor = {Dupuy-Chessa, Sophie and Proper, Henderik A.},
year = {2020},
keywords = {Big data architecture, Predictive maintenance, Railway data},
pages = {29--40},
}
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