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Pattern Detection For Large-Scale Railway Timetables

  • We consider railway timetables of our industrial partner DB Fernverkehr AG that operates the ICE high speed trains in the long-distance passenger railway network of Germany. Such a timetable covers a whole year with 364 days and, typically, includes more than 45,000 trips. A rolling stock rotation plan is not created for the whole timetable at once. Instead the timetable is divided into regular invariant sections and irregular deviations (e.g. for public holidays). A separate rotation plan with a weekly period can then be provided for each of the different sections of the timetable. We present an algorithmic approach to automatically recognize these sections. Together with the supplementing visualisation of the timetable this method has shown to be very relevant for our industrial partner.
Metadaten
Author:Stanley Schade, Ralf BorndörferORCiD, Matthias Breuer, Boris Grimm, Markus Reuther, Thomas Schlechte, Patrick Siebeneicher
Document Type:In Proceedings
Parent Title (English):Proceedings of the IAROR conference RailLille
Year of first publication:2017
Preprint:urn:nbn:de:0297-zib-63390
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