Diagnosis of Irregularity Sources by Automatic Vehicle Location Data

In high frequency transit services, irregularity is unavoidable due to the stochastic context in which bus services are operated. As a result, the measurement of the regularity and the identification of possible irregularity sources provide an opportunity to maintain scheduled headways. As far as th...

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Veröffentlicht in:IEEE intelligent transportation systems magazine 2021-01, Vol.13 (2), p.152-165
Hauptverfasser: Barabino, Benedetto, Di Francesco, Massimo
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description In high frequency transit services, irregularity is unavoidable due to the stochastic context in which bus services are operated. As a result, the measurement of the regularity and the identification of possible irregularity sources provide an opportunity to maintain scheduled headways. As far as the authors know, the irregularity was typically investigated from data on scheduled and actual arrival (or departure) times at bus stops. However, information has been seldom inferred on arrival and departure headways between two consecutive bus stops. Since it is difficult to maintain the planned timetable with short headways, this paper proposes an offline framework to measure the regularity over all bus stops and time periods and disclose the most common irregularity sources from collected Automatic Vehicle Location (AVL) data. Easy-to-read control dashboards show the viability of this framework on a real bus route-direction with about 124,500 AVL data records. Therefore, transit managers would benefit from using this framework to make accurate regularity analysis and possible service revisions.
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1941-1197
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subjects Analytical models
Automatic control
Automatic vehicle location
Bus stops
Buses (vehicles)
Computer architecture
Dashboards
Data models
Headways
High frequency
Irregularities
Regularity
Reliability
Schedules
Time-frequency analysis
Timetables
Transit
title Diagnosis of Irregularity Sources by Automatic Vehicle Location Data
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