Factors affecting bus bunching at the stop level: A geographically weighted regression approach

Efficient operation of bus networks is vital for urban centers. Unfortunately, factors such as uneven passenger loads and congestion hinder the adherence to posted schedules, leading to reliability issues. Most notably, bus bunching has been identified as a significant reliability problem, impacting...

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Main Authors: Evangelia Chioni, Christina Iliopoulou, Christina Milioti, Konstantinos Kepaptsoglou
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2020-09-01
Series:International Journal of Transportation Science and Technology
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2046043020300289
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author Evangelia Chioni
Christina Iliopoulou
Christina Milioti
Konstantinos Kepaptsoglou
author_facet Evangelia Chioni
Christina Iliopoulou
Christina Milioti
Konstantinos Kepaptsoglou
author_sort Evangelia Chioni
collection DOAJ
description Efficient operation of bus networks is vital for urban centers. Unfortunately, factors such as uneven passenger loads and congestion hinder the adherence to posted schedules, leading to reliability issues. Most notably, bus bunching has been identified as a significant reliability problem, impacting both users and operators. Bus bunching is treated as a route-level problem in the relevant literature, while spatial patterns in explanatory factors are overlooked. Diverging from the typically performed route-level analysis, this study exploits Automatic Vehicle Location data to investigate factors affecting bus bunching at the network level, while taking into account their spatial variability. For this purpose, a Geographically Weighted Regression Model is applied to model bus bunching, using bus stop and network attributes as explanatory variables. Results for approximately 360 bus stops in Athens, Greece underline the superiority of the proposed model to Ordinary Least Squares Regression and corroborate the presence of spatial variability in the factors affecting bus bunching. Indeed, the number of traffic lanes at the stop level is positively associated with bunching in heavy traffic segments, whereas a higher number of lanes is negatively linked to bunching in less congested regions. Further, the number of bunching occurrences generally increases with the number of routes serving each stop, as well as with the distance from subway stops in the outer parts of the city. Such findings highlight the need to consider spatial structures in relevant models and can help improve their reliability and accuracy.
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spelling doaj.art-12ea9a367165444c9113d8f94c2850002023-09-02T10:17:27ZengKeAi Communications Co., Ltd.International Journal of Transportation Science and Technology2046-04302020-09-0193207217Factors affecting bus bunching at the stop level: A geographically weighted regression approachEvangelia Chioni0Christina Iliopoulou1Christina Milioti2Konstantinos Kepaptsoglou3School of Rural and Surveying Engineering, National Technical University of Athens, 15770 Zografou Campus, GreeceSchool of Rural and Surveying Engineering, National Technical University of Athens, 15770 Zografou Campus, GreeceSchool of Rural and Surveying Engineering, National Technical University of Athens, 15770 Zografou Campus, GreeceCorresponding author.; School of Rural and Surveying Engineering, National Technical University of Athens, 15770 Zografou Campus, GreeceEfficient operation of bus networks is vital for urban centers. Unfortunately, factors such as uneven passenger loads and congestion hinder the adherence to posted schedules, leading to reliability issues. Most notably, bus bunching has been identified as a significant reliability problem, impacting both users and operators. Bus bunching is treated as a route-level problem in the relevant literature, while spatial patterns in explanatory factors are overlooked. Diverging from the typically performed route-level analysis, this study exploits Automatic Vehicle Location data to investigate factors affecting bus bunching at the network level, while taking into account their spatial variability. For this purpose, a Geographically Weighted Regression Model is applied to model bus bunching, using bus stop and network attributes as explanatory variables. Results for approximately 360 bus stops in Athens, Greece underline the superiority of the proposed model to Ordinary Least Squares Regression and corroborate the presence of spatial variability in the factors affecting bus bunching. Indeed, the number of traffic lanes at the stop level is positively associated with bunching in heavy traffic segments, whereas a higher number of lanes is negatively linked to bunching in less congested regions. Further, the number of bunching occurrences generally increases with the number of routes serving each stop, as well as with the distance from subway stops in the outer parts of the city. Such findings highlight the need to consider spatial structures in relevant models and can help improve their reliability and accuracy.http://www.sciencedirect.com/science/article/pii/S2046043020300289Bus BunchingSpatial AutocorrelationGeographically Weighted RegressionAVL DataIntelligent Transportation Systems
spellingShingle Evangelia Chioni
Christina Iliopoulou
Christina Milioti
Konstantinos Kepaptsoglou
Factors affecting bus bunching at the stop level: A geographically weighted regression approach
International Journal of Transportation Science and Technology
Bus Bunching
Spatial Autocorrelation
Geographically Weighted Regression
AVL Data
Intelligent Transportation Systems
title Factors affecting bus bunching at the stop level: A geographically weighted regression approach
title_full Factors affecting bus bunching at the stop level: A geographically weighted regression approach
title_fullStr Factors affecting bus bunching at the stop level: A geographically weighted regression approach
title_full_unstemmed Factors affecting bus bunching at the stop level: A geographically weighted regression approach
title_short Factors affecting bus bunching at the stop level: A geographically weighted regression approach
title_sort factors affecting bus bunching at the stop level a geographically weighted regression approach
topic Bus Bunching
Spatial Autocorrelation
Geographically Weighted Regression
AVL Data
Intelligent Transportation Systems
url http://www.sciencedirect.com/science/article/pii/S2046043020300289
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