Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational Challenges

In the past few years, station-free bike sharing systems (SFBSSs) have been adopted in many cities worldwide. Different from conventional station-based bike sharing systems (SBBSSs) that rely upon fixed bike stations, SFBSSs allow users the flexibility to locate a bike nearby and park it at any appr...

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Main Authors: Xueting Jin, Daoqin Tong
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:https://www.mdpi.com/2220-9964/9/11/691
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spelling doaj-21bf68b0c75c408f8431b16b179757c92020-11-25T04:11:11ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-11-01969169110.3390/ijgi9110691Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational ChallengesXueting Jin0Daoqin Tong1School of Geographical Sciences and Urban Planning, Arizona State University, 975 S Myrtle Ave, Tempe, AZ 85281, USASchool of Geographical Sciences and Urban Planning, Arizona State University, 975 S Myrtle Ave, Tempe, AZ 85281, USAIn the past few years, station-free bike sharing systems (SFBSSs) have been adopted in many cities worldwide. Different from conventional station-based bike sharing systems (SBBSSs) that rely upon fixed bike stations, SFBSSs allow users the flexibility to locate a bike nearby and park it at any appropriate site after use. With no fixed bike stations, the spatial extent/scale used to evaluate bike shortage/surplus in an SFBSS has been rather arbitrary in existing studies. On the one hand, a balanced status using large areas may contain multiple local bike shortage/surplus sites, leading to a less effective rebalancing design. On the other hand, an imbalance evaluation conducted in small areas may not be meaningful or necessary, while significantly increasing the computational complexity. In this study, we examine the impacts of analysis scale on the SFBSS imbalance evaluation and the associated rebalancing design. In particular, we develop a spatial optimization model to strategically optimize bike rebalancing in an SFBSS. We also propose a region decomposition method to solve large-sized bike rebalancing problems that are constructed based on fine analysis scales. We apply the approach to study the SFBSS in downtown Beijing. The empirical study shows that imbalance evaluation results and optimal rebalancing design can vary substantially with analysis scale. According to the optimal rebalancing results, bike repositioning tends to take place among neighboring areas. Based on the empirical study, we would recommend 800 m and 100/200 m as the suitable scale for designing operator-based and user-based rebalancing plans, respectively. Computational results show that the region decomposition method can be used to solve problems that cannot be handled by existing commercial optimization software. This study provides important insights into effective bike-share rebalancing strategies and urban bike transportation planning.https://www.mdpi.com/2220-9964/9/11/691station-free bike sharing systemrebalancescaleoptimization
collection DOAJ
language English
format Article
sources DOAJ
author Xueting Jin
Daoqin Tong
spellingShingle Xueting Jin
Daoqin Tong
Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational Challenges
ISPRS International Journal of Geo-Information
station-free bike sharing system
rebalance
scale
optimization
author_facet Xueting Jin
Daoqin Tong
author_sort Xueting Jin
title Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational Challenges
title_short Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational Challenges
title_full Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational Challenges
title_fullStr Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational Challenges
title_full_unstemmed Station-Free Bike Rebalancing Analysis: Scale, Modeling, and Computational Challenges
title_sort station-free bike rebalancing analysis: scale, modeling, and computational challenges
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2020-11-01
description In the past few years, station-free bike sharing systems (SFBSSs) have been adopted in many cities worldwide. Different from conventional station-based bike sharing systems (SBBSSs) that rely upon fixed bike stations, SFBSSs allow users the flexibility to locate a bike nearby and park it at any appropriate site after use. With no fixed bike stations, the spatial extent/scale used to evaluate bike shortage/surplus in an SFBSS has been rather arbitrary in existing studies. On the one hand, a balanced status using large areas may contain multiple local bike shortage/surplus sites, leading to a less effective rebalancing design. On the other hand, an imbalance evaluation conducted in small areas may not be meaningful or necessary, while significantly increasing the computational complexity. In this study, we examine the impacts of analysis scale on the SFBSS imbalance evaluation and the associated rebalancing design. In particular, we develop a spatial optimization model to strategically optimize bike rebalancing in an SFBSS. We also propose a region decomposition method to solve large-sized bike rebalancing problems that are constructed based on fine analysis scales. We apply the approach to study the SFBSS in downtown Beijing. The empirical study shows that imbalance evaluation results and optimal rebalancing design can vary substantially with analysis scale. According to the optimal rebalancing results, bike repositioning tends to take place among neighboring areas. Based on the empirical study, we would recommend 800 m and 100/200 m as the suitable scale for designing operator-based and user-based rebalancing plans, respectively. Computational results show that the region decomposition method can be used to solve problems that cannot be handled by existing commercial optimization software. This study provides important insights into effective bike-share rebalancing strategies and urban bike transportation planning.
topic station-free bike sharing system
rebalance
scale
optimization
url https://www.mdpi.com/2220-9964/9/11/691
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AT daoqintong stationfreebikerebalancinganalysisscalemodelingandcomputationalchallenges
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