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Dynamic Cluster-Based Over-Demand Prediction in Bike Sharing Systems

Authors :
Chen, Longbiao
Zhang, Daqing
Wang, Leye
Yang, Dingqi
Ma, Xiaojuan
Li, Shijian
Wu, Zhaohui
Pan, Gang
Nguyen, Thi Mai Trang
Jakubowicz, Jeremie
Chen, Longbiao
Zhang, Daqing
Wang, Leye
Yang, Dingqi
Ma, Xiaojuan
Li, Shijian
Wu, Zhaohui
Pan, Gang
Nguyen, Thi Mai Trang
Jakubowicz, Jeremie
Publication Year :
2016

Abstract

Bike sharing is booming globally as a green transportation mode, but the occurrence of over-demand stations that have no bikes or docks available greatly affects user experiences. Directly predicting individual over-demand stations to carry out preventive measures is difficult, since the bike usage pattern of a station is highly dynamic and context dependent. In addition, the fact that bike usage pattern is affected not only by common contextual factors (e.g., time and weather) but also by opportunistic contextual factors (e.g., social and traffic events) poses a great challenge. To address these issues, we propose a dynamic cluster-based framework for over-demand prediction. Depending on the context, we construct a weighted correlation network to model the relationship among bike stations, and dynamically group neighboring stations with similar bike usage patterns into clusters. We then adopt Monte Carlo simulation to predict the over-demand probability of each cluster. Evaluation results using real-world data from New York City and Washington, D.C. show that our framework accurately predicts over-demand clusters and outperforms the baseline methods significantly. © 2016 ACM.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1125200887
Document Type :
Electronic Resource