3.9 Article

Modeling bike counts in a bike-sharing system considering the effect of weather conditions

期刊

CASE STUDIES ON TRANSPORT POLICY
卷 7, 期 2, 页码 261-268

出版社

ELSEVIER
DOI: 10.1016/j.cstp.2019.02.011

关键词

Bike counts prediction; Bike-sharing; Big data; Random Forest; Urban Computing

资金

  1. Urban Mobility and Equitable Center
  2. National Science Foundation UrbComp project

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The paper develops a method that quantifies the effect of weather conditions on the prediction of bike station counts in the San Francisco Bay Area Bike Share System. The Random Forest technique was used to rank the predictors that were then used to develop a regression model using a guided forward step-wise regression approach. The Bayesian Information Criterion was used in the development and comparison of the various prediction models. We demonstrated that the proposed approach is promising to quantify the effect of various features on a large BSS and on each station in cases of large networks with big data. The results show that the time-of-the-day, temperature, and humidity level (which has not been studied before) are significant count predictors. It also shows that as weather variables are geographic location dependent and thus should be quantified before using them in modeling. Further, findings show that the number of available bikes at station i at time t - 1 and time-of-the-day were the most significant variables in estimating the bike counts at station i.

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