首页> 外文期刊>Journal of Transport Geography >Bike-sharing or taxi? Modeling the choices of travel mode in Chicago using machine learning
【24h】

Bike-sharing or taxi? Modeling the choices of travel mode in Chicago using machine learning

机译:共享单车或出租车?使用机器学习为芝加哥的出行方式选择建模

获取原文
获取原文并翻译 | 示例
           

摘要

many big cities, the bike-sharing system (BSS) and taxi play critical roles in transportation services. They both offer on-demand transportation options and allow flexible riding scheduling and routing. Previous literature has compared BSS and taxi to other transport modes, such as public transit and private automobile, but little is known about the spatiotemporal factors that influence travel choices between these two alternatives. Understanding travel patterns of BSS and taxi is critical in traffic demand analysis and sustainable transportation planning. Also, an in-depth examination of the patterns of travel behaviors, especially when one would choose BSS over a taxi, will provide valuable insights on human mobility and active living research. In this study, we investigated the spatiotemporal patterns of BSS and taxi trips in Chicago from 2014 to 2016. To model travel choices between BSS and taxi, we applied machine learning techniques to simulate the means of transport based on environmental and temporal factors. Results show seasonal trip variations of the BSS and a declining trend of taxi trips. BSS speed is relatively stable while taxi speed varies primarily because of time and locations. Based on the random forest model, which has demonstrated the best fit with high processing speed, travel distance and the number of parks and recreational facilities seem to be critical spatial predicting factors of the travel choice. Given any time and location, the model can recommend the travel choices between BSS and taxis for users. This study shows the significance of machine learning techniques in urban mobility research. Results of the study may potentially support people's transportation decision-making and facilitate sustainable transportation planning.
机译:在许多大城市,自行车共享系统(BSS)和出租车在交通服务中起着至关重要的作用。它们都提供按需运输选项,并允许灵活的骑行时间表和路线。以前的文献已经将BSS和出租车与其他运输方式(如公共交通和私家车)进行了比较,但对于影响这两种选择之间的出行选择的时空因素知之甚少。了解BSS和出租车的出行方式对于交通需求分析和可持续交通规划至关重要。另外,深入研究出行行为的模式,尤其是当人们选择乘坐BSS而不是出租车时,将为人们的流动性和积极的生活研究提供宝贵的见解。在这项研究中,我们调查了2014年至2016年芝加哥BSS和出租车出行的时空格局。为了建模BSS和出租车之间的出行选择,我们应用了机器学习技术来基于环境和时间因素来模拟交通方式。结果显示了BSS的季节性旅行变化和出租车旅行的下降趋势。 BSS速度相对稳定,而滑行速度主要是由于时间和位置而异。基于随机森林模型,该模型已经证明了最合适的处理速度,较高的行驶距离以及公园和娱乐设施的数量似乎是决定行程选择的关键空间预测因素。在任何时间和位置的情况下,模型都可以为用户推荐BSS和出租车之间的出行选择。这项研究表明了机器学习技术在城市交通研究中的重要性。研究结果可能会支持人们的交通决策并促进可持续的交通规划。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号