How weather and built environment factors influence e-scooter ridership: Understanding non-linear and time varying effects

Ying Lu, Lihong Zhang, Jonathan Corcoran
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Abstract

Our understanding of non-linear and time varying effects on shared e-scooter ridership dynamics is limited. Consequently, both operators and city councils supporting shared e-scooter schemes do not have the requisite information to help optimise infrastructure planning and operation management. Focussing on subtropical Brisbane, Australia, the current study examines time varying and non-linear effects of weather and built environment factors on shared e-scooter ridership. Results from XGBoost models reveal threshold relationships with both the availability of cycling infrastructure and the presence of park and commercial land uses. Additionally, we show how hot weather increases ridership especially around large parks and in commercial areas on both weekdays and weekends. Understanding the intricate (non-linear) interplay (interaction) between weather and built environment factors and their variation over time on shared e-scooter ridership have important implications for policymakers, transportation planners, and environmental advocates in providing the requisite evidence for data driven decision making.

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天气和建筑环境因素如何影响电动滑板车的使用率:了解非线性和时变效应
我们对共享电动滑板车乘客动态的非线性和时间变化影响的了解十分有限。因此,支持共享电动滑板车计划的运营商和市议会都没有必要的信息来帮助优化基础设施规划和运营管理。本研究以亚热带的澳大利亚布里斯班为重点,研究了天气和建筑环境因素对共享电动滑板车乘客数量的时间变化和非线性影响。XGBoost 模型的结果显示,自行车基础设施的可用性与公园和商业用地的存在之间存在阈值关系。此外,我们还展示了炎热天气如何增加骑行率,尤其是在大型公园周围和商业区,无论是工作日还是周末。了解天气和建筑环境因素之间错综复杂的(非线性)相互作用(交互作用)及其对共享电动滑板车骑行率随时间的变化,对于政策制定者、交通规划者和环保倡导者提供必要的数据驱动决策证据具有重要意义。
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