风暴上的骑手:在德国慕尼黑探索气象和时间对共享电动滑板车(SES)的影响

Maryna Pobudzei, Anis Sellaouti, Michaela Tiessler, S. Hoffmann
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摘要

本文分析了共享电动滑板车(SES)在慕尼黑服务27个月以来的气象和时间影响。我们的目标是探索与SES利用率相关的因素(每小时使用次数、中位数乘车距离和预订持续时间),重点关注时变变量(天气、假日、一年中的时间、周和日)。本研究采用负二项(NB)和Consul的广义泊松(GP-1)回归来建模SES小时需求。泊松回归用于SES乘车距离和预订持续时间的每小时中位数。随机森林模型评估气象和时间变量对SES使用的相对重要性。在慕尼黑,SES随着时间的推移越来越受欢迎。预订高峰出现在周五、周六和下午。周末和节假日的乘车时间比工作日长。最长的行程是在午夜前后,这给乘客的能见度带来了问题。COVID-19封锁对SES预订产生了负面影响。与冬季相比,7月至11月之间的骑行时间越来越长。天气影响了电动滑板车的使用,在下雨和潮湿的时候,预订量减少,骑行时间缩短,而在温暖的时候,骑行时间更长。天气对电动滑板车的负面影响可能部分是由于娱乐用途的减少,因为天气阻碍了许多户外活动。
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Riders on the Storm: Exploring Meteorological and Temporal Impacts on Shared E-Scooters (SES) in Munich, Germany
This paper analyzes the meteorological and temporal impacts on shared e-scooters (SES) over 27 months of service in Munich. The objective is to explore the factors associated with SES utilization (hourly usage counts, median ride distances, and booking durations), focusing on time-variant variables (weather, holiday, time of the year, week, and day). This study employs the negative binomial (NB) and Consul's generalized Poisson (GP-1) regressions for modeling SES hourly demand. The Poisson regression is used for hourly medians of SES ride distances and booking durations. Random forest models evaluate the relative importance of meteorological and temporal variables for SES usage. In Munich, the popularity of SES grew over time. The peak booking numbers were on Fridays, Saturdays, and afternoons. Longer rides were on the weekends and holidays than on working days. The most extended trips were around midnight, posing the issue of riders' visibility. The COVID-19 lockdown negatively impacted SES bookings. Compared to winter, more and longer rides were between July and November. The weather impacted e-scooter usage with fewer bookings and shorter rides when raining and humid and more and longer trips when warm. Negative weather impacts for e-scooters may be partially due to a reduction in recreational use as weather discourages many outside activities.
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