Department of Geography, The Ohio State University, Columbus, Ohio, United States of America.
Center for Urban and Regional Analysis, The Ohio State University, Columbus, Ohio, United States of America.
PLoS One. 2020 Nov 18;15(11):e0242476. doi: 10.1371/journal.pone.0242476. eCollection 2020.
The COVID-19 pandemic and related restrictions led to major transit demand decline for many public transit systems in the United States. This paper is a systematic analysis of the dynamics and dimensions of this unprecedented decline. Using transit demand data derived from a widely used transit navigation app, we fit logistic functions to model the decline in daily demand and derive key parameters: base value, the apparent minimal level of demand and cliff and base points, representing the initial date when transit demand decline began and the final date when the decline rate attenuated. Regression analyses reveal that communities with higher proportions of essential workers, vulnerable populations (African American, Hispanic, Female, and people over 45 years old), and more coronavirus Google searches tend to maintain higher levels of minimal demand during COVID-19. Approximately half of the agencies experienced their decline before the local spread of COVID-19 likely began; most of these are in the US Midwest. Almost no transit systems finished their decline periods before local community spread. We also compare hourly demand profiles for each system before and during COVID-19 using ordinary Procrustes distance analysis. The results show substantial departures from typical weekday hourly demand profiles. Our results provide insights into public transit as an essential service during a pandemic.
新冠疫情和相关限制措施导致美国许多公共交通系统的客流量大幅下降。本文对这一前所未有的下降趋势进行了系统分析。我们利用一款广泛使用的公交导航应用程序中的公交出行需求数据,通过逻辑函数拟合来模拟每日需求的下降,并得出关键参数:基础值、明显的最低需求水平、悬崖和基准点,分别代表公交出行需求下降开始的初始日期和下降率减弱的最终日期。回归分析表明,在新冠疫情期间,拥有更高比例必要工作人员、易感染人群(非裔美国人、西班牙裔、女性以及 45 岁以上人群)和更多新冠病毒谷歌搜索量的社区,其最低需求水平往往保持较高。大约一半的机构在新冠病毒在美国本地传播之前就经历了客流量下降;其中大部分机构位于美国中西部。几乎没有任何交通系统在本地社区传播之前完成下降阶段。我们还使用普通普罗克鲁斯距离分析比较了每个系统在新冠疫情前后的每小时需求分布。结果表明,其与典型工作日每小时需求分布有很大的偏离。我们的研究结果为公共交通作为大流行期间的一项基本服务提供了深入了解。