Instituto de Física Interdisciplinar y Sistemas Complejos IFISC (CSIC-UIB), Campus UIB, 07122, Palma de Mallorca, Spain.
School of Mathematical Sciences, Queen Mary University, Mile End Road, E1 4NS, London, United Kingdom.
Sci Rep. 2020 Feb 17;10(1):2746. doi: 10.1038/s41598-020-59576-1.
Public transportation is a fundamental infrastructure for life in cities. Although its capacity is prepared for daily demand, congestion may rise when huge crowds gather in demonstrations, concerts or sport events. In this work, we study the robustness of public transportation networks by means of a stylized model mimicking individual mobility through the system. We find scaling relations in the delay suffered by both event participants and other citizens doing their usual traveling in the background. The delay is a function of the number of participants and the event location. The model is solved analytically in lattices proving the existence of scaling relations and the connection of their exponents to the local dimension. Thereafter, extensive and systematic simulations in eight worldwide cities reveal that a newly proposed measure of local dimension explains the exponents found in the network recovery. Our methodology allows to dynamically probe the local dimensionality of a transportation network and identify the most vulnerable spots in cities for the celebration of massive events.
公共交通是城市生活的基本基础设施。尽管其容量足以满足日常需求,但在示威、音乐会或体育赛事等大型集会中,拥堵可能会加剧。在这项工作中,我们通过模拟个体通过系统移动的简化模型来研究公共交通网络的稳健性。我们发现,事件参与者和其他在背景中进行日常出行的公民所遭受的延迟存在标度关系。延迟是参与者数量和事件位置的函数。该模型在晶格中进行了分析求解,证明了标度关系的存在以及其指数与局部维度的关系。之后,在全球八个城市进行了广泛而系统的模拟,结果表明,局部维度的一个新提出的度量标准可以解释网络恢复中发现的指数。我们的方法允许动态探测交通网络的局部维度,并确定城市中最脆弱的地点,以便举办大规模活动。