Transport Strategy Centre, Centre for Transport Studies, Department of Civil and Environmental Engineering, Imperial College London, Exhibition Road, London, SW73AE, UK.
Sci Rep. 2023 Mar 30;13(1):5163. doi: 10.1038/s41598-023-31892-2.
Decision making in a rapidly changing context, such as the development and progression of a pandemic, requires a dynamic assessment of multiple variable and competing factors. Seemingly beneficial courses of action can rapidly fail to deliver a positive outcome as the context changes. In this paper, we present a flexible data-driven agent-based simulation framework that considers multiple outcome criteria to increase opportunities for safe mobility and economic interactions on urban transit networks while reducing the potential for Covid-19 contagion in a dynamic setting. Using a case study of the Victoria line on the London Underground, we model a number of operational interventions with varied demand levels and social distancing constraints including: alterations to train headways, dwell times, signalling schemes, and train paths. Our model demonstrates that substantial performance gains ranging from 12.3-195.7% can be achieved in metro service provision when comparing the best performing operational scheme and headway with those realised on the Victoria line during the pandemic.
在快速变化的环境中进行决策,例如大流行病的发展和演变,需要对多个变量和竞争因素进行动态评估。随着环境的变化,看似有益的行动方案可能会迅速无法带来积极的结果。在本文中,我们提出了一个灵活的数据驱动的基于代理的模拟框架,该框架考虑了多个结果标准,以增加城市交通网络上安全移动和经济互动的机会,同时减少在动态环境中 Covid-19 传播的可能性。我们使用伦敦地铁维多利亚线的案例研究,对多种运营干预措施进行建模,包括不同的需求水平和社会隔离限制:改变列车的发车间隔、停留时间、信号方案和列车路径。我们的模型表明,在地铁服务提供方面,可以实现从 12.3%到 195.7%的大幅性能提升,将最佳运营方案和发车间隔与大流行病期间在维多利亚线实现的方案进行比较。