论文标题

在Covid-19大流行时,激励路由选择以进行安全有效的运输

Incentivizing Routing Choices for Safe and Efficient Transportation in the Face of the COVID-19 Pandemic

论文作者

Beliaev, Mark, Bıyık, Erdem, Lazar, Daniel A., Wang, Woodrow Z., Sadigh, Dorsa, Pedarsani, Ramtin

论文摘要

Covid-19-大流行严重影响了人们日常生活的许多方面。尽管许多国家处于重新开放阶段,但大流行对人们行为的某些影响预计将持续更长的时间,包括它们在不同的运输选择之间的选择。专家预测,随着人们试图避免拥挤的地方,公共交通选择的恢复大大延迟。反过来,预计交通拥堵会大大增加,因为人们可能更喜欢使用自己的车辆或出租车,而不是风险更高,更拥挤的选择(例如铁路)。在本文中,我们建议使用经济激励措施来设定感染风险和拥塞之间的权衡,以实现安全有效的运输网络。为此,我们制定了一个网络优化问题,以优化出租车票价。为了使我们的框架在一天中的各个城市和时代都在没有太多设计师努力的情况下有用,我们还提出了一种数据驱动的方法,以了解人类有关运输选择的偏好,然后在我们的出租车票价优化中使用。我们的用户研究和仿真实验表明,我们的框架能够最大程度地减少感染的拥堵和风险。

The COVID-19 pandemic has severely affected many aspects of people's daily lives. While many countries are in a re-opening stage, some effects of the pandemic on people's behaviors are expected to last much longer, including how they choose between different transport options. Experts predict considerably delayed recovery of the public transport options, as people try to avoid crowded places. In turn, significant increases in traffic congestion are expected, since people are likely to prefer using their own vehicles or taxis as opposed to riskier and more crowded options such as the railway. In this paper, we propose to use financial incentives to set the tradeoff between risk of infection and congestion to achieve safe and efficient transportation networks. To this end, we formulate a network optimization problem to optimize taxi fares. For our framework to be useful in various cities and times of the day without much designer effort, we also propose a data-driven approach to learn human preferences about transport options, which is then used in our taxi fare optimization. Our user studies and simulation experiments show our framework is able to minimize congestion and risk of infection.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源