How can urban movement data be exploited in order to improve the flow of traffic within a city? Movement data provides valuable information about routes and specific roads that people are likely to drive on. This allows us to pinpoint roads that occur in many routes and are thus sensitive to congestion. Redistributing some of the traffic to avoid unnecessary use of these roads could be a key factor in improving traffic flow. Many proposed approaches to combat congestion are either static or do not incorporate any movement data. In this work, we present a method to redistribute traffic through the introduction of externally imposed variable costs to each road segment, assuming that all drivers seek to drive the cheapest route. We use a metaheuristic optimisation approach to minimise total travel times by optimising a set of road-specific variable cost parameters, which are used as input for an objective function based on traffic flow theory. The optimisation scenario for the city centre of Tokyo considered in this paper was defined using public spatial road network data, and movement data acquired from Foursquare. Experimental results show that our proposed scenario has the potential to achieve a 62.6\% improvement of total travel time in Tokyo compared to that of a currently operational road network configuration, with no imposed variable costs.
翻译:如何利用城市交通数据来改善城市内交通流量?移动数据提供关于人们可能行驶的路线和特定道路的宝贵信息。这使我们能够确定许多路线上的道路,从而对拥挤敏感。重新划分一些交通,以避免不必要地使用这些道路,可能是改善交通流量的一个关键因素。许多拟议的消除交通堵塞的办法要么是静态的,要么没有纳入任何交通数据。在这项工作中,我们提出了一个通过向每个路段引入外部强加的可变费用来重新分配交通的方法,假设所有司机都试图驾驶最廉价的路线。我们采用美经型的优化办法,通过优化一套具体道路的可变费用参数,将总旅行时间减少到最低程度,这些参数是用于基于交通流量理论的客观功能的投入。本文中考虑的东京市中心的优化设想是使用公共空间道路网络数据,从四斯夸尔获得的移动数据。实验结果表明,我们提出的设想方案有可能使东京的旅行总时间比目前运行的公路网络配置成本高62.6 ⁇ 。