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How to Estimate, Take Into Account, and Improve Travel Time Reliability in Transportation Networks

机译:如何估算,考虑并提高交通网络的出行时间可靠性

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摘要

Many urban areas suffer from traffic congestion. Intuitively, it may seem that a road expansion (e.g., the opening of a new road) should always improve the traffic conditions. However, in reality, a new road can actually worsen traffic congestion. It is therefore extremely important that before we start a road expansion project, we first predict the effect of this project on traffic congestion.Traditional approach to this prediction is based on the assumption that for any time of the day, we know the exact amount of traffic that needs to go from each origin city zone A to every other destination city zone B (these values form an OD-matrix), and that we know the exact capacity of each road segment. Under this assumption, known efficient algorithms produce the equilibrium traffic flows.In reality, the road capacity may unpredictably change due to weather conditions, accidents, etc. Drivers take this uncertainty into account when planning their trips: e.g., if a driver does not want to be late, he or she may follow a slower route but with a guaranteed arrival time instead of a (on average) faster but unpredictable one. We must therefore take this uncertainty into account in traffic simulations. In this paper, we describe algorithms that take this uncertainty into account.
机译:许多城市地区交通拥堵。从直觉上看,道路扩展(例如,开辟新道路)似乎总是应该改善交通状况。但是,实际上,一条新路实际上会加剧交通拥堵。因此,在开始道路扩展项目之前,首先预测该项目对交通拥堵的影响非常重要。传统的预测方法是基于以下假设:在一天中的任何时间,我们都知道确切的数量需要从每个出发地城市区域A到每个其他目的地城市区域B(这些值构成OD矩阵)的流量,并且我们知道每个路段的确切通行能力。在这种假设下,已知的高效算法会产生均衡的交通流量。实际上,道路通行能力可能会由于天气条件,事故等而发生不可预测的变化。驾驶员在计划行程时会考虑到这种不确定性:例如,如果驾驶员不想为时已晚,他或她的路线可能较慢,但到达时间得到了保证,而不是(平均)更快但无法预测。因此,我们必须在交通模拟中考虑这种不确定性。在本文中,我们描述了考虑了这种不确定性的算法。

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