网约车竞争与交通拥堵下的交通规划优化

Keji Wei, Vikrant Vaze, A. Jacquillat
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引用次数: 10

摘要

随着网约车的迅速普及,公共交通乘客、网约车乘客和城市拥堵之间的相互依存关系引发了以下问题:公共交通和网约车能否以一种增强整个城市交通生态系统的方式共存并蓬勃发展?为了回答这个问题,我们开发了一个数学和计算框架,优化交通时间表,同时明确考虑它们对道路拥堵的影响,以及乘客在交通和叫车之间的模式选择。该问题被表述为一个混合整数非线性规划,并采用双层分解算法求解。基于纽约市的计算案例研究实验,我们优化的交通调度始终可以使整个系统的成本降低0.4%-3%。这相当于每天在高峰时段节省数百万美元,同时降低乘客和运输服务提供商的成本。这些好处是通过将现有的交通选择与乘客的偏好更好地结合起来,通过将公共交通资源重新分配到能够提供最大社会效益的地方来实现的。这些结果对于乘客需求、公交服务水平、网约车运营动态和公交票价结构的基本假设是强有力的。最终,通过明确考虑网约车竞争、乘客偏好和交通拥堵,公交机构可以制定时刻表,降低乘客、运营商和整个系统的成本:这是一种罕见的三赢结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transit Planning Optimization Under Ride-Hailing Competition and Traffic Congestion
With the soaring popularity of ride-hailing, the interdependence between transit ridership, ride-hailing ridership, and urban congestion motivates the following question: can public transit and ride-hailing coexist and thrive in a way that enhances the urban transportation ecosystem as a whole? To answer this question, we develop a mathematical and computational framework that optimizes transit schedules while explicitly accounting for their impacts on road congestion and passengers’ mode choice between transit and ride-hailing. The problem is formulated as a mixed integer nonlinear program and solved using a bilevel decomposition algorithm. Based on computational case study experiments in New York City, our optimized transit schedules consistently lead to 0.4%–3% system-wide cost reduction. This amounts to rush-hour savings of millions of dollars per day while simultaneously reducing the costs to passengers and transportation service providers. These benefits are driven by a better alignment of available transportation options with passengers’ preferences—by redistributing public transit resources to where they provide the strongest societal benefits. These results are robust to underlying assumptions about passenger demand, transit level of service, the dynamics of ride-hailing operations, and transit fare structures. Ultimately, by explicitly accounting for ride-hailing competition, passenger preferences, and traffic congestion, transit agencies can develop schedules that lower costs for passengers, operators, and the system as a whole: a rare win–win–win outcome.
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