模块化自动驾驶车辆通道系统的连续模型

Zhiwei Chen, X. Li, X. Qu
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引用次数: 10

摘要

时空变化的乘客需求与固定容量运输供给之间的“不对称”一直是世界各地城市公共交通系统中存在的一个长期问题。新兴的模块化自动驾驶汽车(MAV)技术为我们提供了一个机会,通过车站智能对接和分离操作,缩小乘客需求和车辆容量之间的巨大差距。然而,目前仍然缺乏一种合适的方法来有效地解决带有MAVs的UMT走廊系统的操作设计问题。为了弥补这种方法上的差距,本文提出了一个连续统近似(CA)模型,该模型可以非常有效地为基于mavv的交通走廊的运营设计提供接近最优的解决方案。我们研究了在特定(但并不罕见)情况下所研究问题的最优解的理论性质。这些理论性质使我们能够用到达需求曲线估计每个时间邻域的座位需求,从而恢复了所研究问题的“局部影响”性质。利用这一性质,适当地建立了CA模型,将原问题分解为有限个可解析求解的子问题。然后提出了一种离散化启发式算法,将CA模型的解析解转化为原问题的可行解。通过两组数值实验,我们表明,对于具有广泛参数设置的大规模实例(商业求解器甚至可能在几个小时内无法获得可行的解决方案),所提出的CA模型可以在几乎没有时间(小于10 ms)的情况下(在大多数情况下差距小于4%)获得所研究问题的接近最优解。理论性质得到验证,并通过这些数值结果提供了关于输入参数如何影响系统性能的管理见解。此外,结果还表明,尽管CA模型不包含车辆重新定位决策,但通过求解CA模型获得的时间表决策可以很容易地应用于获得接近最优的重新定位决策(在大多数情况下差距小于5%),并且非常有效(在10 ms内)。因此,所提出的CA模型为开发具有更复杂系统运行约束的其他问题(例如MAV重新定位)的求解方法提供了基础,这些问题很难用离散建模方法找到精确的最优解。
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A Continuous Model for Designing Corridor Systems with Modular Autonomous Vehicles Enabling Station-wise Docking
The “asymmetry” between spatiotemporally varying passenger demand and fixed-capacity transportation supply has been a long-standing problem in urban mass transportation (UMT) systems around the world. The emerging modular autonomous vehicle (MAV) technology offers us an opportunity to close the substantial gap between passenger demand and vehicle capacity through station-wise docking and undocking operations. However, there still lacks an appropriate approach that can solve the operational design problem for UMT corridor systems with MAVs efficiently. To bridge this methodological gap, this paper proposes a continuum approximation (CA) model that can offer near-optimal solutions to the operational design for MAV-based transit corridors very efficiently. We investigate the theoretical properties of the optimal solutions to the investigated problem in a certain (yet not uncommon) case. These theoretical properties allow us to estimate the seat demand of each time neighborhood with the arrival demand curves, which recover the “local impact” property of the investigated problem. With the property, a CA model is properly formulated to decompose the original problem into a finite number of subproblems that can be analytically solved. A discretization heuristic is then proposed to convert the analytical solution from the CA model to feasible solutions to the original problem. With two sets of numerical experiments, we show that the proposed CA model can achieve near-optimal solutions (with gaps less than 4% for most cases) to the investigated problem in almost no time (less than 10 ms) for large-scale instances with a wide range of parameter settings (a commercial solver may even not obtain a feasible solution in several hours). The theoretical properties are verified, and managerial insights regarding how input parameters affect system performance are provided through these numerical results. Additionally, results also reveal that, although the CA model does not incorporate vehicle repositioning decisions, the timetabling decisions obtained by solving the CA model can be easily applied to obtain near-optimal repositioning decisions (with gaps less than 5% in most instances) very efficiently (within 10 ms). Thus, the proposed CA model provides a foundation for developing solution approaches for other problems (e.g., MAV repositioning) with more complex system operation constraints whose exact optimal solution can hardly be found with discrete modeling methods.
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