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Steady-state link travel time methods: Formulation, derivation, classification, and unification

机译:稳态链路旅行时间方法:公式化,推导,分类和统一

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摘要

Travel times are one of the most important outputs of transport planning models, especially in a strategic context. It is therefore paramount that the methods that underpin the construction of travel times are well understood. A plethora of methods exists to extract and/or construct travel times given some underlying network loading procedure, also known as the traffic flow propagation model. However, the relation between these different travel time methods and the consistency between such methods has received relatively little attention in the literature. This might in part be due to the many different traffic flow propagation models in existence, ranging from vehicle based (microscopic), to flow based (macroscopic), and models that explicitly account for the time varying nature of traffic flows (dynamic) to models that do not (static). In this work, we limit ourselves to flow based, i.e. macroscopic, traffic flow models. Within this modelling paradigm we consider dynamic, semi-dynamic, and static traffic flow propagation formulations used to construct link travel times. The semi-dynamic and static approaches are considered as more aggregate versions of the dynamic formulation. Within this context we formulate a unified (link) travel time formulation that is consistent across these three modelling paradigms under the assumption of steady-state flow conditions. The dynamic link travel time formulation is based on a recent state-of-the-art continuous time macroscopic dynamic network loading model. In the dynamic model we assume steady-state conditions to remain consistent with steady-state semi-dynamic and static approaches. This allows us to derive semi-dynamic link travel time formulations from our dynamic model, while the static formulation is derived from its semi-dynamic counterpart. Throughout this work we explore link travel times from three different perspectives; an experienced perspective, which actively tracks the tail of a physical queue, and two functional perspectives, both of which do not require explicit queue tracking. Based on the existing literature and proposed formulations, a classification framework is proposed allowing one to compare existing (and future) methods in the literature in an objective fashion. We provide a number of explicit derivations of existing model formulations that can be considered special cases of our unified approach. A numerical example across the different perspectives is included and a significant number of representative existing methods in the literature has been classified based on our proposed framework for the reader's convenience. (C) 2019 Elsevier Ltd. All rights reserved.
机译:出行时间是运输计划模型最重要的输出之一,尤其是在战略环境下。因此,最重要的是,众所周知,旅行时间结构的基础。在给定某些基础网络加载过程(也称为流量传播模型)的情况下,存在大量提取和/或构造旅行时间的方法。但是,这些不同的行进时间方法之间的关系以及这些方法之间的一致性在文献中受到的关注相对较少。这可能部分是由于存在许多不同的交通流传播模型,从基于车辆的(微观)到基于交通的(宏观),以及明确考虑交通流的时变性质的模型(动态)到模型。那不(静态)。在这项工作中,我们将自己限制在基于流量的(即宏观交通流量模型)上。在此建模范例中,我们考虑用于构造链接行驶时间的动态,半动态和静态交通流传播公式。半动态和静态方法被视为动态公式的更汇总版本。在这种情况下,我们制定了一个统一的(链接)行程时间公式,该公式在稳态流动条件下在这三个建模范例中保持一致。动态链接旅行时间公式基于最新的最新连续时间宏观动态网络加载模型。在动态模型中,我们假设稳态条件与稳态半动态和静态方法保持一致。这使我们能够从我们的动态模型中得出半动态链接旅行时间公式,而静态公式是从其半动态对应物中得出的。在整个工作中,我们从三个不同的角度探讨了链接的旅行时间;一个有经验的透视图,可以主动跟踪物理队列的尾部;还有两个功能的透视图,两者都不需要显式的队列跟踪。基于现有文献和提出的公式,提出了一种分类框架,使人们可以客观地比较文献中的现有(和将来)方法。我们提供了许多现有模型公式的显式派生,可以将其视为我们统一方法的特殊情况。包含了一个跨不同角度的数值示例,并且根据我们为读者的方便而提出的框架,对文献中已有的大量代表性现有方法进行了分类。 (C)2019 Elsevier Ltd.保留所有权利。

著录项

  • 来源
    《Transportation research》 |2019年第4期|167-191|共25页
  • 作者单位

    Univ Sydney, Inst Transport & Logist Studies, Sydney, NSW 2006, Australia;

    Univ Sydney, Inst Transport & Logist Studies, Sydney, NSW 2006, Australia;

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  • 正文语种 eng
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