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Day-to-day dynamic traffic assignment with imperfect information, bounded rationality and information sharing

机译:日常动态流量分配,具有不完美信息,有界合理性和信息共享

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This paper presents a doubly dynamic day-to-day (DTD) traffic assignment model with simultaneous route-and-departure-time (SRDT) choices while incorporating incomplete and imperfect information as well as bounded rationality. Two SRDT choice models are proposed to incorporate imperfect travel information: One based on multinomial Logit (MNL) model and the other on sequential, mixed multinomialested Logit model. These two variants, serving as base models, are further extended with two features: bounded rationality (BR) and information sharing. BR is considered by incorporating the indifference band into the random utility component of the MNL model, forming a BR-based DTD stochastic model. A macroscopic model of travel information sharing is integrated into the DTD dynamics to account for the impact of incomplete information on travelers' SRDT choices. These DTD choice models are combined with within-day dynamics following the Lighthill-Whitham-Richards (LWR) fluid dynamic network loading model. Simulations on large-scale networks (Anaheim) illustrate the interactions between users' adaptive decision making and network conditions (including local disruption) with different levels of information availability and user behavior. Our findings highlight the need for modeling network transient and disequilibriated states, which are often overlooked in equilibrium-constrained network design and optimization.
机译:本文介绍了一个双重动态日常(DTD)交通分配模型,同时路由和出发 - 时间(SRDT)选择,同时结合不完整和不完美的信息以及有界合理性。建议两个SRDT选择模型包含不完美的旅行信息:一个基于多项式Lo​​git(MNL)模型,另一个在顺序,混合多项式/嵌套Logit模型上。这两个变体作为基础模型,进一步扩展了两个特征:有界合理性(BR)和信息共享。通过将漠不关心带掺入MNL模型的随机公用工具组件来考虑BR,形成基于BR的DTD随机模型。旅行信息共享的宏观模型被集成到DTD动态中,以考虑不完整信息对旅行者的SRDT选择的影响。这些DTD选择模型与Lighthill-Whitham-Richards(LWR)流体动态网络加载模型相结合。大规模网络(Anaheim)的仿真说明了用户自适应决策和网络条件(包括本地中断)与具有不同信息的可用性和用户行为之间的相互作用。我们的研究结果强调了对建模网络瞬态和不平衡状态的需求,这些状态通常被忽视在均衡限制的网络设计和优化中。

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