Dynamic network models and driver information systems

Moshe Ben-Akiva , Andre De Palma , Isam Kaysi
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引用次数: 565

Abstract

Dynamic network models are needed to analyze traffic congestion patterns for new real-time motorist information systems. In previous research, a dynamic network modeling framework incorporating behavioral models of drivers' route and departure time choices and their day-to-day adjustment processes was developed. Network performance in this framework is represented by time dependent arrival and departure rates, link occupancies, and queuing delays. The purpose of this paper is to extend this framework to include explicit models of drivers' information acquisition and integration. The need for these models is motivated by considering the possible beneficial and counter-productive effects that may be caused by enhanced motorist information. Information on network conditions influences the set of routes considered by a driver and also affects the perceived values of the level of service attributes. The paper presents the structure of a dynamic model in which newly acquired information may affect pretrip and en-route travel decisions. To assess the potential magnitudes of the effects that were identified further theoretical and empirical research is needed.

动态网络模型与驾驶员信息系统
新的实时驾驶员信息系统需要动态网络模型来分析交通拥堵模式。在以往的研究中,建立了一个包含驾驶员路线和出发时间选择及其日常调整过程的行为模型的动态网络建模框架。该框架中的网络性能由与时间相关的到达和离开率、链路占用和排队延迟表示。本文的目的是将这一框架扩展为包含驾驶员信息获取和集成的显式模型。我们之所以需要这些模型,是因为考虑到增强驾驶者信息可能带来的有益和适得其反的影响。网络状况的信息会影响驾驶员考虑的路线集,也会影响服务属性水平的感知值。本文提出了一个动态模型的结构,其中新获得的信息可能会影响出行前和途中的决策。为了评估已确定的影响的潜在程度,需要进一步的理论和实证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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