交通出行计划:基于策略的实时路径推荐

A. Nuzzolo, A. Comi
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引用次数: 4

摘要

为了提高交通网络向旅客提供信息的有效性,新一代的出行规划者在给出建议时应该考虑到几个因素,如网络的不可靠性和是否存在可根据随机事件的发生做出路径决策的导流节点。在这种情况下,旅行者不必依赖于单一的选择路径,而是必须使用一种策略,即一组允许旅行者到达目的地最大化其预期效用的规则。实时预测信息的可用性要求克服传统的最优超路径方法,并开发新的最优超路径方法。此外,由于预测的路径属性值是随机变量,因此,对于信息系统来说,不确定性并没有完全克服。本文探讨了在不可靠网络中提供路径推荐的一些方面,提出了一种定义实时最优策略的方法,该方法结合了路径属性的预测值和期望值。
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Transit Trip Planners: Real-Time Strategy-Based Path Recommendation
In order to improve the effectiveness of information provided to travelers of a transit network, the new generation of trip planners should give recommendations taking into account several factors, such as network unreliability and presence of diversion nodes where path decision can be made according to the occurrences of random events. In this context, travelers have not to rely on a single selected path, but they have to use a strategy, i.e. set of rules that allow travelers to reach the destination maximizing their expected utility. The availability of real-time predictive information requires the traditional optimal hyper-path approaches to be overcame and new ones to be developed. Further, as the values of path attributes forecasted are random variables and therefore, also with an information system, the uncertainty is not completely overcome. This paper explores some aspects of providing path recommendations in unreliable network, proposing a methodology for defining real-time optimal strategies, that combine predictive and expected values of path attributes.
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