利用智能卡数据校正城市公共交通网络的路线选择集

S. Shelat, O. Cats, N. V. Oort, J. V. Lint
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引用次数: 3

摘要

在路线选择模型的估计和应用中,确定出行者选择路线的备选方案集是至关重要的一步。这些模型对于预测网络流量是必要的,这对公共交通网络的规划至关重要。然而,选择集的识别通常是困难的,因为当选定的路线被观察到时,那些被考虑的却没有。文献中提出的方法并不完全令人满意,要么缺乏跨网络的可转移性(观察驱动方法),要么需要对旅行者行为进行强有力的假设(未校准的选择集生成方法(CSGM))。因此,本研究提出了一种约束枚举CSGM,该CSGM应用非补偿决策模型,即逐方面消除,来形成选择集。通过使用从智能卡数据中观察到的路线选择行为来校准决策模型,可以避免对旅行者偏好的主观假设。智能卡数据在世界各地的公共交通系统中越来越可用。校准过程还返回了关于选择集形成行为的两个关键见解:(i)根据其重要性对不同属性进行排名,以及(ii)每个属性可接受的弯路。为了演示方法和调查选择集形成行为,以荷兰海牙的有轨电车和公共汽车网络为例进行了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Calibrating Route Choice Sets for an Urban Public Transport Network using Smart Card Data
Identifying the set of alternatives from which travellers choose their routes is a crucial step in estimation and application of route choice models. These models are necessary for the prediction of network flows that are vital for the planning of public transport networks. However, choice set identification is typically difficult because while selected routes are observed, those considered are not. Approaches proposed in literature are not completely satisfactory, either lacking transferability across networks (observation-driven methods) or requiring strong assumptions regarding traveller behaviour (uncalibrated choice set generation methodologies (CSGM)). Therefore, this study proposes a constrained enumeration CSGM that applies the non-compensatory decision model, elimination-by-aspects, for choice set formation. Subjective assumptions of traveller preferences are avoided by calibrating the decision model using observed route choice behaviour from smart card data, which is becoming increasingly available in public transport systems around the world. The calibration procedure also returns two key insights regarding choice set formation behaviour: (i) the ranking of different attributes by their importance, and (ii) the acceptable detours for each attribute. To demonstrate the methodology and investigate choice set formation behaviour, the tram and bus networks of The Hague, Netherlands are used as a case study.
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