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Validating and improving public transport origin-destination estimation algorithm using smart card fare data

机译:使用智能卡票价数据验证和改进公共交通起点估计算法

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摘要

Smart card data are increasingly used for transit network planning, passengers' behaviour analysis and network demand forecasting. Public transport origin destination (O-D) estimation is a significant product of processing smart card data. In recent years, various O-D estimation methods using the trip-chaining approach have attracted much attention from both researchers and practitioners. However, the validity of these estimation methods has not been extensively investigated. This is mainly because these datasets usually lack data about passengers' alighting, as passengers are often "required to tap their smart cards only when boarding a public transport service. Thus, this paper has two main objectives. First, the paper reports on the implementation and validation of the existing O-D estimation method using the unique smart card dataset of the South-East Queensland public transport network which includes data on both boarding stops and alighting stops. Second, the paper improves the O-D estimation algorithm and empirically examines these improvements, relying on this unique dataset. The evaluation of the last destination assumption of the trip-chaining method shows a significant negative impact on the matching results of the differences between actual boarding/alighting times and the public transport schedules. The proposed changes to the algorithm improve the average distance between the actual and estimated alighting stops, as this distance is reduced from 806 m using the original algorithm to 530 m after applying the suggested improvements. (C) 2016 Elsevier Ltd. All rights reserved.
机译:智能卡数据越来越多地用于公交网​​络规划,乘客行为分析和网络需求预测。公共交通始发目的地(O-D)估计是处理智能卡数据的重要产品。近年来,使用跳链方法的各种O-D估计方法引起了研究人员和从业人员的广泛关注。但是,这些估计方法的有效性尚未得到广泛研究。这主要是因为这些数据集通常缺少有关乘客下车的数据,因为通常“仅在登上公共交通服务时才要求乘客使用他们的智能卡。因此,本文有两个主要目标。首先,本文报告了实施情况并使用东南昆士兰公共交通网络的独特智能卡数据集验证了现有的OD估计方法,该数据集包括登机站和下车站的数据;其次,本文对OD估计算法进行了改进,并通过经验检验了这些改进,在这个独特的数据集上,对旅行链方法的最后一个目的地假设的评估显示,实际上/下车时间与公共交通时间表之间的差异对匹配结果产生了显着的负面影响。实际下车距离与实际下车距离之间的平均距离,因为该距离减少了在应用建议的改进后,使用原始算法从806 m扩展到530 m。 (C)2016 Elsevier Ltd.保留所有权利。

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