Transfer journey identification and analyses from electronic fare collection data

M. Hofmann, M. O’Mahony
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引用次数: 48

Abstract

Understanding the behaviour of public transport passengers is key to providing a system from which passengers will derive the maximum benefit. One method of analysing this behaviour is with the use of passenger boarding data, stored in a database. Such a database may be improved by enriching the already existing dataset by applying specific algorithms. This paper describes an iterative classification algorithm that classifies passenger boardings into two categories; transfer journeys and single journeys. The dataset used was from an urban public transport operator with a large fleet (over 1000 buses) and data of 48 million magnetic strip card boardings from 1998 and 1999. This paper details the process involved in the initial development of the iterative classification algorithm, the analysis of transfer node identification matrices, waiting time information charts and spatial first/second boarding matrices. When the algorithm is applied to the dataset it provides transport planners with valuable information with regard to passenger boardings, transfers and waiting times which can assist them in transport planning and policymaking. The purpose of this paper is to describe the automatic generation of a new data attribute that cannot be derived directly and therefore increases the future utilization of the dataset. The paper presents various analyses based on the extended and enriched database to illustrate this point.
从电子收费数据中进行旅程识别和分析
了解公共交通乘客的行为是提供一个让乘客获得最大利益的系统的关键。分析这种行为的一种方法是使用存储在数据库中的乘客登机数据。这样的数据库可以通过应用特定的算法来丰富已经存在的数据集来改进。本文描述了一种将旅客登机分为两类的迭代分类算法;换乘和单程。使用的数据集来自一家拥有大型车队(超过1000辆公交车)的城市公共交通运营商,数据来自1998年至1999年的4800万张磁条卡。本文详细介绍了迭代分类算法的初始开发过程、换乘节点识别矩阵、等待时间信息图和空间一/二次上车矩阵的分析。当该算法应用于数据集时,它为交通规划者提供了有关乘客登机、换乘和等待时间的宝贵信息,可以帮助他们进行交通规划和决策。本文的目的是描述不能直接派生的新数据属性的自动生成,从而增加数据集的未来利用率。本文提出了基于扩展和丰富的数据库的各种分析来说明这一点。
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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