基于站式共享单车的人口密集城市公共交通模式分析

Di Wang, Evan Wu, A. Tan
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引用次数: 1

摘要

人口密集的城市面临着高交通需求和有限物理空间的巨大挑战。因此,在这些城市,公共交通系统是严重依赖的。传统的公共交通方式,如公共汽车、出租车和地铁,在过去的一个世纪里已经在全球范围内部署。在过去的十年里,一种新型的公共交通方式——共享单车,在许多城市出现了。这些共享单车要么由政府监管,要么由利润驱动的公司部署,要么有站点,要么没有站点。尽管如此,所有这些都是为了更好地解决人口密集城市的最后一英里问题,作为传统公共交通系统的补充。在本文中,我们分析了美国芝加哥一个人口密集城市的公共交通模式,使用了一年内收集的涵盖共享单车、公共汽车、出租车和地铁交通记录的综合数据集。具体而言,我们采用自我调节聚类方法揭示了交通运输的主要模式和非规则模式。除了报告自主发现的运输模式外,我们还表明,我们的方法比基准测试方法实现了更好的聚类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Public Transportation Patterns in a Densely Populated City with Station-based Shared Bikes
Densely populated cities face great challenges of high transportation demand and limited physical space. Thus, in these cities, the public transportation system is heavily relied on. Conventional public transportation modes such as bus, taxi and subway have been globally deployed over the past century. In the last decade, a new type of public transportation mode, shared bike, emerged in many cities. These shared bikes are deployed by either government-regulated or profit-driven companies and are either station-based or station-less. Nonetheless, all of them are designed to better solve the last-mile problem in densely populated cities as complements to the conventional public transportation system. In this paper, we analyse the public transportation patterns in a densely populated city, Chicago, USA, using comprehensive datasets covering the transportation records on shared bikes, buses, taxis and subways collected over one year's time. Specifically, we apply self-regulated clustering methods to reveal both the majority transportation patterns and the irregular ones. Other than reporting the autonomously discovered transportation patterns, we also show that our method achieves better clustering performance than the benchmarking methods.
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