从共享单车系统中抽象出流动流。

IF 2.3 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY
Public Transport Pub Date : 2022-01-01 Epub Date: 2021-03-16 DOI:10.1007/s12469-020-00259-5
Fabio Kon, Éderson Cássio Ferreira, Higor Amario de Souza, Fábio Duarte, Paolo Santi, Carlo Ratti
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引用次数: 0

摘要

在过去十年中,自行车运动有了显著增长。在一些地区,大规模自行车共享系统的实施和自行车基础设施的改善是促成这一增长的两个因素。非机动交通方式的增加使我们的城市更加人性化,减少了污染和交通,提高了生活质量。在全球许多城市,城市规划者和决策者都将自行车作为改善城市交通的一种可持续方式。尽管共享单车系统会产生大量有关用户出行习惯的数据,但大多数城市仍然依赖传统的工具和方法来进行规划和决策。最近的技术进步使我们能够收集和分析有关城市交通的大量数据,为循证决策奠定坚实基础。在本文中,我们介绍了一种新颖的分析方法,可用于处理数百万次共享单车出行,分析共享单车的流动性,抽象出特定城市地区的相关流动流。在可视化平台的支持下,该方法提供了一套全面的分析工具,以支持公共机构做出数据驱动的政策和规划决策。本文通过对大波士顿地区共享单车系统的案例研究说明了该方法的使用,并由此提出了有关该特定系统的新发现。最后,对专家用户的评估表明,这种方法和工具被认为非常有用,相对易于使用,而且他们打算在不久的将来采用这种工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abstracting mobility flows from bike-sharing systems.

Bicycling has grown significantly in the past ten years. In some regions, the implementation of large-scale bike-sharing systems and improved cycling infrastructure are two of the factors enabling this growth. An increase in non-motorized modes of transportation makes our cities more human, decreases pollution, traffic, and improves quality of life. In many cities around the world, urban planners and policymakers are looking at cycling as a sustainable way of improving urban mobility. Although bike-sharing systems generate abundant data about their users' travel habits, most cities still rely on traditional tools and methods for planning and policy-making. Recent technological advances enable the collection and analysis of large amounts of data about urban mobility, which can serve as a solid basis for evidence-based policy-making. In this paper, we introduce a novel analytical method that can be used to process millions of bike-sharing trips and analyze bike-sharing mobility, abstracting relevant mobility flows across specific urban areas. Backed by a visualization platform, this method provides a comprehensive set of analytical tools to support public authorities in making data-driven policy and planning decisions. This paper illustrates the use of the method with a case study of the Greater Boston bike-sharing system and, as a result, presents new findings about that particular system. Finally, an assessment with expert users showed that this method and tool were considered very useful, relatively easy to use and that they intend to adopt the tool in the near future.

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来源期刊
Public Transport
Public Transport TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
5.40
自引率
15.40%
发文量
19
期刊介绍: The scope and purpose of the journal includes, but is not limited to, any type of research in the area of Public Transport: Planning and Operations. As its core it serves the primary mission of advancing the state of the art and the state of the practice in computer-aided systems and scheduling in public transport. The journal considers any type of subjects in this area especially with a focus to planning and scheduling, the common ground is the use of computer-aided methods and operations research techniques to improve information management, network and route planning, vehicle and crew scheduling and rostering, vehicle monitoring and management, and practical experience with scheduling and public transport planning methods. Besides theoretical papers, the journal also publishes case studies and applications. Public Transport addresses transport operators, consulting firms and academic institutions involved in development, utilization or research of computer-aided planning and scheduling in public transport.Officially cited as: Public Transp
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