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Identification of Bicycle Demand from Online Routing Requests

机译:从在线路由要求识别自行车需求

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Governments at all levels aim to increase cycling and walking within the mix of transportation modes. Accurate estimation of existing and potential bicycle trips on different parts of a road network is necessary to determine for which segments an investment in improved bicycling infrastructure is most effective. This paper introduces the novel idea to estimate bicycle demand on road segments based on logged trip requests that users submitted to a Web based bicycle trip planner. As a first step in this research direction, this paper assesses the general suitability of logged trip data for modeling cycling demand. More specifically, this study analyzes logged trip origins and destinations from user requests collected over a one-year period. The requests were submitted to an online bicycle trip planner developed for Broward County, Florida. The study then compares (a) point positions of logged trip origins with origins of bicycle commute trips obtained from census data, and (b) trip length distributions of logged trips with trip lengths obtained from observed bicycling trips in street networks. Several basic spatial and temporal filters are introduced and applied on the logged trip data to identify requests that most likely represent an actual trip and therefore provide a potential resource to predict bicycle demand.
机译:各级政府旨在增加骑自行车和行走在运输模式的混合中。准确估计公路网络的不同部分的现有和潜在的自行车旅行是必要的,以确定哪些部分对改进的骑自行车基础设施的投资是最有效的。本文介绍了基于登录的旅行请求向基于Web的自行车旅行计划者提出的Logged TRIP估算公路段对公路群体的新的想法。作为本研究方向的第一步,本文评估了记录跳闸数据的普遍适用性,用于建模骑自行车需求。更具体地,本研究分析了在一年内收集的用户请求中的记录行程起源和目的地。该请求已提交给为佛罗里达州的Broward County开发的在线自行车旅行计划。然后,该研究比较了从人口普查数据获得的自行车通勤旅行的起源的(a)点跳闸起源的点位置,(b)跳闸跳闸的跳闸长度分布,具有从街道网络中观察到的骑自行车行程获得的跳闸长度。介绍了几种基本的空间和时间过滤器并应用于记录的跳闸数据,以识别最有可能代表实际旅行的请求,因此提供了预测自行车需求的潜在资源。

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  • 来源
    《Geoinformatics Forum》|2012年||共10页
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  • 作者

    Hartwig H. HOCHMAIR;

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  • 原文格式 PDF
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  • 中图分类 P208-53;
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  • 入库时间 2022-08-21 12:08:54

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