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首页> 外文期刊>Journal of transport & health. >Spatial models of active travel in small communities: Merging the goals of traffic monitoring and direct-demand modeling
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Spatial models of active travel in small communities: Merging the goals of traffic monitoring and direct-demand modeling

机译:小社区中主动旅行的空间模型:合并交通监控和直接需求建模的目标

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A number of recent studies have made progress on specific components of monitoring and modeling bicycle and pedestrian traffic. However, few efforts merge the goals of collecting traffic counts and developing spatial models to meet multiple objectives, e.g., tracking performance measures and spatial modeling for use in exposure assessment. We used estimates of bicycle and pedestrian Annual Average Daily Traffic (AADT) from a comprehensive traffic monitoring campaign in a small community to develop direct-demand models of bicycle and pedestrian AADT. Our traffic monitoring campaign (101 locations) was designed specifically to capture spatial variability in traffic patterns while controlling for temporal bias. Lacking existing counts of cyclists and pedestrians, we chose count sites based on street functional class and centrality (a measure of trip potential). Our direct-demand models had reasonable goodness-of-fit (bicycle R2: 0.52; pedestrian R2: 0.71). We found that aspects of the transportation network (bicycle facilities, bus stops, centrality) and land use (population density) were correlated with bicycle and pedestrian AADT. Furthermore, spatial patterns of bicycle and pedestrian traffic were different, justifying separate monitoring and modeling of these modes. A strength of our analysis is that we conducted counts at a representative sample of all street and trail segments in our study area (Blacksburg, Virginia; ~5.5% of segments) - an advantage of monitoring in a small community. We demonstrated that it is possible to design traffic monitoring campaigns with multiple goals (e.g., estimating performance measures and developing spatial models). Outputs from our approach could be used to (1) assess land use patterns that are correlated with high rates of active travel and (2) provide inputs for exposure assessment (e.g., calculating crash rates or exposure to other hazards). Our work serves as a proof-of-concept on a relatively small transportation network and could potentially be extended to larger urban areas.
机译:最近的许多研究取得了监视和建模自行车和行人交通的特定组成部分的进展。但是,很少有努力合并收集交通计数和开发空间模型以实现多个目标的目标,例如跟踪绩效指标和空间建模,以用于暴露评估。我们使用了小型社区中全面的交通监控活动中对自行车和行人年平均每日流量(AADT)的估计,以开发自行车和行人AADT的直接需求模型。我们的交通监控活动(101个位置)专门旨在在控制时间偏见的同时捕获交通模式的空间变异性。缺乏现有的骑自行车者和行人的计数,我们选择了基于街头功能级别和中心(衡量旅行潜力的衡量标准)的计数站点。我们的直接需求模型具有合理的合适性(自行车R2:0.52;行人R2:0.71)。我们发现,运输网络(自行车设施,公共汽车站,中心性)和土地使用(人口密度)的各个方面与自行车和行人AADT相关。此外,自行车和行人交通的空间模式不同,证明对这些模式的单独监视和建模是合理的。我们分析的优势在于,我们在研究区域(弗吉尼亚州布莱克斯堡市的所有街道和步道领域的代表性样本中进行了计数,占细分市场的约5.5%),这是一个小社区监测的优势。我们证明,可以设计具有多个目标的流量监控活动(例如,估计绩效指标和开发空间模型)。我们方法的输出可用于(1)评估与高活动率相关的土地使用模式,(2)提供暴露评估的输入(例如,计算崩溃率或暴露于其他危害)。我们的工作是相对较小的运输网络上的概念验证,可能会扩展到较大的城市地区。

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