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Estimating bicycle trip volume for Miami-Dade county from Strava tracking data

机译:从Strava跟踪数据估算迈阿密-戴德县的自行车旅行量

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Sports and fitness apps on GPS enabled cell phones and smart watches have become a rich source of GPS tracking data for nonmotorized traffic, including walking, running, and cycling. These crowd-sourced data can be analyzed to better understand the cycling behavior of a large user community. Using Strava tracking data from the Miami-Dade County area, this study identifies which transport network measures, characteristics of the built environment, and sociodemographic factors are associated with increased or decreased bicycle ridership in census block groups. For this purpose, a set of linear regression models are estimated to predict non-commute and commute bicycle kilometers travelled per block group, as well as bicycle kilometers travelled on weekends and weekdays. Eigenvector spatial filtering is applied to explicitly model spatial autocorrelation and to avoid parameter estimation bias. Results suggest that Strava data, due to its high spatial resolution and coverage, can identify in detail how the influence of explanatory variables on estimated bicycle trip volume varies between different trip purposes and days of the week. Based on the regression results, the paper presents a set of guidelines for practical design detailing which groups of cyclists would benefit most from specific bicycle infrastructure improvements.
机译:具有GPS功能的手机和智能手表上的运动和健身应用程序已成为用于非机动车交通(包括步行,跑步和骑自行车)的GPS跟踪数据的丰富来源。可以对这些众包数据进行分析,以更好地了解大型用户社区的骑自行车行为。这项研究使用来自迈阿密-戴德县地区的Strava跟踪数据,确定了哪些交通网络措施,建筑环境的特征以及社会人口统计学因素与人口普查区组中自行车出行的增加或减少有关。为此,估算了一组线性回归模型,以预测每个街区组行驶的非上下班和上下班自行车公里,以及周末和工作日行驶的自行车公里。特征向量空间滤波用于显式建模空间自相关并避免参数估计偏差。结果表明,Strava数据由于其较高的空间分辨率和覆盖范围,可以详细地确定说明性变量对估计自行车出行量的影响在不同出行目的和一周中的不同日期之间如何变化。根据回归结果,本文提出了一套实用的设计准则,详细说明了哪些自行车手群体将从特定的自行车基础设施改善中受益最大。

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