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Random parameter models for estimating statewide daily bicycle counts using crowdsourced data

机译:用于使用众包数据估计州全自行车计数的随机参数模型

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Persistent lack of non-motorized traffic counts can affect the evidence-based decisions of transportation planning and safety-concerned agencies in making reliable investments in bikeway and other non-motorized facilities. Researchers have used various approaches to estimate bicycles counts, such as scaling, direct-demand modeling, time series, and others. In recent years, an increasing number of studies have tried to use crowdsourced data for estimating the bicycle counts. Crowdsourced data only represents a small percentage of cyclists. This percentage, on the other hand, can change based on the location, facility type, meteorological, and other factors. Moreover, the autocorrelation observed in bicycle counts may be different from the autocorrelation structure observed among crowdsourced platform users, such as Strava. Strava users are more consistent; hence, the time series count data may be stationary, while bicycle demand may vary based on seasonal factors. In addition to seasonal variation, several time-invariant contributing factors (e.g., facility type, roadway characteristics, household income) affect bicycle demand, which needs to be accounted for when developing direct demand models. In this paper, we use a mixed-effects model with autocorrelated errors to predict daily bicycle counts from crowdsourced data across the state of Texas. Additionally, we supplement crowdsourced data with other spatial and temporal factors such as roadway facility, household income, population demographics, population density and weather conditions to predict bicycle counts. The results show that using a robust methodology, we can predict bicycle demand with a 29% margin of error, which is significantly lower than merely scaling the crowdsourced data (41%).
机译:持续缺乏非机动性的交通计数会影响运输规划和安全有关机构的基于证据的决策,以便在自行车道和其他非机动设施中进行可靠的投资。研究人员使用了各种方法来估计自行车计数,例如缩放,直接需求建模,时间序列等。近年来,越来越多的研究已经尝试使用众群数据来估算自行车计数。众群数据只代表骑自行车者的一小部分。另一方面,这一百分比可以基于位置,设施类型,气象和其他因素来改变。此外,在自行车计数中观察到的自相关可能与在众群平台用户(例如Strava)中观察到的自相关结构不同。 Strava用户更加一致;因此,时间序列计数数据可能是静止的,而自行车需求可能根据季节因素而变化。除季节性变化外,几个时间不变的贡献因素(例如,设施类型,道路特征,家庭收入)会影响自行车需求,这需要考虑直接需求模型。在本文中,我们使用具有自相关误差的混合效应模型,以预测来自德克萨斯州的众群数据的日常自行车计数。此外,我们补充了与其他空间和时间因素(如巷道设施,家庭收入,人口统计学,人口密度和天气状况)的其他空间和时间因素补充了众所周境的数据,以预测自行车计数。结果表明,使用稳健的方法,我们可以预测自行车需求,误差的29%幅度,这显着低于划分众群数据(41%)。

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