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Crash Frequency Modeling Using Real-Time Environmental and Traffic Data and Unbalanced Panel Data Models

机译:使用实时环境和交通数据以及不平衡面板数据模型的碰撞频率建模

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摘要

Traffic and environmental conditions (e.g., weather conditions), which frequently change with time, have a significant impact on crash occurrence. Traditional crash frequency models with large temporal scales and aggregated variables are not sufficient to capture the time-varying nature of driving environmental factors, causing significant loss of critical information on crash frequency modeling. This paper aims at developing crash frequency models with refined temporal scales for complex driving environments, with such an effort providing more detailed and accurate crash risk information which can allow for more effective and proactive traffic management and law enforcement intervention. Zero-inflated, negative binomial (ZINB) models with site-specific random effects are developed with unbalanced panel data to analyze hourly crash frequency on highway segments. The real-time driving environment information, including traffic, weather and road surface condition data, sourced primarily from the Road Weather Information System, is incorporated into the models along with site-specific road characteristics. The estimation results of unbalanced panel data ZINB models suggest there are a number of factors influencing crash frequency, including time-varying factors (e.g., visibility and hourly traffic volume) and site-varying factors (e.g., speed limit). The study confirms the unique significance of the real-time weather, road surface condition and traffic data to crash frequency modeling.
机译:交通和环境条件(例如,天气条件)经常随时间变化,对撞车事故产生重大影响。具有大的时间尺度和聚合变量的传统碰撞频率模型不足以捕获驾驶环境因素的时变性质,从而导致碰撞频率建模中的关键信息大量丢失。本文旨在为复杂的驾驶环境开发具有改进的时间尺度的碰撞频率模型,从而提供更详细,准确的碰撞风险信息,从而可以更有效,更主动地进行交通管理和执法干预。利用不平衡的面板数据开发了具有特定地点随机效应的零膨胀负二项式(ZINB)模型,以分析高速公路路段的每小时碰撞频率。这些实时驾驶环境信息(包括交通,天气和路面状况数据,主要来自道路天气信息系统)与特定地点的道路特征一起纳入了模型。不平衡的面板数据ZINB模型的估计结果表明,影响碰撞频率的因素有很多,包括时变因素(例如,能见度和每小时交通量)和站点时变因素(例如,速度限制)。该研究证实了实时天气,路面状况和交通数据对碰撞频率建模的独特意义。

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