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A random forests approach to prioritize Highway Safety Manual (HSM) variables for data collection

机译:随机森林方法优先处理公路安全手册(HSM)变量以收集数据

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The Highway Safety Manual (HSM) recommends using the empirical Bayes method with locally derived calibration factors to predict an agency's safety performance. The data needs for deriving these local calibration factors are significant, requiring very detailed roadway characteristics information. Many of these data variables are currently unavailable in most of the agencies' databases. Furthermore, it is not economically feasible to collect and maintain all the HSM data variables. This study aims to prioritize the HSM calibration variables based on their impact on crash predictions. Prioritization would help to identify influential variables for which data could be collected and maintained for continued updates, and thereby reduce intensive data collection efforts. Data were first collected for all the HSM variables from over 2400 miles of urban and suburban arterial road networks in Florida. Using 5years (2008-2012) of crash data, a random forests data mining approach was then applied to measure the importance of each variable in crash frequency predictions for five different urban and suburban arterial facilities including two-lane undivided, three-lane with a two-way left-turn lane, four-lane undivided, four-lane divided, and five-lane with a two-way left-turn lane. Two heuristic approaches were adopted to prioritize the variables: (i) simple ranking based on individual relative influence of variables; and (ii) clustering based on relative influence of variables within a specific range. Traffic volume was found as the most influential variable. Roadside object density, minor commercial driveway density, and minor residential driveway density variables were the other variables with significant influence on crash predictions. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:《公路安全手册》(HSM)建议使用经验贝叶斯方法和本地衍生的校准因子来预测机构的安全绩效。导出这些本地校准因子的数据需求非常大,需要非常详细的巷道特征信息。这些数据变量中的许多变量目前在大多数代理商的数据库中不可用。此外,收集和维护所有HSM数据变量在经济上不可行。这项研究旨在根据HSM校准变量对碰撞预测的影响来确定优先级。优先级排序将有助于确定可以收集和维护数据以进行持续更新的有影响力的变量,从而减少密集的数据收集工作。首先从佛罗里达州超过2400英里的城市和郊区干道网络收集所有HSM变量的数据。然后使用5年(2008-2012)的碰撞数据,采用随机森林数据挖掘方法来测量五种不同的城市和郊区动脉设施(包括两车道,三车道和三车道)在崩溃频率预测中每个变量的重要性。两路左转车道,四车道未分开,四车道分开,五车道(两车道左转车道)。采用两种启发式方法对变量进行优先级排序:(i)基于变量的各个相对影响的简单排名; (ii)根据特定范围内变量的相对影响进行聚类。发现流量是最具影响力的变量。路边物体密度,次要商业车道密度和次要住宅车道密度变量是对碰撞预测有重大影响的其他变量。版权所有(c)2015 John Wiley&Sons,Ltd.

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