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Improved Criteria for Estimating Calibration Factors for Highway Safety Manual (HSM) Applications

机译:改进的公路安全手册(Hsm)应用校准因子估算标准

摘要

The Highway Safety Manual (HSM) estimates roadway safety performance based on predictive models that were calibrated using national data. Calibration factors are then used to adjust these predictive models to local conditions for local applications. The HSM recommends that local calibration factors be estimated using 30 to 50 randomly selected sites that experienced at least a total of 100 crashes per year. It also recommends that the factors be updated every two to three years, preferably on an annual basis. However, these recommendations are primarily based on expert opinions rather than data-driven research findings. Furthermore, most agencies do not have data for many of the input variables recommended in the HSM. This dissertation is aimed at determining the best way to meet three major data needs affecting the estimation of calibration factors: (1) the required minimum sample sizes for different roadway facilities, (2) the required frequency for calibration factor updates, and (3) the influential variables affecting calibration factors.In this dissertation, statewide segment and intersection data were first collected for most of the HSM recommended calibration variables using a Google Maps application. In addition, eight years (2005-2012) of traffic and crash data were retrieved from existing databases from the Florida Department of Transportation. With these data, the effect of sample size criterion on calibration factor estimates was first studied using a sensitivity analysis. The results showed that the minimum sample sizes not only vary across different roadway facilities, but they are also significantly higher than those recommended in the HSM. In addition, results from paired sample t-tests showed that calibration factors in Florida need to be updated annually.To identify influential variables affecting the calibration factors for roadway segments, the variables were prioritized by combining the results from three different methods: negative binomial regression, random forests, and boosted regression trees. Only a few variables were found to explain most of the variation in the crash data. Traffic volume was consistently found to be the most influential. In addition, roadside object density, major and minor commercial driveway densities, and minor residential driveway density were also identified as influential variables.
机译:《公路安全手册》(HSM)根据使用国家数据校准的预测模型估算道路安全性能。然后使用校准因子将这些预测模型调整为适合本地应用的本地条件。 HSM建议使用30至50个随机选择的站点(每年至少发生100次崩溃)估算本地校准因子。它还建议每两到三年更新一次因子,最好每年更新一次。但是,这些建议主要基于专家意见,而不是基于数据的研究结果。此外,大多数机构没有HSM建议的许多输入变量的数据。本文旨在确定满足影响校准因子估算的三个主要数据需求的最佳方法:(1)不同道路设施所需的最小样本量;(2)校准因子更新所需的频率;以及(3)本文首先利用Google Maps应用程序为大多数HSM建议的校准变量收集了州范围内的路段和交叉点数据。此外,还从佛罗里达州交通运输部的现有数据库中检索了八年(2005-2012年)的交通和崩溃数据。利用这些数据,首先使用敏感性分析研究了样本量标准对校准因子估计的影响。结果表明,最小样本量不仅在不同的道路设施之间有所不同,而且也明显高于HSM中建议的样本量。此外,配对t检验的结果表明佛罗里达州的校准因子需要每年更新。为确定影响道路段校准因子的影响变量,将三种不同方法的结果结合起来对变量进行优先级排序:负二项式回归,随机森林和增强型回归树。发现只有几个变量可以解释崩溃数据中的大部分变化。流量始终被认为是最具影响力的。此外,路边物体密度,主要和次要商业车道密度以及次要住宅车道密度也被确定为影响变量。

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  • 作者

    Saha Dibakar;

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  • 年度 2014
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  • 原文格式 PDF
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  • 入库时间 2022-08-31 16:33:15

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