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Sample-size guidelines for recalibrating crash prediction models: Recommendations for the highway safety manual

机译:重新校准碰撞预测模型的样本量准则:公路安全手册的建议

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The Highway Safety Manual (HSM) prediction models are fitted and validated based on crash data collected from a selected number of states in the United States. Therefore, for a jurisdiction to be able to fully benefit from applying these models, it is necessary to calibrate or recalibrate them to local conditions. The first edition of the HSM recommends calibrating the models using a one-size-fits-all sample-size of 30-50 locations with total of at least 100 crashes per year. However, the HSM recommendation is not fully supported by documented studies. The objectives of this paper are consequently: (1) to examine the required sample size based on the characteristics of the data that will be used for the calibration or recalibration process; and, (2) propose revised guidelines. The objectives were accomplished using simulation runs for different scenarios that characterized the sample mean and variance of the data. The simulation results indicate that as the ratio of the standard deviation to the mean (i.e., coefficient of variation) of the crash data increases, a larger sample-size is warranted to fulfill certain levels of accuracy. Taking this observation into account, sample-size guidelines were prepared based on the coefficient of variation of the crash data that are needed for the calibration process. The guidelines were then successfully applied to the two observed datasets. The proposed guidelines can be used for all facility types and both for segment and intersection prediction models. (C) 2016 Elsevier Ltd. All rights reserved.
机译:公路安全手册(HSM)预测模型是根据从美国多个州收集的碰撞数据进行拟合和验证的。因此,要使司法管辖区能够从应​​用这些模型中完全受益,有必要根据当地条件对其进行校准或重新校准。 HSM的第一版建议使用30--50个地点的单一样本适合所有样本大小来校准模型,每年至少发生100次崩溃。但是,有文件的研究并未完全支持HSM建议。因此,本文的目标是:(1)根据将用于校准或重新校准过程的数据的特性,检查所需的样本量; (2)提出修订指南。使用针对不同场景的模拟运行来实现目标,这些场景描述了样本均值和数据方差。模拟结果表明,随着碰撞数据的标准偏差与平均值(即变异系数)之比增加,有必要确保更大的样本量才能达到一定的准确性。考虑到这一点,根据校准过程所需的碰撞数据的变异系数,准备了样本量准则。然后,该准则已成功应用于两个观察到的数据集。拟议的准则可用于所有设施类型,并且可用于路段和交叉口预测模型。 (C)2016 Elsevier Ltd.保留所有权利。

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