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Bayesian Hierarchical Modeling Monthly Crash Counts on Freeway Segments with Temporal Correlation

机译:具有时间相关性的高速公路路段上的贝叶斯分层建模每月事故计数

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As the basis of traffic safety management, crash prediction models have long been a prominent focus in the field of freeway safety research. Studies usually take years or seasons as the observed time units, which may result in heterogeneity in crash frequency. To eliminate that heterogeneity, this study analyzes monthly crash counts and develops Bayesian hierarchical models with random effects, lag-1 autoregression (AR-1), and both (REAR-1) to accommodate the multilevel structure and temporal correlation in crash data. The candidate models are estimated and evaluated in the freeware WinBUGS using a crash dataset obtained from the Kaiyang Freeway in Guangdong Province, China. Significant temporal effects are found in the three models, and Deviance Information Criteria (DIC) results show that taking temporal correlation into account considerably improves the model fit compared with the Poisson model. The hierarchical models also avoid any misidentification of the factors with significant safety effects, because their variances are greater than in the Poisson model. The DIC value of the AR-1 model is substantially lower than that of the random effect model and equivalent to that of the REAR-1 model, which indicates the superiority of the lag-1 autoregressive structure in accounting for the temporal effects in crash frequency.
机译:作为交通安全管理的基础,碰撞预测模型一直是高速公路安全研究领域的重点。研究通常以年或季节为观测时间单位,这可能导致碰撞频率异质性。为了消除这种异质性,本研究分析了每月的崩溃次数,并开发了具有随机效应,滞后1自回归(AR-1)和两者(REAR-1)的贝叶斯分层模型,以适应崩溃数据中的多级结构和时间相关性。使用从中国广东省开阳高速公路获得的崩溃数据集,在免费软件WinBUGS中对候选模型进行了估计和评估。在这三个模型中发现了显着的时间效应,并且偏差信息标准(DIC)结果表明,与Poisson模型相比,考虑时间相关性可以显着改善模型拟合。分层模型还避免了对具有重大安全影响的因素的任何误判,因为它们的方差大于Poisson模型中的方差。 AR-1模型的DIC值实质上低于随机效应模型的DIC值,并且与REAR-1模型的DIC值相等,这表明lag-1自回归结构在考虑碰撞频率的时间效应方面的优越性。

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