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Application of local conditional autoregressive models for development of zonal crash prediction models and identification of crash risk boundaries

机译:局部条件自回归模型在区域碰撞预测模型开发和碰撞风险边界识别中的应用

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Developing conditional autoregressive (CAR) models is a common approach to address spatial autocorrelations. A main difficulty with these models is related to providing global smoothness, whereas local variations are ignored. Therefore, the main objective of the current research is to develop a zonal crash prediction model which considers localized spatial structure. Additionally, it is possible to identify the crash risks boundaries between low- and high-risk areas using spatial random effects that are locally structured (localized CAR). To judge the extent of success in achieving research goals, a case study with the collected data for Mashhad city was prepared. Also, to evaluate the performance of the proposed local CAR model, conventional models were developed and the results were compared. The results indicated that the cluster-based CAR model has the best performance. Additionally, by using the localized CAR model, about 16% of borders between adjacent units were identified as crash risk boundaries.
机译:开发条件自回归(CAR)模型是解决空间自相关的常用方法。这些模型的主要困难与提供全局平滑度有关,而局部变化被忽略。因此,当前研究的主要目的是建立一种考虑局部空间结构的区域碰撞预测模型。此外,可以使用局部结构化的局部随机效应(本地化CAR)来识别低风险区域和高风险区域之间的碰撞风险边界。为了判断实现研究目标的成功程度,准备了一个案例研究,其中收集了马什哈德市的数据。另外,为了评估建议的局部CAR模型的性能,开发了常规模型并比较了结果。结果表明,基于集群的CAR模型具有最佳性能。此外,通过使用局部CAR模型,相邻单元之间约16%的边界被确定为碰撞风险边界。

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