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Road Safety Forecasts in Five European Countries Using Structural Time Series Models

机译:使用结构时间序列模型对五个欧洲国家的道路安全进行预测

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Objective: Modeling road safety development is a complex task and needs to consider both the quantifiable impact of specific parameters as well as the underlying trends that cannot always be measured or observed. The objective of this research is to apply structural time series models for obtaining reliable medium- to long-term forecasts of road traffic fatality risk using data from 5 countries with different characteristics from all over Europe (Cyprus, Greece, Hungary, Norway, and Switzerland). Methods: Two structural time series models are considered: (1) the local linear trend model and the (2) latent risk time series model. Furthermore, a structured decision tree for the selection of the applicable model for each situation (developed within the Road Safety Data, Collection, Transfer and Analysis [DaCoTA] research project, cofunded by the European Commission) is outlined. First, the fatality and exposure data that are used for the development of the models are presented and explored. Then, the modeling process is presented, including the model selection process, introduction of intervention variables, and development of mobility scenarios. Results: The forecasts using the developed models appear to be realistic and within acceptable confidence intervals. The proposed methodology is proved to be very efficient for handling different cases of data availability and quality, providing an appropriate alternative from the family of structural time series models in each country. Conclusions: A concluding section providing perspectives and directions for future research is presented.
机译:目标:对道路安全发展进行建模是一项复杂的任务,需要既要考虑特定参数的可量化影响,也要考虑无法始终测量或观察到的潜在趋势。这项研究的目的是应用结构时间序列模型,使用来自欧洲(塞浦路斯,希腊,匈牙利,挪威和瑞士)的5个具有不同特征的国家/地区的数据来获得可靠的中长期道路交通死亡风险预测)。方法:考虑两个结构时间序列模型:(1)局部线性趋势模型和(2)潜在风险时间序列模型。此外,还概述了一种结构化的决策树,用于选择每种情况的适用模型(在道路安全数据,收集,转移和分析[DaCoTA]研究项目中开发,由欧洲委员会共同资助)。首先,介绍并探讨了用于模型开发的死亡率和暴露数据。然后,介绍了建模过程,包括模型选择过程,干预变量的引入以及机动性场景的发展。结果:使用开发的模型进行的预测似乎是现实的,并且在可接受的置信区间内。实践证明,所提出的方法对于处理数据可用性和质量的不同情况非常有效,为每个国家的结构时间序列模型族提供了一种适当的替代方法。结论:结论部分提供了未来研究的观点和方向。

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