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State-space based analysis and forecasting of macroscopic road safety trends in Greece

机译:基于状态空间的希腊宏观道路安全趋势分析和预测

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In this paper, macroscopic road safety trends in Greece are analyzed using state-space models and data for 52 years (1960-2011). Seemingly unrelated time series equations (SUTSE) models are developed first, followed by richer latent risk time-series (LRT) models. As reliable estimates of vehicle-kilometers are not available for Greece, the number of vehicles in circulation is used as a proxy to the exposure. Alternative considered models are presented and discussed, including diagnostics for the assessment of their model quality and recommendations for further enrichment of this model. Important interventions were incorporated in the models developed (1986 financial crisis, 1991 old-car exchange scheme, 1996 new road fatality definition) and found statistically significant. Furthermore, the forecasting results using data up to 2008 were compared with final actual data (2009-2011) indicating that the models perform properly, even in unusual situations, like the current strong financial crisis in Greece. Forecasting results up to 2020 are also presented and compared with the forecasts of a model that explicitly considers the currently ongoing recession. Modeling the recession, and assuming that it will end by 2013, results in more reasonable estimates of risk and vehicle-kilometers for the 2020 horizon. This research demonstrates the benefits of using advanced state-space modeling techniques for modeling macroscopic road safety trends, such as allowing the explicit modeling of interventions. The challenges associated with the application of such state-of-the-art models for macroscopic phenomena, such as traffic fatalities in a region or country, are also highlighted. Furthermore, it is demonstrated that it is possible to apply such complex models using the relatively short time-series that are available in macroscopic road safety analysis.
机译:本文使用状态空间模型和52年(1960-2011)的数据分析了希腊宏观道路安全趋势。似乎首先开发了不相关的时间序列方程(SUTSE)模型,然后是更丰富的潜在风险时间序列(LRT)模型。由于无法获得希腊的可靠的行车里程估算,因此将流通中的车辆数量用作暴露的代名词。提出并讨论了其他考虑的模型,包括用于评估模型质量的诊断程序以及为进一步丰富该模型的建议。重要的干预措施已纳入已开发的模型中(1986年金融危机,1991年旧车更换计划,1996年新的道路死亡定义),并且在统计上具有显着意义。此外,将使用截至2008年的数据的预测结果与最终的实际数据(2009-2011年)进行比较,表明即使在异常情况下(例如希腊当前的严重金融危机),模型也能正常运行。还提供了到2020年的预测结果,并将其与明确考虑当前持续衰退的模型的预测进行比较。对经济衰退进行建模,并假设将在2013年结束,就可以对2020年的风险和行车里程做出更合理的估计。这项研究证明了使用先进的状态空间建模技术对宏观道路安全趋势进行建模的好处,例如允许对干预措施进行显式建模。还强调了与此类最新模型应用于宏观现象(例如某个地区或国家的交通死亡人数)相关的挑战。此外,已证明可以使用宏观道路安全分析中可用的相对较短的时间序列来应用此类复杂模型。

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