论文标题
修改赫斯顿随机波动率模型以预测当地汽车撞车率:华盛顿特区的案例研究
Amending the Heston Stochastic Volatility Model to Forecast Local Motor Vehicle Crash Rates: A Case Study of Washington, D.C
论文作者
论文摘要
在城市地区进行撞车率建模需要大量有关历史和主要的交通量以及撞车事件和特征的数据。只要城市网络的交通量在很大程度上取决于典型的工作和学校通勤模式,则可以以合理的准确度确定崩溃率。但是,由于外源性事件(例如,极端天气)而不是典型的通勤模式,通常会在交通量和崩溃事件中经常受到峰值和崩溃事件的峰值和潮流事件的区域而变得更加复杂。华盛顿特区的一个特别暴露于外源性事件的区域是,在2009年至2020年之间,崩溃事件发生了很大的增长。在这项研究中,我们采用了一种预测模型,该模型将异质性和时间不稳定嵌入其估算中,以改善当前在运输和道路安全研究中使用的预测模型。具体而言,我们引入了一个随机波动率模型,该模型旨在捕捉华盛顿特区碰撞率相关的细微差别。我们确定该模型可以胜过常规预测模型,但是鉴于整个Covid-19大流行中所表现出的独特旅行模式,它的表现不佳。尽管如此,它对华盛顿特区崩溃率的对特质的适应性表明了其准确模拟局部崩溃率流程的能力,可以在公共政策环境中进一步适应以形成道路安全目标。
Modelling crash rates in an urban area requires a swathe of data regarding historical and prevailing traffic volumes and crash events and characteristics. Provided that the traffic volume of urban networks is largely defined by typical work and school commute patterns, crash rates can be determined with a reasonable degree of accuracy. However, this process becomes more complicated for an area that is frequently subject to peaks and troughs in traffic volume and crash events owing to exogenous events (for example, extreme weather) rather than typical commute patterns. One such area that is particularly exposed to exogenous events is Washington, DC, which has seen a large rise in crash events between 2009 and 2020. In this study, we adopt a forecasting model that embeds heterogeneity and temporal instability in its estimates in order to improve upon forecasting models currently used in transportation and road safety research. Specifically, we introduce a stochastic volatility model that aims to capture the nuances associated with crash rates in Washington, DC. We determine that this model can outperform conventional forecasting models, but it does not perform well in light of the unique travel patterns exhibited throughout the COVID-19 pandemic. Nevertheless, its adaptability to the idiosyncrasies of Washington, DC crash rates demonstrates its ability to accurately simulate localised crash rates processes, which can be further adapted in public policy contexts to form road safety targets.