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A Data Mining Driven Risk Profiling Method for Road Asset Management

机译:一种用于道路资产管理的数据挖掘驱动风险分析方法

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Road surface skid resistance has been shown to have a strong relationship to road crash risk, however, applying the current method of using investigatory levels to identify crash prone roads is problematic as they may fail in identifying risky roads outside of the norm. The proposed method analyses a complex and formerly impenetrable volume of data from roads and crashes using data mining. This method rapidly identifies roads with elevated crash-rate, potentially due to skid resistance deficit, for investigation. A hypothetical skid resistance/crash risk curve is developed for each road segment, driven by the model deployed in a novel regression tree extrapolation method. The method potentially solves the problem of missing skid resistance values which occurs during network-wide crash analysis, and allows risk assessment of the major proportion of roads without skid resistance values.
机译:事实表明,路面抗滑性与道路碰撞风险有很强的关系,但是,应用当前使用调查级别来识别容易发生碰撞的道路的方法是有问题的,因为它们可能无法识别超出规范的危险道路。所提出的方法使用数据挖掘来分析来自道路和交通事故的复杂且以前难以理解的数据量。这种方法可以快速识别出由于碰撞阻力不足而导致碰撞率较高的道路,以进行调查。在新型回归树外推方法中部署的模型的驱动下,为每个路段开发了假设的防滑阻力/碰撞风险曲线。该方法潜在地解决了在全网碰撞分析期间发生的缺少防滑阻力值的问题,并且允许对没有防滑阻力值的大部分道路进行风险评估。

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