首页> 外文OA文献 >Pre-crash and non-crash traffic flow trends analysis on motorways
【2h】

Pre-crash and non-crash traffic flow trends analysis on motorways

机译:高速公路碰撞前和非碰撞交通流趋势分析

摘要

Crashes that occur on motorways contribute to a significant proportion (40-50%) of non-recurrent motorway congestions. Hence, reducing the frequency of crashes assists in addressing congestion issues (Meyer, 2008). Crash likelihood estimation studies commonly focus on traffic conditions in a short time window around the time of a crash while longer-term pre-crash traffic flow trends are neglected. In this paper we will show, through data mining techniques that a relationship between pre-crash traffic flow patterns and crash occurrence on motorways exists. We will compare them with normal traffic trends and show this knowledge has the potential to improve the accuracy of existing models and opens the path for new development approaches. The data for the analysis was extracted from records collected between 2007 and 2009 on the Shibuya and Shinjuku lines of the Tokyo Metropolitan Expressway in Japan. The dataset includes a total of 824 rear-end and sideswipe crashes that have been matched with crashes corresponding to traffic flow data using an incident detection algorithm. Traffic trends (traffic speed time series) revealed that crashes can be clustered with regards to the dominant traffic patterns prior to the crash. Using the K-Means clustering method with Euclidean distance function allowed the crashes to be clustered. Then, normal situation data was extracted based on the time distribution of crashes and were clustered to compare with the “high risk” clusters. Five major trends have been found in the clustering results for both high risk and normal conditions. The study discovered traffic regimes had differences in the speed trends. Based on these findings, crash likelihood estimation models can be fine-tuned based on the monitored traffic conditions with a sliding window of 30 minutes to increase accuracy of the results and minimize false alarms.
机译:高速公路上发生的撞车事故占非经常性高速公路拥堵的很大一部分(40-50%)。因此,减少崩溃的频率有助于解决拥塞问题(Meyer,2008年)。碰撞可能性估计研究通常集中在碰撞发生前后的短时间内的交通状况,而长期碰撞前的交通流量趋势却被忽略。在本文中,我们将通过数据挖掘技术表明,碰撞前的交通流模式与高速公路上的碰撞发生之间存在关系。我们将它们与正常的交通趋势进行比较,并显示此知识有可能提高现有模型的准确性,并为新的开发方法开辟道路。分析的数据是从2007年至2009年在日本东京都会高速公路的涩谷和新宿线上收集的记录中提取的。该数据集包括总共824个后端和侧向碰撞事故,这些事故已经使用事件检测算法与与交通流数据相对应的事故进行了匹配。交通趋势(交通速度时间序列)显示,可以将碰撞归类为碰撞之前的主要交通模式。通过将K-Means聚类方法与欧几里得距离函数结合使用,可以对崩溃进行聚类。然后,基于崩溃的时间分布提取正常情况数据,并将其聚类以与“高风险”聚类进行比较。在高风险和正常情况下的聚类结果中发现了五个主要趋势。研究发现交通状况在速度趋势上存在差异。基于这些发现,可以基于监视的交通状况以30分钟的滑动窗口对事故可能性估计模型进行微调,以提高结果的准确性并最大程度地减少误报。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号