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Transferability and robustness of real-time freeway crash risk assessment

机译:实时高速公路碰撞风险评估的可传递性和鲁棒性

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摘要

Introduction: This study examines the data from single loop detectors on northbound (NB) US-101 in San Jose, California to estimate real-time crash risk assessment models. Method: The classification tree and neural network based crash risk assessment models developed with data from NB US-101 are applied to data from the same freeway, as well as to the data from nearby segments of the SB US-101, NB 1-880, and SB 1-880 corridors. The performance of crash risk assessment models on these nearby segments is the focus of this research. Results: The model applications show that it is in fact possible to use the same model for multiple freeways, as the underlying relationships between traffic data and crash risk remain similar. Impact on Industry: The framework provided here may be helpful to authorities for freeway segments with newly installed traffic surveillance apparatuses, since the real-time crash risk assessment models from nearby freeways with existing infrastructure would be able to provide a reasonable estimate of crash risk. The robustness of the model output is also assessed by location, time of day, and day of week. The analysis shows that on some locations the models may require further learning due to higher than expected false positive (e.g., the 1-680/1-280 interchange on US-101 NB) or false negative rates. The approach for post-processing the results from the model provides ideas to refine the model prior to or during the implementation.
机译:简介:本研究检查了加利福尼亚圣何塞北向(NB)US-101上单回路检测器的数据,以估计实时的碰撞风险评估模型。方法:将基于NB US-101数据开发的基于分类树和神经网络的碰撞风险评估模型应用于同一高速公路的数据以及SB US-101 NB 1-880的附近路段的数据以及SB 1-880走廊。碰撞风险评估模型在这些附近区域的性能是本研究的重点。结果:该模型应用程序表明,实际上有可能对多个高速公路使用相同的模型,因为交通数据和崩溃风险之间的潜在关系仍然相似。对行业的影响:此处提供的框架可能会对具有新安装的交通监控设备的高速公路路段当局有所帮助,因为来自附近高速公路和现有基础设施的实时碰撞风险评估模型将能够提供合理的碰撞风险估计。还可以通过位置,一天中的时间和一周中的某天来评估模型输出的鲁棒性。分析表明,由于误报率高于预期(例如,US-101 NB上的1-680 / 1-280互换)或误报率较高,模型可能需要进一步学习。对模型结果进行后处理的方法为在实施之前或实施过程中完善模型提供了思路。

著录项

  • 来源
    《Journal of Safety Research》 |2013年第9期|83-90|共8页
  • 作者单位

    Department of Civil & Environmental Engineering, California Polytechnic State University, 1 Grand Avenue, San Luis Obispo, CA 93407 United States;

    Department of Civil & Environmental Engineering, California Polytechnic State University, 1 Grand Avenue, San Luis Obispo, CA 93407 United States;

    Department of City & Regional Planni, California Polytechnic State University, 1 Grand Avenue, San Luis Obispo, CA 93407 United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Real-time crash risk; Transferability; Freeway safety; Classification trees; Neural networks;

    机译:实时崩溃风险;可转让性;高速公路安全;分类树;神经网络;

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