Key Laboratory Automotive Transportaion Safety Technology Ministry of Communication, School of Automobile, Chang'an University, Xi'an 710064, PR China; Lyles School of Civil Engineering, Purdue University, 550 Stadium Mall Drive, West Lafayette, IN 47907, USA.
Lyles School of Civil Engineering, Purdue University, 550 Stadium Mall Drive, West Lafayette, IN 47907, USA.
Accid Anal Prev. 2020 Mar;137:105427. doi: 10.1016/j.aap.2019.105427. Epub 2020 Feb 4.
The primary objective of this study is to understand the relationship between driving risk of commercial dangerous-goods truck (CDT) and exposure factors and find a way to evaluate the risk of specific transportation environment, such as specific transportation route. Due to increasing transportation demand and potential threat to public, commercial dangerous goods transportation (CDGT) has drawn attention from decision makers and researchers within governmental and non-governmental safety organization. However, there are few studies focusing on driving risk assessment of commercial dangerous-goods truck by environmental factors. In this paper we employ survival analysis methods to analyze the impact of risk exposure factors on non-accident mileage of commercial dangerous-good truck and assess risk level of specific driving environment. Using raw location data from six transportation companies in China, we derive a set of 17 risk exposure factors that we use for model parameters estimation. The survival model and hazard model were estimated using the Weibull distribution as the baseline distribution. The results show that four factors - weather, traffic flow, travel time and average velocity have a significant impact on the non-accident mileage of driver in this company, and the assessment results of survival function and hazard function are robust to the different levels of testing data. The employment time has some effect on the results but does not result in a significant difference in most cases, and the task stability has little impact on the results. The findings of this study should be useful for decision makers and transportation companies to better risk assessment of CDT.
本研究的主要目的是了解商用危险品卡车(CDT)驾驶风险与暴露因素之间的关系,并找到一种方法来评估特定运输环境(如特定运输路线)的风险。由于运输需求的增加以及对公众的潜在威胁,商用危险品运输(CDGT)引起了政府和非政府安全组织的决策者和研究人员的关注。然而,很少有研究关注环境因素对商用危险品卡车驾驶风险的评估。本文采用生存分析方法分析了风险暴露因素对商用危险品卡车非事故里程的影响,并评估了特定驾驶环境的风险水平。我们使用中国六家运输公司的原始位置数据,得出了一组 17 个风险暴露因素,用于模型参数估计。使用 Weibull 分布作为基线分布来估计生存模型和危险模型。结果表明,天气、交通流量、行驶时间和平均速度等四个因素对该公司驾驶员的非事故里程有显著影响,生存函数和危险函数的评估结果对测试数据的不同水平具有稳健性。工作时间对结果有一定影响,但在大多数情况下不会导致显著差异,任务稳定性对结果影响不大。本研究的结果应该对决策者和运输公司进行 CDT 的更好风险评估有用。