Weng Jinxian, Zheng Yang, Yan Xuedong, Meng Qiang
MOE Key Laboratory for Urban Transportation Complex Systems Theory and Technology, Beijing Jiaotong University, Beijing 100044, China.
MOE Key Laboratory for Urban Transportation Complex Systems Theory and Technology, Beijing Jiaotong University, Beijing 100044, China.
Accid Anal Prev. 2014 Dec;73:12-9. doi: 10.1016/j.aap.2014.07.029. Epub 2014 Aug 27.
This study aims to develop a subway operational incident delay model using the parametric accelerated time failure (AFT) approach. Six parametric AFT models including the log-logistic, lognormal and Weibull models, with fixed and random parameters are built based on the Hong Kong subway operation incident data from 2005 to 2012, respectively. In addition, the Weibull model with gamma heterogeneity is also considered to compare the model performance. The goodness-of-fit test results show that the log-logistic AFT model with random parameters is most suitable for estimating the subway incident delay. First, the results show that a longer subway operation incident delay is highly correlated with the following factors: power cable failure, signal cable failure, turnout communication disruption and crashes involving a casualty. Vehicle failure makes the least impact on the increment of subway operation incident delay. According to these results, several possible measures, such as the use of short-distance and wireless communication technology (e.g., Wifi and Zigbee) are suggested to shorten the delay caused by subway operation incidents. Finally, the temporal transferability test results show that the developed log-logistic AFT model with random parameters is stable over time.
本研究旨在使用参数加速失效时间(AFT)方法建立一个地铁运营事故延误模型。基于2005年至2012年香港地铁运营事故数据,分别建立了六个参数AFT模型,包括对数逻辑模型、对数正态模型和威布尔模型,参数有固定的和随机的。此外,还考虑了具有伽马异质性的威布尔模型以比较模型性能。拟合优度检验结果表明,具有随机参数的对数逻辑AFT模型最适合估计地铁事故延误。首先,结果表明,较长的地铁运营事故延误与以下因素高度相关:电力电缆故障、信号电缆故障、道岔通信中断以及涉及人员伤亡的撞车事故。车辆故障对地铁运营事故延误增量的影响最小。根据这些结果,建议采取几种可能的措施,例如使用短距离和无线通信技术(如Wifi和Zigbee)来缩短地铁运营事故造成的延误。最后,时间可转移性测试结果表明,所建立的具有随机参数的对数逻辑AFT模型随时间是稳定的。