Chen Feng, Ma Xiaoxiang, Chen Suren, Yang Lin
Department of Traffic Engineering and Key Laboratory of Road & Traffic Engineering of the Ministry of Education, Tongji University, 4800 Cao'an Road, Shanghai 201804, China.
Department of Civil & Environmental Engineering, Colorado State University, Fort Collins, CO 80523, USA.
Int J Environ Res Public Health. 2016 Oct 26;13(11):1043. doi: 10.3390/ijerph13111043.
Random effect panel data hurdle models are established to research the daily crash frequency on a mountainous section of highway I-70 in Colorado. Road Weather Information System (RWIS) real-time traffic and weather and road surface conditions are merged into the models incorporating road characteristics. The random effect hurdle negative binomial (REHNB) model is developed to study the daily crash frequency along with three other competing models. The proposed model considers the serial correlation of observations, the unbalanced panel-data structure, and dominating zeroes. Based on several statistical tests, the REHNB model is identified as the most appropriate one among four candidate models for a typical mountainous highway. The results show that: (1) the presence of over-dispersion in the short-term crash frequency data is due to both excess zeros and unobserved heterogeneity in the crash data; and (2) the REHNB model is suitable for this type of data. Moreover, time-varying variables including weather conditions, road surface conditions and traffic conditions are found to play importation roles in crash frequency. Besides the methodological advancements, the proposed technology bears great potential for engineering applications to develop short-term crash frequency models by utilizing detailed data from field monitoring data such as RWIS, which is becoming more accessible around the world.
建立随机效应面板数据障碍模型,以研究科罗拉多州70号州际公路山区路段的每日事故发生频率。将道路天气信息系统(RWIS)的实时交通、天气和路面状况纳入包含道路特征的模型中。开发了随机效应障碍负二项式(REHNB)模型,与其他三个竞争模型一起研究每日事故发生频率。所提出的模型考虑了观测值的序列相关性、不平衡面板数据结构以及占主导地位的零值。基于多项统计检验,REHNB模型被确定为典型山区公路四个候选模型中最合适的一个。结果表明:(1)短期事故发生频率数据中存在过度离散现象,这是由于事故数据中存在过多零值和未观测到的异质性;(2)REHNB模型适用于此类数据。此外,发现包括天气状况、路面状况和交通状况在内的时变变量在事故发生频率中起着重要作用。除了方法上的进步,所提出的技术在工程应用方面具有巨大潜力,可通过利用来自现场监测数据(如RWIS)的详细数据来开发短期事故发生频率模型,而RWIS在全球范围内越来越容易获取。