Back to Search
Start Over
Using hierarchical Bayesian binary probit models to analyze crash injury severity on high speed facilities with real-time traffic data
- Source :
- Accident Analysis & Prevention. 62:161-167
- Publication Year :
- 2014
- Publisher :
- Elsevier BV, 2014.
-
Abstract
- Severe crashes are causing serious social and economic loss, and because of this, reducing crash injury severity has become one of the key objectives of the high speed facilities' (freeway and expressway) management. Traditional crash injury severity analysis utilized data mainly from crash reports concerning the crash occurrence information, drivers' characteristics and roadway geometric related variables. In this study, real-time traffic and weather data were introduced to analyze the crash injury severity. The space mean speeds captured by the Automatic Vehicle Identification (AVI) system on the two roadways were used as explanatory variables in this study; and data from a mountainous freeway (I-70 in Colorado) and an urban expressway (State Road 408 in Orlando) have been used to identify the analysis result's consistence. Binary probit (BP) models were estimated to classify the non-severe (property damage only) crashes and severe (injury and fatality) crashes. Firstly, Bayesian BP models' results were compared to the results from Maximum Likelihood Estimation BP models and it was concluded that Bayesian inference was superior with more significant variables. Then different levels of hierarchical Bayesian BP models were developed with random effects accounting for the unobserved heterogeneity at segment level and crash individual level, respectively. Modeling results from both studied locations demonstrate that large variations of speed prior to the crash occurrence would increase the likelihood of severe crash occurrence. Moreover, with considering unobserved heterogeneity in the Bayesian BP models, the model goodness-of-fit has improved substantially. Finally, possible future applications of the model results and the hierarchical Bayesian probit models were discussed.
- Subjects :
- Automobile Driving
Engineering
Colorado
Bayesian probability
Poison control
Human Factors and Ergonomics
Probit
Crash
Bayesian inference
Motion
Risk Factors
Probit model
Statistics
Humans
Safety, Risk, Reliability and Quality
Weather
Simulation
Models, Statistical
Trauma Severity Indices
business.industry
Accidents, Traffic
Public Health, Environmental and Occupational Health
Bayes Theorem
Random effects model
Florida
Environment Design
Speed prior
business
Subjects
Details
- ISSN :
- 00014575
- Volume :
- 62
- Database :
- OpenAIRE
- Journal :
- Accident Analysis & Prevention
- Accession number :
- edsair.doi.dedup.....75d0b47d5d827c263f8e975273534c3f