Title of article :
Using Generalized Linear Mixed Models to Predict the Number of RoadwayAccidents: A Case Study in Hamilton County, Tennessee
Author/Authors :
Laflamme, Eric M. Department of Mathematics - Plymouth State University, Plymouth, England , Way, Peter College of Engineering and Computer Science - University of Tennessee at Chattanooga, Chattanooga, USA , Roland, Jeremiah College of Engineering and Computer Science - University of Tennessee at Chattanooga, Chattanooga, USA , Sartipi, Mina College of Engineering and Computer Science - University of Tennessee at Chattanooga, Chattanooga, USA
Abstract :
Introduction:A method for identifying significant predictors of roadway accident counts has been presented. This process is applied to real-world accident datacollected from roadways in Hamilton County, TN.Methods:In preprocessing, an aggregation procedure based on segmenting roadways into fixed lengths has been introduced, and then accident counts withineach segment have been observed according to predefined weather conditions. Based on the physical roadway characteristics associated with eachindividual accident record, a collection of roadway features is assigned to each segment. A mixed-effects Negative Binomial regression form isassumed to approximate the relationship between accident counts and several explanatory variables including roadway characteristics, weatherconditions, and several interactions between them. Standard diagnostics and a validation procedure show that our model form is properly specifiedand suitably fits the data.Results:Interpreting interaction terms leads to the follow findings: 1) rural roads with cloudy conditions are associated with relative increases in accidentfrequency; 2) lower/moderate AADT and rainy weather are associated with relative decreases in accident frequency, while high AADT and rainare associated with relative increases in accident frequency; 3) higher AADT and wider pavements are associated with relative increases inaccident frequency; and 4) higher speed limits in residential areas are associated with relative increases in accident frequency.Conclusion:Results illustrate the complicated relationship between accident frequency and both roadway features and weather. Therefore, it is not sufficient toobserve the effects of weather and roadway features independently as these variables interact with one another
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Accident frequency model , Generalized linear mixed model , Negative binomial regression , Roadway features , Weather , Railways
Journal title :
Open Transportation Journal