Abstract

This paper evaluates different factors and parameters contributing to likelihood of bicycle crash injury severity levels. Multinomial Logit (MNL) model was used to analyze impact of different roadway features, traffic characteristics and environmental conditions associated with bicycle crash injury severities. The multinomial model was used due to its flexibility in quantifying the effect of the independent variables for each injury severity categories. Model results showed that, severity of bicycle crashes increases with increase in vehicles per lane, number of lanes, bicyclist alcohol or drug use, routes with 35-45 mph posted speed limits, riding along curved or sloped road sections, when bicyclists approach or cross a signalized intersection, and at driveways. In addition, routes with a high percentage of trucks, roadway sections with curb and gutter, cloudy or foggy weather and obstructed vision were found to have high probability of severe injury. Segments with wider lanes, wide median and wide shoulders were found to have low likelihood of severe bicycle injury severities. Limited lighting locations was found to be associated with incapacitating injury and fatal crashes, indicating that insufficient visibility can potentially lead to severe crashes. Other findings are also presented in the paper.

Highlights

  • The average annual number of bicycle fatal crashes from 1998 to 2008 in United States was 721

  • Limited lighting locations was found to be associated with incapacitating injury and fatal crashes, indicating that insufficient visibility can potentially lead to severe crashes

  • In view of the methodologies used in previous studies and their recommendations for further research, this paper examines the use of the multinomial logit (MNL) model in analyzing bicycle crash severity

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Summary

Introduction

The average annual number of bicycle fatal crashes from 1998 to 2008 in United States was 721. This paper evaluates factors influencing bicycle crash injury severities. Jeremy and Asad [3] examined the effect of roadway and environmental factors on injury severity in bicycle-motor vehicle collisions. The model parameters and the marginal effects of significant variables were used to examine the influence of roadway and crash characteristics on injury severity of cyclists. Quddus et al [6] used ordered probit model to study how various factors, including specific characteristics of the roadway and the riders, can lead to different levels of injury and damage severity. In view of the methodologies used in previous studies and their recommendations for further research, this paper examines the use of the multinomial logit (MNL) model in analyzing bicycle crash severity. Differentiating the contributing factors may help establish safer bicycle mode of transportation

Methods
Study Data
Results
Curved Sections
Posted Speed Limit
Lighting
Traffic Volume per Lane and Percentage of Trucks
Location
Conclusion
Full Text
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