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A partial proportional odds model for pedestrian crashes at mid-blocks in Melbourne metropolitan area

conference contribution
posted on 2024-10-31, 20:00 authored by Alireza Toran Pour, Sara MoridpourSara Moridpour, Richard TayRichard Tay, Abbas Rajabifard
Pedestrian crashes account for 11% of all reported traffic crashes in Melbourne metropolitan area between 2004 and 2013. There are very limited studies on pedestrian accidents at mid-blocks. Mid-block crashes account for about 46% of the total pedestrian crashes in Melbourne metropolitan area. Meanwhile, about 50% of all pedestrian fatalities occur at mid-blocks. In this research, Partial Proportional Odds (PPO) model is applied to examine vehicle-pedestrian crash severity at mid-blocks in Melbourne metropolitan area. The PPO model is a logistic regression model that allows the covariates that meet the proportional odds assumption to affect different crash severity levels with the same magnitude; whereas the covariates that do not meet the proportional odds assumption can have different effects on different severity levels. In this research vehicle-pedestrian crashes at mid-blocks are analysed for first time. In addition, some factors such as distance of crashes to public transport stops, average road slope and some social characteristics are considered to develop the model in this research for first time. Results of PPO model show that speed limit, light condition, pedestrian age and gender, and vehicle type are the most significant factors that influence vehicle-pedestrian crash severity at mid-blocks.

History

Start page

1

End page

7

Total pages

7

Outlet

Proceedings of the 5th International Conference on Transportation and Traffic Engineering (ICTTE 2016)

Editors

Monteiro Figueira, Zhihua Guo

Name of conference

ICTTE 2016

Publisher

MATEC Web Conferences

Place published

United Kingdom

Start date

2016-07-06

End date

2016-07-10

Language

English

Copyright

© The Authors, published by EDP Sciences, 2016, Creative Commons Attribution License

Former Identifier

2006068039

Esploro creation date

2020-06-22

Fedora creation date

2017-02-28

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