Crash severity analysis of vulnerable road users using machine learning

, , , , , & (2021) Crash severity analysis of vulnerable road users using machine learning. PLoS One, 16(8), Article number: e0255828.

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Description

Road crash fatality is a universal problem of the transportation system. A massive death toll caused annually due to road crash incidents, and among them, vulnerable road users (VRU) are endangered with high crash severity. This paper focuses on employing machine learning-based classification approaches for modelling injury severity of vulnerable road users - pedestrian, bicyclist, and motorcyclist. Specifically, this study aims to analyse critical features associated with different VRU groups – for pedestrian, bicyclist, motorcyclist and all VRU groups together. The critical factor of crash severity outcomes for these VRU groups is estimated in identifying the similarities and differences across different important features associated with different VRU groups. The crash data for the study is sourced from the state of Queensland in Australia for the years 2013 through 2019. The supervised machine learning algorithms considered for the empirical analysis includes the K-Nearest Neighbour (KNN), Support Vector Machine (SVM) and Random Forest (RF). In these models, 17 distinct road crash parameters are considered as input features to train models, which originate from road user characteristics, weather and environment, vehicle and driver condition, period, road characteristics and regions, traffic, and speed jurisdiction. These classification models are separately trained and tested for individual and unified VRU to assess crash severity levels. Afterwards, model performances are compared with each other to justify the best classifier where Random Forest classification models for all VRU modes are found to be comparatively robust in test accuracy: (motorcyclist: 72.30%, bicyclist: 64.45%, pedestrian: 67.23%, unified VRU: 68.57%). Based on the Random Forest model, the road crash features are ranked and compared according to their impact on crash severity classification. Furthermore, a model-based partial dependency of each road crash parameters on the severity levels is plotted and compared for each individual and unified VRU. This clarifies the tendency of road crash parameters to vary with different VRU crash severity. Based on the outcome of the comparative analysis, motorcyclists are found to be more likely exposed to higher crash severity, followed by pedestrians and bicyclists.

Impact and interest:

34 citations in Scopus
17 citations in Web of Science®
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ID Code: 212458
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
ORCID iD:
Komol, Md Mostafizur Rahmanorcid.org/0000-0001-9746-8109
Hasan, Md Mahmudulorcid.org/0000-0003-2747-4348
Elhenawy, Mohammedorcid.org/0000-0003-2634-4576
Yasmin, Shamsunnaharorcid.org/0000-0001-7856-5376
Masoud, Mahmoudorcid.org/0000-0002-0130-4327
Measurements or Duration: 22 pages
Keywords: crash severity, vulnerable road users, pedestrian, bicyclist, motorcyclist, machine learning
DOI: 10.1371/journal.pone.0255828
ISSN: 1932-6203
Pure ID: 89693884
Divisions: Current > Research Centres > Centre for Behavioural Economics, Society & Technology
Current > Research Centres > Centre for Future Mobility/CARRSQ
Current > QUT Faculties and Divisions > Faculty of Business & Law
Current > QUT Faculties and Divisions > Faculty of Health
Current > Schools > School of Psychology & Counselling
Copyright Owner: 2021 The Author(s)
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Deposited On: 10 Aug 2021 05:24
Last Modified: 15 Jul 2024 04:51