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Intelligent cyclist modelling of personal attribute and road environment conditions to predict the riskiest road infrastructure type

Malik, Faheem Ahmed; Dala, Laurent; Busawon, Krishna

Authors

Laurent Dala

Krishna Busawon



Abstract

Infrastructure selection, design and planning play a pivotal role in creating a safe travel environment for road users, especially the vulnerable road user. In this work, it is aimed to develop a predictive intelligent safety model for the riskiest cyclist infrastructure, based upon the prevalent environment, traffic flow conditions, and specific users using the infrastructure; and also develop an understanding of how these factors affect safety alone and in combination with each other. The study area of Northumbria in the northeast of England is selected for investigation. A hybrid methodology is proposed: a) Crash data collection, b) Predictive model (deep learning), and c) Variable interaction model (deep learning variable importance and principal component analysis). A complex deep learning model with a neural network classifier, and backpropagation error function is used to model this complex and nonlinear relationship. An accurate model is developed with an average accuracy of 86%. Through variable interaction, it is found that critical variables affecting safety are the riders age, gender, environmental conditions, sudden change in the road hierarchy, and the traffic flow regime. It is found that the adverse environmental conditions and different traffic flow regimes complicate the cyclist interactions, having varied safety implications for different infrastructure types. The traffic flow regime poses a varying level of risk to the cyclist to which riders belonging to different genders react differently. The traffic flow conditions and the infrastructure variables alone are critical variables affecting the safety of cyclists. The study results help develop a better understanding of risk variation for different infrastructure types and predict the riskiest infrastructure type. It will contribute towards better planning of the cyclist infrastructure and thus contribute towards the development of a sustainable transportation system

Citation

Malik, F. A., Dala, L., & Busawon, K. (2021, July). Intelligent cyclist modelling of personal attribute and road environment conditions to predict the riskiest road infrastructure type. Paper presented at The 19th Annual Transport Practitioners' Meeting, Online

Presentation Conference Type Conference Paper (unpublished)
Conference Name The 19th Annual Transport Practitioners' Meeting
Start Date Jul 7, 2021
End Date Jul 8, 2021
Acceptance Date May 11, 2021
Online Publication Date Aug 17, 2021
Publication Date Jul 11, 2021
Deposit Date Apr 28, 2025
Peer Reviewed Peer Reviewed
Keywords Cycling safety, infrastructure modelling, road type, deep learning
Public URL http://researchrepository.napier.ac.uk/Output/4247605
External URL https://ciltinternational.org/events/19th-annual-transport-practitioners-meeting/
This output contributes to the following UN Sustainable Development Goals:

SDG 11 - Sustainable Cities and Communities

Make cities and human settlements inclusive, safe, resilient and sustainable

SDG 13 - Climate Action

Take urgent action to combat climate change and its impacts






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