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Main Authors: Lindgren, Natalia, Kleiven, Svein, Li, Xiaogai
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.15951
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author Lindgren, Natalia
Kleiven, Svein
Li, Xiaogai
author_facet Lindgren, Natalia
Kleiven, Svein
Li, Xiaogai
contents Traumatic Brain Injuries (TBIs) are a pressing global public health issue, impacting tens of millions of individuals annually. Vulnerable road users (VRUs), such as pedestrians, are vastly overrepresented in the worldwide TBI statistics. To evaluate the effectiveness of injury prevention measures, researchers often employ Finite Element (FE) models of the human body to virtually simulate the human response to impact in real-world road traffic accident scenarios. However, VRU accidents occur in a highly uncontrolled environment and, in consequence, there is a large amount of variables (covariates), e.g. the vehicle impact speed and VRU body posture, that together dictate the injurious outcome of the collision. At the same time, since FE analysis is a computationally heavy task, researchers often need to apply extensive simplifications to FE models when attempting to predict real-world VRU head trauma. To help researchers make informed decisions when conducting FE accident reconstructions, this literature review aims to create an overarching summary of covariates that have been reported influential in literature. The review provides researchers with an overview of variables proven to have an influence on head injury predictions. The material could potentially be useful as a basis for choosing parameters to include when performing sensitivity analyses of car-to-pedestrian impact simulations.
format Preprint
id arxiv_https___arxiv_org_abs_2504_15951
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Understanding the Role of Covariates in Numerical Reconstructions of Real-World Vehicle-to-Pedestrian Collisions
Lindgren, Natalia
Kleiven, Svein
Li, Xiaogai
Numerical Analysis
Traumatic Brain Injuries (TBIs) are a pressing global public health issue, impacting tens of millions of individuals annually. Vulnerable road users (VRUs), such as pedestrians, are vastly overrepresented in the worldwide TBI statistics. To evaluate the effectiveness of injury prevention measures, researchers often employ Finite Element (FE) models of the human body to virtually simulate the human response to impact in real-world road traffic accident scenarios. However, VRU accidents occur in a highly uncontrolled environment and, in consequence, there is a large amount of variables (covariates), e.g. the vehicle impact speed and VRU body posture, that together dictate the injurious outcome of the collision. At the same time, since FE analysis is a computationally heavy task, researchers often need to apply extensive simplifications to FE models when attempting to predict real-world VRU head trauma. To help researchers make informed decisions when conducting FE accident reconstructions, this literature review aims to create an overarching summary of covariates that have been reported influential in literature. The review provides researchers with an overview of variables proven to have an influence on head injury predictions. The material could potentially be useful as a basis for choosing parameters to include when performing sensitivity analyses of car-to-pedestrian impact simulations.
title Understanding the Role of Covariates in Numerical Reconstructions of Real-World Vehicle-to-Pedestrian Collisions
topic Numerical Analysis
url https://arxiv.org/abs/2504.15951