Identification of dynamic traffic crash risk for cross-area freeways based on statistical and machine learning methods

Y Yang, K He, Y Wang, Z Yuan, Y Yin, M Guo - Physica A: Statistical …, 2022 - Elsevier
Freeway traffic safety should be given great attention due to the frequent and serious
consequences that arise from freeway traffic crashes. With the possibility of obtaining high …

Road surface friction prediction using long short-term memory neural network based on historical data

Z Pu, C Liu, X Shi, Z Cui, Y Wang - Journal of Intelligent …, 2021 - Taylor & Francis
Road surface friction significantly impacts traffic safety and mobility. A precise road surface
friction prediction model can help to alleviate the influence of inclement road conditions on …

Predicting intersection crash frequency using connected vehicle data: A framework for geographical random forest

Y Gu, D Liu, R Arvin, AJ Khattak, LD Han - Accident Analysis & Prevention, 2023 - Elsevier
Accurate crash frequency prediction is critical for proactive safety management. The
emerging connected vehicles technology provides us with a wealth of vehicular motion data …

Modeling of freeway real-time traffic crash risk based on dynamic traffic flow considering temporal effect difference

Y Yang, Y Yin, Y Wang, R Meng… - Journal of transportation …, 2023 - ascelibrary.org
With the development of traffic detection facilities technology, it is currently possible to obtain
high-resolution traffic flow data. Due to the particular driving characteristics of vehicles on …

Machine learning approaches for biomolecular, biophysical, and biomaterials research

CA Rickert, O Lieleg - Biophysics Reviews, 2022 - pubs.aip.org
A fluent conversation with a virtual assistant, person-tailored news feeds, and deep-fake
images created within seconds—all those things that have been unthinkable for a long time …

Inferring heterogeneous treatment effects of crashes on highway traffic: A doubly robust causal machine learning approach

S Li, Z Pu, Z Cui, S Lee, X Guo, D Ngoduy - Transportation research part C …, 2024 - Elsevier
Accurate estimating causal effects of crashes on highway traffic is crucial for mitigating the
negative impacts of crashes. Previous studies have built up a series of methods via …

On the interpretability of machine learning methods in crash frequency modeling and crash modification factor development

X Wen, Y **e, L Jiang, Y Li, T Ge - Accident Analysis & Prevention, 2022 - Elsevier
Abstract Machine learning (ML) model interpretability has attracted much attention recently
given the promising performance of ML methods in crash frequency studies. Extracting …

[HTML][HTML] Machine learning for predictions of road traffic accidents and spatial network analysis for safe routing on accident and congestion-prone road networks

Y Berhanu, D Schröder, BT Wodajo, E Alemayehu - Results in Engineering, 2024 - Elsevier
Road traffic accidents (RTAs) and the resulting traffic congestion are global concerns mainly
in metropolitan environments. The need for road safety is directly correlated with the rapidly …

Geographically weighted random forests for macro-level crash frequency prediction

D Wu, Y Zhang, Q **ang - Accident Analysis & Prevention, 2024 - Elsevier
Abstract Machine learning models such as random forests (RF) have been widely applied in
the field of road safety. RF is a prominent algorithm, overcoming the limitations of using a …