Real-Time Crash Risk Analysis of Urban Arterials Incorporating Bluetooth, Weather, and Adaptive Signal Control Data

05/20/2018
by   Jinghui Yuan, et al.
0

Real-time safety analysis has become a hot research topic as it can reveal the relationship between real-time traffic characteristics and crash occurrence more accurately, and these results could be applied to improve active traffic management systems and enhance safety performance. Most of the previous studies have been applied to freeways and seldom to arterials. Therefore, this study attempts to examine the relationship between crash occurrence and real-time traffic and weather characteristics based on four urban arterials in Central Florida. Considering the substantial difference between the interrupted traffic flow on urban arterials and the free flow on freeways, the adaptive signal phasing was also introduced in this study. Bayesian conditional logistic models were developed by incorporating the Bluetooth, adaptive signal control, and weather data, which were extracted for a period of 20 minutes (four 5-minute interval) before the time of crash occurrence. Model comparison results indicate that the model based on 5-10 minute interval dataset is the most appropriate model. It reveals that the average speed, upstream volume, and rainy weather indicator were found to have significant effects on crash occurrence. Furthermore, both Bayesian logistic and Bayesian random effects logistic models were developed to compare with the Bayesian conditional logistic model, and the Bayesian conditional logistic model was found to be much better than the other two models. These results are important in real-time safety applications in the context of Integrated Active Traffic Management.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/20/2018

Utilizing Bluetooth and Adaptive Signal Control Data for Urban Arterials Safety Analysis

Real-time safety analysis has become a hot research topic as it can more...
research
05/21/2018

Approach-Level Real-Time Crash Risk Analysis for Signalized Intersections

This study attempts to investigate the relationship between crash occurr...
research
10/26/2017

A Deep Learning Approach to the Prediction of Short-term Traffic Accident Risk

With the rapid development of urbanization, the boom of vehicle numbers ...
research
10/24/2022

Exploring the impact of weather on Metro demand forecasting using machine learning method

Urban rail transit provides significant comprehensive benefits such as l...
research
05/21/2020

Learning to Recommend Signal Plans under Incidents with Real-Time Traffic Prediction

The main question to address in this paper is to recommend optimal signa...
research
09/01/2020

A Comparative Study of Parametric Regression Models to Detect Breakpoint in Traffic Fundamental Diagram

A speed threshold is a crucial parameter in breakdown and capacity distr...
research
05/22/2018

Modeling the Safety Effect of Access and Signal Density on Suburban Arterials: Using Macro Level Analysis Method

With rapidly increasing of the land development density along suburban a...

Please sign up or login with your details

Forgot password? Click here to reset