An Assessment of Safety-Based Driver Behavior Modeling in Microscopic Simulation Utilizing Real-Time Vehicle Trajectories

10/17/2022
by   Awad Abdelhalim, et al.
0

Accurate representation of observed driving behavior is critical for effectively evaluating safety and performance interventions in simulation modeling. In this study, we implement and evaluate a safety-based Optimal Velocity Model (OVM) to provide a high-fidelity replication of safety-critical behavior in microscopic simulation and showcase its implications for safety-focused assessments of traffic control strategies. A comprehensive simulation model is created for the site of study in PTV VISSIM utilizing detailed vehicle trajectory information extracted from real-time video inference, which are also used to calibrate the parameters of the safety-based OVM to replicate the observed driving behavior in the site of study. The calibrated model is then incorporated as an external driver model that overtakes VISSIM's default Wiedemann 74 model during simulated car-following episodes. The results of the preliminary analysis show the significant improvements achieved by using our model in replicating the existing safety conflicts observed at the site of the study. We then utilize this improved representation of the status quo to assess the potential impact of different scenarios of signal control and speed limit enforcement in reducing those existing conflicts by up to 23 considerable improvements that can be achieved by utilizing data-driven car-following behavior modeling, and the workflow presented provides an end-to-end, scalable, automated, and generalizable approach for replicating the existing driving behavior observed at a site of interest in microscopic simulation by utilizing vehicle trajectories efficiently extracted via roadside video inference.

READ FULL TEXT
research
10/10/2018

Probabilistic Safety Analysis using Traffic Microscopic Simulation

Traffic microscopic simulation applications are a common tool in road tr...
research
11/11/2018

Modeling car-following behavior on urban expressways in Shanghai: A naturalistic driving study

Five car-following models were calibrated, validated and cross-compared....
research
11/07/2022

A Driving Risk Surrogate and Its Application in Car-Following Scenario at Expressway

Traffic safety is important in reducing death and building a harmonious ...
research
01/23/2023

AI-Based Framework for Understanding Car Following Behaviors of Drivers in A Naturalistic Driving Environment

The most common type of accident on the road is a rear-end crash. These ...
research
07/19/2023

A Bayesian Programming Approach to Car-following Model Calibration and Validation using Limited Data

Traffic simulation software is used by transportation researchers and en...
research
06/18/2021

Data Enforced: An Exploratory Impact Analysis of Automated Speed Enforcement in the District of Columbia

In 2015, the District of Columbia framed a Vision Zero mission and actio...

Please sign up or login with your details

Forgot password? Click here to reset