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

TL;DR
This paper applies Bayesian methods to calibrate and validate a car-following model for traffic simulation, especially in work zones, using limited data to improve accuracy and reliability.
Contribution
It introduces a Bayesian calibration framework for car-following models, compares it with genetic algorithms, and explores hierarchical modeling to enhance traffic simulation accuracy.
Findings
Bayesian inference assesses data sufficiency.
Bayesian calibration outperforms genetic algorithms.
Hierarchical modeling improves model flexibility.
Abstract
Traffic simulation software is used by transportation researchers and engineers to design and evaluate changes to roadways. These simulators are driven by models of microscopic driver behavior from which macroscopic measures like flow and congestion can be derived. Many models are designed for a subset of possible traffic scenarios and roadway configurations, while others have no explicit constraints on their application. Work zones (WZs) are one scenario for which no model to date has reproduced realistic driving behavior. This makes it difficult to optimize for safety and other metrics when designing a WZ. The Federal Highway Administration commissioned the USDOT Volpe Center to develop a car-following (CF) model for use in microscopic simulators that can capture and reproduce driver behavior accurately within and outside of WZs. Volpe also performed a naturalistic driving study to…
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Taxonomy
TopicsTraffic control and management · Transportation Planning and Optimization · Simulation Techniques and Applications
