Markov Regime-Switching Intelligent Driver Model for Interpretable Car-Following Behavior
Chengyuan Zhang, Cathy Wu, Lijun Sun

TL;DR
This paper introduces a regime-switching extension to the Intelligent Driver Model (IDM) using a factorial hidden Markov model, enabling more accurate and interpretable modeling of multi-modal human driving behaviors under different traffic conditions.
Contribution
It presents a novel FHMM-IDM framework that captures multiple driving regimes and external traffic states, improving interpretability and fidelity over classical IDM models.
Findings
Successfully uncovers interpretable driving regimes from real data
Disentangles driver actions from traffic context effectively
Enhances traffic simulation accuracy and safety analysis
Abstract
Accurate and interpretable car-following models are essential for traffic simulation and autonomous vehicle development. However, classical models like the Intelligent Driver Model (IDM) are fundamentally limited by their parsimonious and single-regime structure. They fail to capture the multi-modal nature of human driving, where a single driving state (e.g., speed, relative speed, and gap) can elicit many different driver actions. This forces the model to average across distinct behaviors, reducing its fidelity and making its parameters difficult to interpret. To overcome this, we introduce a regime-switching framework that allows driving behavior to be governed by different IDM parameter sets, each corresponding to an interpretable behavioral mode. This design enables the model to dynamically switch between interpretable behavioral modes, rather than averaging across diverse driving…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety
