Artificial Intelligence for Modeling and Simulation of Mixed Automated and Human Traffic
Saeed Rahmani, Shiva Rasouli, Daphne Cornelisse, Eugene Vinitsky, Bart van Arem, Simeon C. Calvert

TL;DR
This paper surveys AI methods for simulating mixed traffic with autonomous and human-driven vehicles, highlighting gaps in current tools and proposing a structured taxonomy for future research.
Contribution
It provides a comprehensive taxonomy of AI techniques for mixed traffic simulation, bridging traffic engineering and computer science perspectives.
Findings
Existing simulation tools lack realistic behavior modeling.
AI methods can improve the accuracy of mixed traffic simulations.
The survey identifies key gaps and future directions in AI-driven traffic modeling.
Abstract
Autonomous vehicles (AVs) are now operating on public roads, which makes their testing and validation more critical than ever. Simulation offers a safe and controlled environment for evaluating AV performance in varied conditions. However, existing simulation tools mainly focus on graphical realism and rely on simple rule-based models and therefore fail to accurately represent the complexity of driving behaviors and interactions. Artificial intelligence (AI) has shown strong potential to address these limitations; however, despite the rapid progress across AI methodologies, a comprehensive survey of their application to mixed autonomy traffic simulation remains lacking. Existing surveys either focus on simulation tools without examining the AI methods behind them, or cover ego-centric decision-making without addressing the broader challenge of modeling surrounding traffic. Moreover,…
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