LIDSA: Cognitive Arbitration for Signal-Free Autonomous Intersection Management
Abderrahmane Lakas, Mohamed Amine Ferrag, Merouane Debbah

TL;DR
LIDSA leverages large language models for real-time, signal-free autonomous intersection management by reasoning over vehicle intents, significantly reducing delays, waiting times, and fuel consumption compared to traditional methods.
Contribution
This paper introduces LIDSA, a novel LLM-based framework for autonomous intersection control that outperforms existing signal-based and reservation methods in efficiency and intent satisfaction.
Findings
LIDSA reduces mean control delay by up to 89.1%.
LIDSA lowers fuel consumption by up to 48.8%.
LIDSA achieves 86.2% intent satisfaction.
Abstract
Large language models (LLMs) show strong potential for Intelligent Transportation Systems (ITS), particularly in tasks requiring situational reasoning and multi-agent coordination. These capabilities make them well suited for cooperative driving, where rule-based approaches struggle in complex and dynamic traffic environments. Intersection management remains especially challenging due to conflicting right-of-way demands, heterogeneous vehicle priorities, and vehicle-specific kinematic constraints that must be resolved in real time. However, existing approaches typically use LLMs as auxiliary components on top of signal-based systems rather than as primary decision-makers. Signal controllers remain vehicle-agnostic, reservation-based methods lack intent awareness, and recent LLM-based systems still depend on signal infrastructure. In addition, LLM inference latency limits their use in…
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