URB - Urban Routing Benchmark for RL-equipped Connected Autonomous Vehicles

arXiv — cs.LGWednesday, October 29, 2025 at 4:00:00 AM
The introduction of the Urban Routing Benchmark (URB) aims to enhance the efficiency of connected autonomous vehicles (CAVs) in urban environments. By leveraging reinforcement learning, this initiative seeks to establish standardized benchmarks that can optimize routing decisions, ultimately reducing congestion in cities. This is significant as it not only improves traffic flow but also paves the way for smarter, data-driven transportation systems that can adapt to real-time conditions.
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