Mitigating Partial Observability in Adaptive Traffic Signal Control with Transformers
Abstract
Efficient traffic signal control is essential for managing urban
transportation, minimizing congestion, and improving safety and sustainability.
Reinforcement Learning (RL) has emerged as a promising approach to enhancing
adaptive traffic signal control (ATSC) systems, allowing controllers to learn
optimal policies through interaction with the environment. However, challenges
arise due to partial observability (PO) in traffic networks, where agents have
limited visibility, hindering effectiveness. This paper presents the
integration of Transformer-based controllers into ATSC systems to address PO
effectively. We propose strategies to enhance training efficiency and
effectiveness, demonstrating improved coordination capabilities in real-world
scenarios. The results showcase the Transformer-based model's ability to
capture significant information from historical observations, leading to better
control policies and improved traffic flow. This study highlights the potential
of leveraging the advanced Transformer architecture to enhance urban
transportation management.