FuzzyLight: A Robust Two-Stage Fuzzy Approach for Traffic Signal Control Works in Real Cities
Journal:
arXiv
Published Date:
Jan 27, 2025
Abstract
Effective traffic signal control (TSC) is crucial in mitigating urban
congestion and reducing emissions. Recently, reinforcement learning (RL) has
been the research trend for TSC. However, existing RL algorithms face several
real-world challenges that hinder their practical deployment in TSC: (1) Sensor
accuracy deteriorates with increased sensor detection range, and data
transmission is prone to noise, potentially resulting in unsafe TSC decisions.
(2) During the training of online RL, interactions with the environment could
be unstable, potentially leading to inappropriate traffic signal phase (TSP)
selection and traffic congestion. (3) Most current TSC algorithms focus only on
TSP decisions, overlooking the critical aspect of phase duration, affecting
safety and efficiency. To overcome these challenges, we propose a robust
two-stage fuzzy approach called FuzzyLight, which integrates compressed sensing
and RL for TSC deployment. FuzzyLight offers several key contributions: (1) It
employs fuzzy logic and compressed sensing to address sensor noise and enhances
the efficiency of TSP decisions. (2) It maintains stable performance during
training and combines fuzzy logic with RL to generate precise phases. (3) It
works in real cities across 22 intersections and demonstrates superior
performance in both real-world and simulated environments. Experimental results
indicate that FuzzyLight enhances traffic efficiency by 48% compared to
expert-designed timings in the real world. Furthermore, it achieves
state-of-the-art (SOTA) performance in simulated environments using six
real-world datasets with transmission noise. The code and deployment video are
available at the URL1