EcoLight: DRL in Traffic Signal Control
In this post, we are going to present “EcoLight: Reward Shaping in Deep Reinforcement Learning for Environment Friendly Traffic Signal Control”. The first results presented in the Neurips workshop on Climate change. The final paper accepted in IROS 2023.
Nowadays, transportation networks face the challenge of sub-optimal control policies that can have adverse effects on human health, the environment, and contribute to traffic congestion. Increased levels of air pollution and extended commute times caused by traffic bottlenecks make intersection traffic signal controllers a crucial component of modern transportation infrastructure. Despite several adaptive traffic signal controllers in literature, limited research has been conducted on their comparative performance. Furthermore, despite carbon dioxide (CO2) emissions’ significance as a global issue, the literature has paid limited attention to this area. In this report, we propose EcoLight, a reward shaping scheme for reinforcement learning algorithms that not only reduces CO2 emissions but also achieves competitive results in metrics such as travel time. We compare the performance of tabular Q-Learning, DQN, SARSA, and A2C algorithms using metrics such as travel time, CO2 emissions, waiting time, and stopped time. Our evaluation considers multiple scenarios that encompass a range of road users (trucks, buses, cars) with varying pollution levels.
How did you find the suitable form for reward fucntion.
We compare different reward functions (queue length, waiting time, and pressure) and applied a weighted version to target direct CO2 deduction.
Amazing work. Good job!
Great work. I am working on passenger flow prediction and these concepts could also be potentially applied there as currently the field is mostly using the concepts of deep learning to increase efficiency in various transports. I would love to work with you to explore the field of RL in congestion control further!
Hi Kalp,
Happy to hear your interest in our project. Our team will contact you directly to follow up with you.