Macroscopic Characteristics of Mixed Traffic Flow with Deep Reinforcement Learning Based Automated and Human-Driven Vehicles
Pankaj Kumar, Pranamesh Chakraborty, Subrahmanya Swamy Peruru

TL;DR
This paper investigates how deep reinforcement learning-based autonomous vehicles influence macroscopic traffic flow and fuel efficiency in mixed traffic scenarios, demonstrating capacity improvements and fuel savings.
Contribution
It introduces a DRL-based control framework for AVs in mixed traffic and analyzes its impact on traffic flow and fuel efficiency at a macroscopic level.
Findings
Traffic capacity increases by approximately 7.52% with more RL vehicles.
Fuel efficiency improves by about 28.98% at higher speeds.
Traffic performance is sensitive to driver heterogeneity and vehicle control share.
Abstract
Automated Vehicle (AV) control in mixed traffic, where AVs coexist with human-driven vehicles, poses significant challenges in balancing safety, efficiency, comfort, fuel efficiency, and compliance with traffic rules while capturing heterogeneous driver behavior. Traditional car-following models, such as the Intelligent Driver Model (IDM), often struggle to generalize across diverse traffic scenarios and typically do not account for fuel efficiency, motivating the use of learning-based approaches. Although Deep Reinforcement Learning (DRL) has shown strong microscopic performance in car-following conditions, its macroscopic traffic flow characteristics remain underexplored. This study focuses on analyzing the macroscopic traffic flow characteristics and fuel efficiency of DRL-based models in mixed traffic. A Twin Delayed Deep Deterministic Policy Gradient (TD3) algorithm is implemented…
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Taxonomy
TopicsTraffic control and management · Vehicle emissions and performance · Autonomous Vehicle Technology and Safety
