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Main Authors: Bhardwaj, Ankit, Asim, Rohail, Chauhan, Sachin, Zaki, Yasir, Subramanian, Lakshminarayanan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.11973
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author Bhardwaj, Ankit
Asim, Rohail
Chauhan, Sachin
Zaki, Yasir
Subramanian, Lakshminarayanan
author_facet Bhardwaj, Ankit
Asim, Rohail
Chauhan, Sachin
Zaki, Yasir
Subramanian, Lakshminarayanan
contents Free-flow road networks, such as suburban highways, are increasingly experiencing traffic congestion due to growing commuter inflow and limited infrastructure. Traditional control mechanisms, such as traffic signals or local heuristics, are ineffective or infeasible in these high-speed, signal-free environments. We introduce self-regulating cars, a reinforcement learning-based traffic control protocol that dynamically modulates vehicle speeds to optimize throughput and prevent congestion, without requiring new physical infrastructure. Our approach integrates classical traffic flow theory, gap acceptance models, and microscopic simulation into a physics-informed RL framework. By abstracting roads into super-segments, the agent captures emergent flow dynamics and learns robust speed modulation policies from instantaneous traffic observations. Evaluated in the high-fidelity PTV Vissim simulator on a real-world highway network, our method improves total throughput by 5%, reduces average delay by 13%, and decreases total stops by 3% compared to the no-control setting. It also achieves smoother, congestion-resistant flow while generalizing across varied traffic patterns, demonstrating its potential for scalable, ML-driven traffic management.
format Preprint
id arxiv_https___arxiv_org_abs_2506_11973
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Self-Regulating Cars: Automating Traffic Control in Free Flow Road Networks
Bhardwaj, Ankit
Asim, Rohail
Chauhan, Sachin
Zaki, Yasir
Subramanian, Lakshminarayanan
Machine Learning
Free-flow road networks, such as suburban highways, are increasingly experiencing traffic congestion due to growing commuter inflow and limited infrastructure. Traditional control mechanisms, such as traffic signals or local heuristics, are ineffective or infeasible in these high-speed, signal-free environments. We introduce self-regulating cars, a reinforcement learning-based traffic control protocol that dynamically modulates vehicle speeds to optimize throughput and prevent congestion, without requiring new physical infrastructure. Our approach integrates classical traffic flow theory, gap acceptance models, and microscopic simulation into a physics-informed RL framework. By abstracting roads into super-segments, the agent captures emergent flow dynamics and learns robust speed modulation policies from instantaneous traffic observations. Evaluated in the high-fidelity PTV Vissim simulator on a real-world highway network, our method improves total throughput by 5%, reduces average delay by 13%, and decreases total stops by 3% compared to the no-control setting. It also achieves smoother, congestion-resistant flow while generalizing across varied traffic patterns, demonstrating its potential for scalable, ML-driven traffic management.
title Self-Regulating Cars: Automating Traffic Control in Free Flow Road Networks
topic Machine Learning
url https://arxiv.org/abs/2506.11973