Saved in:
Bibliographic Details
Main Authors: Schlamp, Anna-Lena, Huber, Werner, Schmidtner, Stefanie
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.00625
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866929425643208704
author Schlamp, Anna-Lena
Huber, Werner
Schmidtner, Stefanie
author_facet Schlamp, Anna-Lena
Huber, Werner
Schmidtner, Stefanie
contents We address eco-driving at roundabouts in mixed traffic to enhance traffic flow and traffic efficiency in urban areas. The aim is to proactively optimize speed of automated or non-automated connected vehicles (CVs), ensuring both an efficient approach and smooth entry into roundabouts. We incorporate the traffic situation ahead, i.e. preceding vehicles and waiting queues. Further, we develop two approaches: a rule-based and an Reinforcement Learning (RL) based eco-driving system, with both using the approach link and information from conflicting CVs for speed optimization. A fair comparison of rule-based and RL-based approaches is performed to explore RL as a viable alternative to classical optimization. Results show that both approaches outperform the baseline. Improvements significantly increase with growing traffic volumes, leading to best results on average being obtained at high volumes. Near capacity, performance deteriorates, indicating limited applicability at capacity limits. Examining different CV penetration rates, a decline in performance is observed, but with substantial results still being achieved at lower CV rates. RL agents can discover effective policies for speed optimization in dynamic roundabout settings, but they do not offer a substantial advantage over classical approaches, especially at higher traffic volumes or lower CV penetration rates.
format Preprint
id arxiv_https___arxiv_org_abs_2405_00625
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Queue-based Eco-Driving at Roundabouts with Reinforcement Learning
Schlamp, Anna-Lena
Huber, Werner
Schmidtner, Stefanie
Machine Learning
We address eco-driving at roundabouts in mixed traffic to enhance traffic flow and traffic efficiency in urban areas. The aim is to proactively optimize speed of automated or non-automated connected vehicles (CVs), ensuring both an efficient approach and smooth entry into roundabouts. We incorporate the traffic situation ahead, i.e. preceding vehicles and waiting queues. Further, we develop two approaches: a rule-based and an Reinforcement Learning (RL) based eco-driving system, with both using the approach link and information from conflicting CVs for speed optimization. A fair comparison of rule-based and RL-based approaches is performed to explore RL as a viable alternative to classical optimization. Results show that both approaches outperform the baseline. Improvements significantly increase with growing traffic volumes, leading to best results on average being obtained at high volumes. Near capacity, performance deteriorates, indicating limited applicability at capacity limits. Examining different CV penetration rates, a decline in performance is observed, but with substantial results still being achieved at lower CV rates. RL agents can discover effective policies for speed optimization in dynamic roundabout settings, but they do not offer a substantial advantage over classical approaches, especially at higher traffic volumes or lower CV penetration rates.
title Queue-based Eco-Driving at Roundabouts with Reinforcement Learning
topic Machine Learning
url https://arxiv.org/abs/2405.00625