Real-Time Bottleneck Identification and Graded Variable Speed Limit Control Framework for Mixed Traffic Flow on Highways Based on Deep Reinforcement LearningSource: Journal of Transportation Engineering, Part A: Systems:;2025:;Volume ( 151 ):;issue: 005::page 04025017-1Author:Yunyang Shi
,
Chengqi Liu
,
Qiang Sun
,
Chengjie Liu
,
Hongzhe Liu
,
Ziyuan Gu
,
Shaoweihua Liu
,
Shi Feng
,
Runsheng Wang
DOI: 10.1061/JTEPBS.TEENG-8875Publisher: American Society of Civil Engineers
Abstract: Effective management is essential for maintaining the smooth operation of highways. The graded variable speed limit (GVSL) method enhances traditional speed limit models by dividing the highway into multiple segments and applying different speed limits to each segment differently. However, there are two main issues: human drivers often choose not to comply with speed limits displayed on gantries, resulting in low compliance rates. Additionally, traditional models lack the flexibility to respond promptly to changing traffic conditions, potentially delaying necessary control measures. This paper proposes a graded speed limit control framework for mixed traffic environments consisting of connected and autonomous vehicles (CAVs) and human-driven vehicles (HDVs). The framework automates the identification of bottlenecks using fundamental diagram analysis and controls the behavior of CAVs through agents. This approach indirectly influences the behavior of HDVs to achieve overall traffic management objectives. The agents are modeled using deep reinforcement learning (DRL), incorporating graded levels and safe control intervals. In experiments conducted on the Taiwan road network, our RL-based GVSL method demonstrates a 3.4% increase in vehicle throughput and a 47.9% reduction in potential collision risks compared to traditional threshold-based control methods. Furthermore, the RL-based GVSL method adapts to various CAV penetration rates, leveraging the controllability of CAVs to achieve better control outcomes as penetration rates increase.
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| contributor author | Yunyang Shi | |
| contributor author | Chengqi Liu | |
| contributor author | Qiang Sun | |
| contributor author | Chengjie Liu | |
| contributor author | Hongzhe Liu | |
| contributor author | Ziyuan Gu | |
| contributor author | Shaoweihua Liu | |
| contributor author | Shi Feng | |
| contributor author | Runsheng Wang | |
| date accessioned | 2025-08-17T22:23:05Z | |
| date available | 2025-08-17T22:23:05Z | |
| date copyright | 5/1/2025 12:00:00 AM | |
| date issued | 2025 | |
| identifier other | JTEPBS.TEENG-8875.pdf | |
| identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4306862 | |
| description abstract | Effective management is essential for maintaining the smooth operation of highways. The graded variable speed limit (GVSL) method enhances traditional speed limit models by dividing the highway into multiple segments and applying different speed limits to each segment differently. However, there are two main issues: human drivers often choose not to comply with speed limits displayed on gantries, resulting in low compliance rates. Additionally, traditional models lack the flexibility to respond promptly to changing traffic conditions, potentially delaying necessary control measures. This paper proposes a graded speed limit control framework for mixed traffic environments consisting of connected and autonomous vehicles (CAVs) and human-driven vehicles (HDVs). The framework automates the identification of bottlenecks using fundamental diagram analysis and controls the behavior of CAVs through agents. This approach indirectly influences the behavior of HDVs to achieve overall traffic management objectives. The agents are modeled using deep reinforcement learning (DRL), incorporating graded levels and safe control intervals. In experiments conducted on the Taiwan road network, our RL-based GVSL method demonstrates a 3.4% increase in vehicle throughput and a 47.9% reduction in potential collision risks compared to traditional threshold-based control methods. Furthermore, the RL-based GVSL method adapts to various CAV penetration rates, leveraging the controllability of CAVs to achieve better control outcomes as penetration rates increase. | |
| publisher | American Society of Civil Engineers | |
| title | Real-Time Bottleneck Identification and Graded Variable Speed Limit Control Framework for Mixed Traffic Flow on Highways Based on Deep Reinforcement Learning | |
| type | Journal Article | |
| journal volume | 151 | |
| journal issue | 5 | |
| journal title | Journal of Transportation Engineering, Part A: Systems | |
| identifier doi | 10.1061/JTEPBS.TEENG-8875 | |
| journal fristpage | 04025017-1 | |
| journal lastpage | 04025017-16 | |
| page | 16 | |
| tree | Journal of Transportation Engineering, Part A: Systems:;2025:;Volume ( 151 ):;issue: 005 | |
| contenttype | Fulltext |