A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random Environment

Connected and automated vehicles (CAVs) trajectories not only provide more real-time information by vehicles to infrastructure but also can be controlled and optimized, to further save travel time and gasoline consumption. This paper proposes a two-level model for traffic signal timing and trajector...

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Main Authors: Yangsheng Jiang, Bin Zhao, Meng Liu, Zhihong Yao
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2021/9945398
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spelling doaj-4536d12358934fdcba5b0e2a0d8b0b912021-05-10T00:26:06ZengHindawi-WileyJournal of Advanced Transportation2042-31952021-01-01202110.1155/2021/9945398A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random EnvironmentYangsheng Jiang0Bin Zhao1Meng Liu2Zhihong Yao3School of Transportation and LogisticsSchool of Transportation and LogisticsSchool of Transportation and LogisticsSchool of Transportation and LogisticsConnected and automated vehicles (CAVs) trajectories not only provide more real-time information by vehicles to infrastructure but also can be controlled and optimized, to further save travel time and gasoline consumption. This paper proposes a two-level model for traffic signal timing and trajectories planning of multiple connected automated vehicles considering the random arrival of vehicles. The proposed method contains two levels, i.e., CAVs’ arrival time and traffic signals optimization, and multiple CAVs trajectories planning. The former optimizes CAVs’ arrival time and traffic signals in a random environment, to minimize the average vehicle’s delay. The latter designs multiple CAVs trajectories considering average gasoline consumption. The dynamic programming (DP) and the General Pseudospectral Optimal Control Software (GPOPS) are applied to solve the two-level optimization problem. Numerical simulation is conducted to compare the proposed method with a fixed-time traffic signal. Results show that the proposed method reduces both average vehicle’s delay and gasoline consumption under different traffic demand significantly. The average reduction of vehicle’s delay and gasoline consumption are 26.91% and 10.38%, respectively, for a two-phase signalized intersection. In addition, sensitivity analysis indicates that the minimum green time and free-flow speed have a noticeable effect on the average vehicle’s delay and gasoline consumption.http://dx.doi.org/10.1155/2021/9945398
collection DOAJ
language English
format Article
sources DOAJ
author Yangsheng Jiang
Bin Zhao
Meng Liu
Zhihong Yao
spellingShingle Yangsheng Jiang
Bin Zhao
Meng Liu
Zhihong Yao
A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random Environment
Journal of Advanced Transportation
author_facet Yangsheng Jiang
Bin Zhao
Meng Liu
Zhihong Yao
author_sort Yangsheng Jiang
title A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random Environment
title_short A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random Environment
title_full A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random Environment
title_fullStr A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random Environment
title_full_unstemmed A Two-Level Model for Traffic Signal Timing and Trajectories Planning of Multiple CAVs in a Random Environment
title_sort two-level model for traffic signal timing and trajectories planning of multiple cavs in a random environment
publisher Hindawi-Wiley
series Journal of Advanced Transportation
issn 2042-3195
publishDate 2021-01-01
description Connected and automated vehicles (CAVs) trajectories not only provide more real-time information by vehicles to infrastructure but also can be controlled and optimized, to further save travel time and gasoline consumption. This paper proposes a two-level model for traffic signal timing and trajectories planning of multiple connected automated vehicles considering the random arrival of vehicles. The proposed method contains two levels, i.e., CAVs’ arrival time and traffic signals optimization, and multiple CAVs trajectories planning. The former optimizes CAVs’ arrival time and traffic signals in a random environment, to minimize the average vehicle’s delay. The latter designs multiple CAVs trajectories considering average gasoline consumption. The dynamic programming (DP) and the General Pseudospectral Optimal Control Software (GPOPS) are applied to solve the two-level optimization problem. Numerical simulation is conducted to compare the proposed method with a fixed-time traffic signal. Results show that the proposed method reduces both average vehicle’s delay and gasoline consumption under different traffic demand significantly. The average reduction of vehicle’s delay and gasoline consumption are 26.91% and 10.38%, respectively, for a two-phase signalized intersection. In addition, sensitivity analysis indicates that the minimum green time and free-flow speed have a noticeable effect on the average vehicle’s delay and gasoline consumption.
url http://dx.doi.org/10.1155/2021/9945398
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