Abstract

With the emergence of connected vehicle technologies, the potential positive impact of connected vehicle guidance on mobility has become a research hotspot by data exchange among vehicles, infrastructure, and mobile devices. This study is focused on micro-modeling and quantitatively evaluating the impact of connected vehicle guidance on network-wide travel time by introducing various affecting factors. To evaluate the benefits of connected vehicle guidance, a simulation architecture based on one engine is proposed representing the connected vehicle–enabled virtual world, and connected vehicle route guidance scenario is established through the development of communication agent and intelligent transportation systems agents using connected vehicle application programming interface considering the communication properties, such as path loss and transmission power. The impact of connected vehicle guidance on network-wide travel time is analyzed by comparing with non-connected vehicle guidance in response to different market penetration rate, following rate, and congestion level. The simulation results explore that average network-wide travel time in connected vehicle guidance shows a significant reduction versus that in non–connected vehicle guidance. Average network-wide travel time in connected vehicle guidance have an increase of 42.23% comparing to that in non-connected vehicle guidance, and average travel time variability (represented by the coefficient of variance) increases as the travel time increases. Other vital findings include that higher penetration rate and following rate generate bigger savings of average network-wide travel time. The savings of average network-wide travel time increase from 17% to 38% according to different congestion levels, and savings of average travel time in more serious congestion have a more obvious improvement for the same penetration rate or following rate.

Highlights

  • The network mobility of large cities in China has not been effectively improved, and network congestion condition appears due to the deterioration trend in spatial–temporal dimension, which further results in the inconvenience of travel and the increase in travel cost

  • There are some limitations in the related studies, such as (1) some guidance strategies are designed based on the assumption that the variables in the proposed model have already obtained by Connected vehicle (CV) technology and (2) the impact of guidance on travel time is analyzed based on the unrealistic CV environment, and the simulator cannot realize the simulation of interaction between guidance information and network flow considering the communication properties

  • We focused on the improvements in average network-wide travel time (NTT) in CV guidance scenario

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Summary

Introduction

The network mobility of large cities in China has not been effectively improved, and network congestion condition appears due to the deterioration trend in spatial–temporal dimension, which further results in the inconvenience of travel and the increase in travel cost. There are some limitations in the related studies, such as (1) some guidance strategies are designed based on the assumption that the variables in the proposed model have already obtained by CV technology and (2) the impact of guidance on travel time is analyzed based on the unrealistic CV environment, and the simulator cannot realize the simulation of interaction between guidance information and network flow considering the communication properties. Most of previous studies examine the impact of CV guidance using VISSIM/ PARAMICS These studies considered the influence of penetration rate (PR) on mobility, they did not reflect the interdependent relationship between traffic flow and communication networks and cannot realize the impact of communication properties on guidance information, such as path loss and shadow fading. This research effort will be concluded with findings and recommendations

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