Traffic Information Propagation Mechanism Using Seamless Connectivity Procedure for VCPS

Author(s):  
Hongzhuan Zhao ◽  
Hang Yue ◽  
Tianlong Gu ◽  
Wenyong Li ◽  
Dan Zhou
2020 ◽  
pp. 2150054
Author(s):  
Cong Zhai ◽  
Weitiao Wu

The rapid adoption of sensor technology has upgraded the vehicular communication capacity, which enables the drivers to predict the traffic state (e.g. headway variation tendency (HVT)) based on the current traffic information. Meanwhile, in practice, the drivers would exhibit bounded rationality behavior in that they often perceive and respond to acceleration/deceleration only when the headway variation exceeds a certain threshold. The collective effect may greatly affect the driving behavior and traffic flow performance. In this study, we innovatively model the traffic flow macroscopically considering HVT and bounded rationality effect in the context of continuum model. Based on the linear stability theory, the stability condition of the above model is obtained. The KdV-Burgers equation of the model is derived to describe traffic jam propagation mechanism near the neutral stability line by applying the reductive perturbation method in nonlinear stability analysis. Results show that the HVT and bounded rationality behavior have a great impact on the traffic congestion and energy consumption.


2016 ◽  
Vol 20 (7) ◽  
pp. 2587-2597
Author(s):  
Hwan Pil Lee ◽  
Doo-Pyo Hong ◽  
Eum Han ◽  
Soo Hee Kim ◽  
Ilsoo Yun

Sensors ◽  
2021 ◽  
Vol 21 (13) ◽  
pp. 4516
Author(s):  
Meng Cai ◽  
Han Luo ◽  
Xiao Meng ◽  
Ying Cui

The information propagation of emergencies in social networks is often accompanied by the dissemination of the topic and emotion. As a virtual sensor of public emergencies, social networks have been widely used in data mining, knowledge discovery, and machine learning. From the perspective of network, this study aims to explore the topic and emotion propagation mechanism, as well as the interaction and communication relations of the public in social networks under four types of emergencies, including public health events, accidents and disasters, social security events, and natural disasters. Event topics were identified by Word2vec and K-means clustering. The biLSTM model was used to identify emotion in posts. The propagation maps of topic and emotion were presented visually on the network, and the synergistic relationship between topic and emotion propagation as well as the communication characteristics of multiple subjects were analyzed. The results show that there were similarities and differences in the propagation mechanism of topic and emotion in different types of emergencies. There was a positive correlation between topic and emotion of different types of users in social networks in emergencies. Users with a high level of topic influence were often accompanied by a high level of emotion appeal.


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