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Smart Fog Based Workflow for Traffic Control Networks

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posted on 2024-11-15, 08:18 authored by Qiang Wu, Jun ShenJun Shen, Binbin Yong, Jianqing Wu, Fucun Li, Jingqiang Wang, Qingguo Zhou
In this paper, we propose a novel traffic control architecture which is based on fog computing paradigm and reinforcement leaning technologies. We firstly provide an overview of this framework and detail the components and workflows designed to relieve traffic congestion. These workflows, which are connecting traffic lights, vehicles, Fog nodes and traffic cloud, aim to generate traffic light control flow and communication flow for each intersection to avoid a traffic jam. In order to make the whole city's traffic highly efficient, the fog computing paradigm and a distributed reinforcement learning algorithm is designed to overcome communication bandwidth limitation and local optimal traffic control flow, respectively. We also demonstrate that our framework outperforms traditional systems and provides high practicability in future research for building the intelligent transportation system.

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Citation

Wu, Q., Shen, J., Yong, B., Wu, J., Li, F., Wang, J. & Zhou, Q. (2019). Smart Fog Based Workflow for Traffic Control Networks. Future Generation Computer Systems: the international journal of grid computing: theory, methods and applications, 97 825-835.

Journal title

Future Generation Computer Systems

Volume

97

Pagination

825-835

Language

English

RIS ID

130686

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