4.7 Article

Imitation-Learning-Enabled Vehicular Edge Computing: Toward Online Task Scheduling

Journal

IEEE NETWORK
Volume 35, Issue 3, Pages 102-108

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/MNET.011.2000561

Keywords

Performance evaluation; Scheduling algorithms; Wireless networks; Information-centric networking; Information age; Minimization; Internet

Funding

  1. National Natural Science Foundation of China [61701406, 61803238, 62001073]

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Vehicle edge computing (VEC) enables information sharing among vehicles with a focus on information freshness evaluated through the age of information (AoI). An online task scheduling scheme based on imitation learning is designed to minimize the average age of critical information impacting vehicle decisions. Performance evaluations demonstrate the superiority of the proposed scheme over other algorithms.
Vehicular edge computing (VEC) is a promising paradigm to enable information sharing and acquisition among vehicles. Since information freshness has significantly influence on task scheduling, an emerging metric, named the age of information (AoI), has been utilized to evaluate it. Recent research generally focuses on AoI minimization but pays little attention to information personality. However, different impacts caused by distinct information may be posed on user decisions. This article first briefly introduces the state of the art of imitation learning in wireless networks. After that, an imitation-learning-based online task scheduling scheme is designed with the support of VEC. It intends to minimize the average age of critical information (AoCI), referring to the age of information that has significant impacts on vehicle decisions. Performance evaluations show that the proposed scheme outperforms other algorithms from several aspects. At last, we discuss several potential research challenges and open issues for artificial intelligence in the Internet of Vehicles.

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