협력적인 차량 엣지 컴퓨팅에서의 태스크 마이그레이션
Task Migration in Cooperative Vehicular Edge Computing
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초록

With the rapid development of the Internet of Things(IoT) technology recently, multi-access edge computing(MEC) is emerged as a next-generation technology for real-time and high-performance services. High mobility of users between MECs with limited service areas is considered one of the issues in the MEC environment. In this paper, we consider a vehicle edge computing(VEC) environment which has a high mobility, and propose a task migration algorithm to decide whether or not to migrate and where to migrate using DQN, as a reinforcement learning method. The objective of the proposed algorithm is to improve the system throughput while satisfying QoS(Quality of Service) requirements by minimizing the difference between queueing delays in vehicle edge computing servers(VECSs). The results show that compared to other algorithms, the proposed algorithm achieves approximately 14-49% better QoS satisfaction and approximately 14-38% lower service blocking rate.

키워드

Task MigrationVehicular Edge ComputingReinforcement LearningDQN태스크 마이그레이션차량 엣지 컴퓨팅강화 학습DQN
제목
협력적인 차량 엣지 컴퓨팅에서의 태스크 마이그레이션
제목 (타언어)
Task Migration in Cooperative Vehicular Edge Computing
저자
문성원임유진
DOI
10.3745/KTSDE.2021.10.12.311
발행일
2021-12
저널명
정보처리학회논문지. 컴퓨터 및 통신시스템
10
12
페이지
311 ~ 318