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Conference Paper Deep Reinforcement Learning-based Edge Discovery within the 3GPP Framework for C-ITS
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Authors
Malik Muhammad Saad, Muhammad Ashar Tariq, Mahnoor Ajmal, Donghyun Jeon, Jinhong Kim, Kil-Taek Lim, Jang Woon Baek, Dongkyun Kim
Issue Date
2024-07
Citation
International Conference on Ubiquitous and Future Networks (ICUFN) 2024, pp.416-421
Language
English
Type
Conference Paper
DOI
https://dx.doi.org/10.1109/ICUFN61752.2024.10624860
Abstract
With the evolution of edge computing, addressing challenges within the framework of the Third Generation Part-nership Project (3GPP) standard has garnered attention. In particular, challenges such as edge discovery and relocation, session management function (SMF) selection, and edge lifecycle man-agement pose significant hurdles in providing seamless services, especially in advanced Cooperative Intelligent Transportation Systems (C- ITS). This paper proposes an intelligent solution for edge discovery tailored to continuously provision C- ITS services to users within the 3G PP framework. Leveraging deep reinforcement learning (DRL), our proposed algorithm facilitates optimal edge discovery based on specific user requirements. We demonstrate the compatibility of our approach with 3GPP standard operations and address the critical challenge of edge discovery by cmplovina an intelliaent DRL-based methodology
KSP Keywords
C-ITS, Cooperative Intelligent Transportation Systems, Deep reinforcement learning, Edge Computing, Learning-based, Reinforcement learning(RL), Session management, User Requirements, management function, seamless services, third generation