Reinforcement learning based resource management for 6G-enabled mIoT with hypergraph interference model

Huang, J., Yang, C., Zhang, S., Yang, F., Alfarraj, O., Frascolla, V., Mumtaz, S. ORCID: 0000-0001-6364-6149 and Yu, K., 2024. Reinforcement learning based resource management for 6G-enabled mIoT with hypergraph interference model. IEEE Transactions on Communications. ISSN 0090-6778

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Abstract

For the future 6G-enabled massive Internet of Things (mIoT), how to effectively manage spectrum resources to support huge data traffic under the large-scale overlapping caused by the dense deployment of massive devices is the imperative challenge. In this paper, a novel hypergraph interference model is designed, and two reinforcement learning (RL)-based resource management algorithms in the 6G-enabled mIoT are proposed to enhance the network throughput and avoid overlapping interference. Then, based on the hypergraph interference model, the resource management problem of execution network throughput maximization is theoretically formulated under large-scale overlapping interference scenarios. To handle this problem, we convert it into a Markov decision process (MDP) model and then deal with this MDP model through the advantage actor-critic (A2C)-based resource management algorithm and asynchronous advantage actor-critic (A3C)-based resource management algorithm, which aim to maximize network throughput of the spectrum resource allocation among massive devices. The simulation results verify that the proposed algorithms can not only avoid large-scale overlapping interference but also improve the network throughput.

Item Type: Journal article
Publication Title: IEEE Transactions on Communications
Creators: Huang, J., Yang, C., Zhang, S., Yang, F., Alfarraj, O., Frascolla, V., Mumtaz, S. and Yu, K.
Publisher: Institute of Electrical and Electronics Engineers (IEEE)
Date: 4 March 2024
ISSN: 0090-6778
Identifiers:
NumberType
10.1109/tcomm.2024.3372892DOI
1871245Other
Divisions: Schools > School of Science and Technology
Record created by: Laura Ward
Date Added: 14 Mar 2024 10:39
Last Modified: 14 Mar 2024 10:39
URI: https://irep.ntu.ac.uk/id/eprint/51079

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