2022
DOI: 10.48550/arxiv.2205.11861
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Deep Reinforcement Learning for Radio Resource Allocation in NOMA-based Remote State Estimation

Abstract: Remote state estimation, where many sensors send their measurements of distributed dynamic plants to a remote estimator over shared wireless resources, is essential for missioncritical applications of Industry 4.0. Most of the existing works on remote state estimation assumed orthogonal multiple access and the proposed dynamic radio resource allocation algorithms can only work for very small-scale settings. In this work, we consider a remote estimation system with non-orthogonal multiple access. We formulate a… Show more

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