Polar-Coded Tensor-Based Unsourced Random Access with Soft Decoding
Jiaqi Fang, Yan Liang, Gangle Sun, Hongwei Hou, Yafei Wang, Li You,, Wenjin Wang

TL;DR
This paper introduces a polar-coded tensor-based unsourced random access scheme with soft decoding, enhancing performance and reducing complexity for massive machine-type communications in 6G networks.
Contribution
It develops a soft decoding framework for tensor-based URA using polar codes, including a novel Bayesian receiver with Grassmannian modulation and variational Bayesian learning.
Findings
Outperforms existing schemes in accuracy
Reduces computational complexity
Generates soft information without knowing active devices count
Abstract
The unsourced random access (URA) has emerged as a viable scheme for supporting the massive machine-type communications (mMTC) in the sixth generation (6G) wireless networks. Notably, the tensor-based URA (TURA), with its inherent tensor structure, stands out by simultaneously enhancing performance and reducing computational complexity for the multi-user separation, especially in mMTC networks with a large numer of active devices. However, current TURA scheme lacks the soft decoder, thus precluding the incorporation of existing advanced coding techniques. In order to fully explore the potential of the TURA, this paper investigates the Polarcoded TURA (PTURA) scheme and develops the corresponding iterative Bayesian receiver with feedback (IBR-FB). Specifically, in the IBR-FB, we propose the Grassmannian modulation-aided Bayesian tensor decomposition (GM-BTD) algorithm under the…
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Taxonomy
TopicsBlind Source Separation Techniques · Sparse and Compressive Sensing Techniques · Tensor decomposition and applications
