Litcius/Paper detail

Neural Layered Decoding of 5G LDPC Codes

Nemin Shah, Yash Vasavada

2021IEEE Communications Letters22 citationsDOI

Abstract

In this letter, we propose various low-complexity neural layered min-sum (NLMS) algorithms to improve the decoding performance of the fifth generation (5G) new radio (NR) low-density parity-check (LDPC) codes. Our proposals are based on the computationally-efficient normalized offset min-sum (NOMS) approach for the layered belief propagation (LBP). The main novelty of our proposals is a deep neural network (DNN) that implements the layered mode decoding and that additionally learns the normalization and the offset parameters of the NOMS scheme. The schemes that we propose use the DNN as well as adaptation and filtering for estimating the optimum values of these parameters. We show by simulation that our proposed decoders achieve a significant computational benefit compared to the standard (non-neural) LBP decoder without an appreciable performance penalty.

Topics & Concepts

Low-density parity-check codeDecoding methodsComputer scienceOffset (computer science)AlgorithmNoveltyArtificial neural networkNormalization (sociology)Computational complexity theoryTheoretical computer scienceArtificial intelligencePhilosophyTheologyProgramming languageAnthropologySociologyError Correcting Code TechniquesAdvanced Wireless Communication TechniquesWireless Signal Modulation Classification