학술논문

Optimized Non-Surjective FAIDs for 5G LDPC Codes With Learnable Quantization
Document Type
Periodical
Source
IEEE Communications Letters IEEE Commun. Lett. Communications Letters, IEEE. 28(2):253-257 Feb, 2024
Subject
Communication, Networking and Broadcast Technologies
Decoding
Quantization (signal)
Table lookup
5G mobile communication
Iterative decoding
Artificial neural networks
Training
Non-surjective finite alphabet iterative decoders
low-density parity-check codes
recurrent quantized neural networks
Language
ISSN
1089-7798
1558-2558
2373-7891
Abstract
This letter proposes a novel approach for designing non-surjective (NS) finite alphabet iterative decoders (FAIDs) for quasi-cyclic low-density parity-check (LDPC) codes, especially 5G LDPC codes. We employ recurrent quantized neural networks to optimize the look-up tables used in NS-FAIDs, the design of which is the kernel of FAIDs. During the optimization of LUTs, the quantized message alphabets and quantization thresholds are jointly designed. To cope with the untrainable problem of quantization thresholds in the existing neural-network-based linear FAIDs, we use softmax distribution to soften the implied one-hot distribution of quantization thresholds, making it trainable in the neural network. The proposed decoders offer enhanced universality compared to existing neural network-based linear FAIDs, making them directly applicable to 5G LDPC codes with support for 2-bit quantization over the additive white Gaussian noise channel. Additionally, they significantly outperform the original NS-FAID in terms of performance.