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Reconstruction-Computation-Quantization (RCQ): A Paradigm for Low Bit Width LDPC Decoding

Signal Processing 2022-02-10 v2

Abstract

This paper uses the reconstruction-computation-quantization (RCQ) paradigm to decode low-density parity-check (LDPC) codes. RCQ facilitates dynamic non-uniform quantization to achieve good frame error rate (FER) performance with very low message precision. For message-passing according to a flooding schedule, the RCQ parameters are designed by discrete density evolution (DDE). Simulation results on an IEEE 802.11 LDPC code show that for 4-bit messages, a flooding MinSum RCQ decoder outperforms table-lookup approaches such as information bottleneck (IB) or Min-IB decoding, with significantly fewer parameters to be stored. Additionally, this paper introduces layer-specific RCQ (LS-RCQ), an extension of RCQ decoding for layered architectures. LS-RCQ uses layer-specific message representations to achieve the best possible FER performance. For LS-RCQ, this paper proposes using layered DDE featuring hierarchical dynamic quantization (HDQ) to design LS-RCQ parameters efficiently. Finally, this paper studies field-programmable gate array (FPGA) implementations of RCQ decoders. Simulation results for a (9472, 8192) quasi-cyclic (QC) LDPC code show that a layered MinSum RCQ decoder with 3-bit messages achieves more than a 10%10\% reduction in LUTs and routed nets and more than a 6%6\% decrease in register usage while maintaining comparable decoding performance, compared to a 5-bit offset MinSum decoder.

Keywords

Cite

@article{arxiv.2111.08920,
  title  = {Reconstruction-Computation-Quantization (RCQ): A Paradigm for Low Bit Width LDPC Decoding},
  author = {Linfang Wang and Caleb Terrill and Maximilian Stark and Zongwang Li and Sean Chen and Chester Hulse and Calvin Kuo and Richard Wesel and Gerhard Bauch and Rekha Pitchumani},
  journal= {arXiv preprint arXiv:2111.08920},
  year   = {2022}
}

Comments

This paper has been accepted by IEEE Transactions on Communication