Reduced Complexity Belief Propagation Decoders for Polar Codes
Jun Lin, Chenrong Xiong, Zhiyuan Yan

TL;DR
This paper introduces a reduced complexity belief propagation decoding algorithm for polar codes, significantly lowering memory and computational requirements while maintaining or improving error performance.
Contribution
The paper proposes the RCSC decoding algorithm for polar codes, reducing memory and computation compared to existing BP and SCAN decoders, and introduces an efficient decoder architecture.
Findings
RCSC decoder requires fewer LLRs than BP and SCAN decoders.
The RCSC algorithm eliminates unnecessary real additions, reducing complexity.
The proposed architecture offers better error performance and lower energy consumption.
Abstract
Polar codes are newly discovered capacity-achieving codes, which have attracted lots of research efforts. Polar codes can be efficiently decoded by the low-complexity successive cancelation (SC) algorithm and the SC list (SCL) decoding algorithm. The belief propagation (BP) decoding algorithm not only is an alternative to the SC and SCL decoders, but also provides soft outputs that are necessary for joint detection and decoding. Both the BP decoder and the soft cancelation (SCAN) decoder were proposed for polar codes to output soft information about the coded bits. In this paper, first a belief propagation decoding algorithm, called reduced complexity soft cancelation (RCSC) decoding algorithm, is proposed. Let denote the block length. Our RCSC decoding algorithm needs to store only log-likelihood ratios (LLRs), significantly less than and…
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