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arxiv: 1711.11093 · v4 · pith:KINVQ26Tnew · submitted 2017-11-29 · 💻 cs.IT · math.IT

Partitioned Successive-Cancellation Flip Decoding of Polar Codes

classification 💻 cs.IT math.IT
keywords decodingsc-flipcomplexityerror-correctionperformancepscfcodescomputational
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Polar codes are a class of channel capacity achieving codes that has been selected for the next generation of wireless communication standards. Successive-cancellation (SC) is the first proposed decoding algorithm, suffering from mediocre error-correction performance at moderate code length. In order to improve the error-correction performance of SC, two approaches are available: (i) SC-List decoding which keeps a list of candidates by running a number of SC decoders in parallel, thus increasing the implementation complexity, and (ii) SC-Flip decoding that relies on a single SC module, and keeps the computational complexity close to SC. In this work, we propose the partitioned SC-Flip (PSCF) decoding algorithm, which outperforms SC-Flip in terms of error-correction performance and average computational complexity, leading to higher throughput and reduced energy consumption per codeword. We also introduce a partitioning scheme that best suits our PSCF decoder. Simulation results show that at equivalent frame error rate, PSCF has up to $5 \times$ less computational complexity than the SC-Flip decoder. At equivalent average number of iterations, the error-correction performance of PSCF outperforms SC-Flip by up to $0.15$ dB at frame error rate of $10^{-3}$.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Neural Dynamic Successive Cancellation Flip Decoding of Polar Codes

    cs.IT 2019-07 unverdicted novelty 6.0

    A training-parameter-based neural approximation removes transcendental computations from DSCF polar code decoding with almost no error-correction performance loss.