Neural Layered Min-Sum Decoding for Protograph LDPC Codes
Article 2021 en
Authors
DZ
Dexin Zhang
JD
Jincheng Dai
KT
Kailin Tan
Abstract
1 min read
In this paper, layered min-sum (MS) iterative decoding is formulated as a customized neural network following the sequential scheduling of check node (CN) updates. By virtue of the lifting structure of protograph low-density parity-check (LDPC) codes, identical network parameters are shared among all derived edges originating from the same edge in the protograph, which makes the number of learn- able parameters manageable. The proposed neural layered MS decoder can support arbitrary codelengths consequently. Moreover, an iteration-wise greedy training method is proposed to tune the parameters such that it avoids the vanishing gradient problem and accelerates the decoding convergence.
Discussion(0)
No comments yet. Be the first to comment.