Cargando…
LDPC codes - new methodologies
Low Density Parity-Check (LDPC) codes have become very popular because of their near Shannon limit performance when decoded using a probabilistic decoding algorithm. This work proposes several methodologies related to LDPC codes, including design of codes based on optimsation algorithms, mapping LDP...
Autor principal: | |
---|---|
Lenguaje: | eng |
Publicado: |
2020
|
Materias: | |
Acceso en línea: | http://cds.cern.ch/record/2730008 |
Sumario: | Low Density Parity-Check (LDPC) codes have become very popular because of their
near Shannon limit performance when decoded using a probabilistic decoding algorithm. This work proposes several methodologies related to LDPC codes, including design of codes based on optimsation algorithms, mapping LDPC decoders onto parallel architectures, and improving performance of state-of-the-art decoders.
LDPC codes are random-based codes, defined in terms of parity-check matrices or
Tanner graphs. Parameters of Tanner graphs, particularly a degree distribution and
cycle occurrence, are crucial for probabilistic iterative decoders. Therefore, algorithms
for producing good codes are needed. In this work, an algorithm for producing codes
of large girth is proposed and evaluated. This algorithm is further utilsed for genetic
optimzation methods accelerated by coarse grained parallelzation. The proposed
methods are evaluated using different code lengths and redundancies.
The second part of this thesis is devoted to mapping LDPC decoders on parallel
systems, which are becoming very popular in modern communications systems. A
general method for mapping irregular LDPC codes is proposed and evaluated on GPU
platform using OpenCL and CUDA frameworks.
The last main part introduces algorithms for improving performance of LDPC
codes. Two main methods are proposed, a method based on backtracking codeword
estimations and a method based on using several parity-check matrices. The second
method, so called Mutational LDPC (MLDPC), utilses several parity-check matrices
produced by slight mutations which run in parallel decoders. Information from all
decoders is then used to provide the codeword estimation. The MLDPC is further
modified using information entropy and so called radius which provide the additional
improvement of the Bit Error Rate. |
---|