On the design of good LDPC codes with joint genetic algorithm and linear programming optimization

A. Amirzadeh, M. H. Taieb, J. Chouinard
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引用次数: 1

Abstract

In communication systems, the transmitted data is corrupted by channel perturbations, such as noise and fading, which affect the reliability of the received data. Error correction codes are employed to mitigate channel perturbations. However, design and implementation of good and efficient error correction codes remains an open problem. In this paper, Low Density Parity Check (LDPC) codes are considered as they provide a reasonable trade-off between computational complexity and reliability. Good LDPC codes should ideally provide low complexity, close to capacity acheivable transmission rate, high coding threshold, and high decoding stability. In this paper, we investigate a joint LDPC code optimization algorithm using Genetic Algorithm (GA) and Linear Programming (LP) to determine the variable nodes and check nodes degrees distributions. EXIT chart analysis and Frame Error Rate (FER) performance are used to validate the proposed method.
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结合遗传算法和线性规划优化设计好的LDPC代码
在通信系统中,传输的数据会受到信道扰动的破坏,如噪声和衰落,从而影响接收数据的可靠性。采用纠错码来减轻信道扰动。然而,设计和实现良好和有效的纠错码仍然是一个悬而未决的问题。本文考虑了低密度奇偶校验码(LDPC),因为它在计算复杂性和可靠性之间提供了合理的权衡。理想情况下,好的LDPC码应该具有低复杂度、接近容量可达到的传输率、高编码阈值和高解码稳定性。本文研究了一种利用遗传算法(GA)和线性规划(LP)来确定变量节点和检查节点度分布的LDPC代码联合优化算法。利用出口图分析和帧误码率(FER)性能对该方法进行了验证。
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