线性复杂度的ADMM二次规划LDPC二进制码解码器

Jing Bai, Yongchao Wang
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引用次数: 2

摘要

本文利用乘法器交替方向法(ADMM)技术,开发了一种高效的二次规划(QP)解码算法,用于二进制低密度奇偶校验(LDPC)码。其主要内容如下:首先,通过将三变量奇偶校验方程转化为等价表达式,将极大似然解码问题简化为一个二次规划。其次,利用ADMM技术设计得到的QP解码模型的求解算法。与现有的基于admm的数学规划(MP)译码算法相比,该算法消除了校验多面体上的复杂欧几里得投影。第三,证明了所提算法满足全零假设的有利性质。此外,通过利用QP模型的内部结构,我们证明了我们提出的算法在每次迭代中的解码复杂度在LDPC码长度方面是线性的。仿真结果表明,所提出的QP解码器比和积BP解码器具有更好的纠错性能,并且在目前最先进的基于admm的MP解码算法中花费的解码时间最少。
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Quadratic Programming Decoder for Binary LDPC Codes via ADMM Technique with Linear Complexity
In this paper, we develop an efficient quadratic programming (QP) decoding algorithm via the alternating direction method of multipliers (ADMM) technique for binary low density parity check (LDPC) codes. Its main content is as follows: first, through transforming the three-variables parity check equation to its equivalent expression, we relax the maximum likelihood decoding problem to a quadratic program. Second, the ADMM technique is exploited to design the solving algorithm of the resulting QP decoding model. Compared with the existing ADMM-based mathematical programming (MP) decoding algorithms, our proposed algorithm eliminates complex Euclidean projection onto the check polytope. Third, we prove that the proposed algorithm satisfies the favorable property of all-zeros assumption. Moreover, by exploiting the inside structure of the QP model, we show that the decoding complexity of our proposed algorithm in each iteration is linear in terms of LDPC code length. Simulation results demonstrate that the proposed QP decoder attains better error-correction performance than the sum-product BP decoder and costs the least amount of decoding time amongst the state-of-the-art ADMM-based MP decoding algorithms.
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