In this paper, we propose a framework of the mutual information-maximizing (MIM) quantized decoding for low-density parity-check (LDPC) codes by using simple mappings and fixed-point additions. Our decoding method is generic in the sense that it can be applied to LDPC codes with arbitrary degree distributions, and can be implemented based on either the belief propagation (BP) algorithm or the min-sum (MS) algorithm. In particular, we propose the MIM density evolution (MIM-DE) to construct the lookup tables (LUTs) for the node updates. The computational complexity and memory requirements are discussed and compared to the LUT decoder variants. For applications with low-latency requirement, we consider the layered schedule to accelerate the convergence speed of decoding quasi-cyclic LDPC codes. In particular, we develop the layered MIM-DE to design the LUTs based on the MS algorithm, leading to the MIM layered quantized MS (MIM-LQMS) decoder. An optimization method is further introduced to reduce the memory requirement for storing the LUTs. Simulation results show that the MIM quantized decoders outperform the state-of-the-art LUT decoders in the waterfall region with both 3-bit and 4-bit precision over the additive white Gaussian noise channels. For small decoding iterations, the MIM quantized decoders also achieve a faster convergence speed compared to the benchmarks. Moreover, the 4-bit MIM-LQMS decoder can approach the error performance of the floating-point layered BP decoder within 0.3 dB in the moderate-to-high SNR regions, over both the AWGN channels and the fast fading channels.
翻译:在本文中,我们建议建立一个信息最大化共同编码(MIM)框架,通过简单的绘图和固定点添加,对低密度对等检查(LDPC)代码进行量化解码。我们的解码方法是通用的,因为它可以任意地对LDPC代码应用,并且可以基于信仰传播(BP)算法或分钟总算算(MS)算法加以实施。特别是,我们建议采用MIM密度快速演化(MIM-DE),为节点更新建立调色表(LUTs ) 。讨论计算复杂性和记忆要求,并与LUT解码变量比较。对于低延迟要求的应用,我们考虑分层时间表,以加快半周期解码LDPC代码的趋同速度。特别是,我们开发分层的MIM-DE,以基于MS算法设计LUT,导致M(MIM-LIM-LIM)的调序算法。在SIMMMMD(L-MID)内部将精度调调精度的调调调调调调调调调调调调调调调调数据。