Boosted Neural Decoders: Achieving Extreme Reliability of LDPC Codes for 6G Networks

Hee-Youl Kwak;Dae-Young Yun;Yongjune Kim;Sang-Hyo Kim;Jong-Seon No
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Abstract

Ensuring extremely high reliability in channel coding is essential for 6G networks. The next-generation of ultra-reliable and low-latency communications (xURLLC) scenario within 6G networks requires frame error rate (FER) below 10-9. However, low-density parity-check (LDPC) codes, the standard in 5G new radio (NR), encounter a challenge known as the error floor phenomenon, which hinders to achieve such low frame error rates. To tackle this problem, we introduce an innovative solution: boosted neural min-sum (NMS) decoder. This decoder operates identically to conventional NMS decoders, but is trained by novel training methods including: i) boosting learning with uncorrected vectors, ii) block-wise training schedule to address the vanishing gradient issue, iii) dynamic weight sharing to minimize the number of trainable weights, iv) transfer learning to reduce the required sample count, and v) data augmentation to expedite the sampling process. Leveraging these training strategies, the boosted NMS decoder achieves the state-of-the art performance in reducing the error floor as well as superior waterfall performance. Remarkably, we fulfill the 6G xURLLC requirement for 5G LDPC codes without a severe error floor. Additionally, the boosted NMS decoder, once its weights are trained, can perform decoding without additional modules, making it highly practical for immediate application. The source code is available at https://github.com/ghy1228/LDPC_Error_Floor.
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增强神经解码器:实现6G网络LDPC码的极端可靠性
确保极高的信道编码可靠性对于6G网络至关重要。6G网络下的下一代超可靠低延迟通信(xURLLC)场景要求帧错误率(FER)低于10-9。然而,低密度奇偶校验(LDPC)码,5G新无线电(NR)的标准,遇到了一个被称为错误层现象的挑战,这阻碍了实现如此低的帧错误率。为了解决这个问题,我们引入了一种创新的解决方案:增强神经最小和(NMS)解码器。该解码器的操作与传统NMS解码器相同,但采用新的训练方法进行训练,包括:i)使用未校正的向量增强学习,ii)分块训练计划以解决梯度消失问题,iii)动态权值共享以最小化可训练权值的数量,iv)迁移学习以减少所需的样本计数,v)数据增强以加快采样过程。利用这些训练策略,增强的NMS解码器在减少误差层和卓越的瀑布性能方面实现了最先进的性能。值得注意的是,我们满足了5G LDPC代码的6G xURLLC要求,没有严重的错误层。此外,增强的NMS解码器,一旦其权值得到训练,就可以在没有额外模块的情况下执行解码,使其在即时应用中非常实用。源代码可从https://github.com/ghy1228/LDPC_Error_Floor获得。
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