Improving LDPC Decoding Performance for 3D TLC NAND Flash by LLR Optimization Scheme for Hard and Soft Decision

Lanlan Cui, Fei Wu, Xiaojian Liu, Meng Zhang, Renzhi Xiao, Changsheng Xie
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引用次数: 2

Abstract

Low-density parity-check (LDPC) codes have been widely adopted in NAND flash in recent years to enhance data reliability. There are two types of decoding, hard-decision and soft-decision decoding. However, for the two types, their error correction capability degrades due to inaccurate log-likelihood ratio (LLR) . To improve the LLR accuracy of LDPC decoding, this article proposes LLR optimization schemes, which can be utilized for both hard-decision and soft-decision decoding. First, we build a threshold voltage distribution model for 3D floating gate (FG) triple level cell (TLC) NAND flash. Then, by exploiting the model, we introduce a scheme to quantize LLR during hard-decision and soft-decision decoding. And by amplifying a portion of small LLRs, which is essential in the layer min-sum decoder, more precise LLR can be obtained. For hard-decision decoding, the proposed new modes can significantly improve the decoder’s error correction capability compared with traditional solutions. Soft-decision decoding starts when hard-decision decoding fails. For this part, we study the influence of the reference voltage arrangement of LLR calculation and apply the quantization scheme. The simulation shows that the proposed approach can reduce frame error rate (FER) for several orders of magnitude.
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采用软硬判决LLR优化方案提高3D TLC NAND闪存LDPC解码性能
低密度奇偶校验(LDPC)码近年来被广泛应用于NAND闪存中,以提高数据可靠性。译码有硬译码和软译码两种类型。然而,对于这两种类型,由于不准确的对数似然比(LLR),它们的纠错能力下降。为了提高LDPC译码的LLR精度,本文提出了可用于硬判决译码和软判决译码的LLR优化方案。首先,我们建立了三维浮栅(FG)三电平单元(TLC) NAND闪存的阈值电压分布模型。然后,利用该模型,提出了一种在硬判决译码和软判决译码过程中量化LLR的方案。通过放大层最小和解码器中必不可少的部分小LLR,可以获得更精确的LLR。对于硬判决译码,与传统译码方案相比,提出的新模式能显著提高译码器的纠错能力。硬译码失败时开始软译码。在这一部分,我们研究了基准电压排列对LLR计算的影响,并应用了量化方案。仿真结果表明,该方法可以将帧误码率降低几个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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