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Main Authors: Li, Qianhui, Wang, Weiya, Zhao, Qianqi, Qu, Tong, He, Jing, Qiang, Xuhong, Hou, Jingwen, Chen, Ke, Zhang, Bao, Wang, Qi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.00075
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author Li, Qianhui
Wang, Weiya
Zhao, Qianqi
Qu, Tong
He, Jing
Qiang, Xuhong
Hou, Jingwen
Chen, Ke
Zhang, Bao
Wang, Qi
author_facet Li, Qianhui
Wang, Weiya
Zhao, Qianqi
Qu, Tong
He, Jing
Qiang, Xuhong
Hou, Jingwen
Chen, Ke
Zhang, Bao
Wang, Qi
contents Quarter level cell (QLC) 3D NAND flash memory is emerging as the predominant storage solution in the era of artificial intelligence. QLC 3D NAND flash stores 4 bit per cell to expand the storage density, resulting in narrower read margins. Constrained to read margins, QLC always suffers from lateral charge migration (LCM), which caused by non-uniform charge density across adjacent memory cells. To suppress charge density gap between cells, there are some algorithm in form of intra-page data mapping such as WBVM, DVDS. However, we observe inter-page data arrangements also approach the suppression. Thus, we proposed an intelligent model PDA-LSTM to arrange intra-page data for LCM suppression, which is a physics-knowledge-driven neural network model. PDA-LSTM applies a long-short term memory (LSTM) neural network to compute a data arrangement probability matrix from input page data pattern. The arrangement is to minimize the global impacts derived from the LCM among wordlines. Since each page data can be arranged only once, we design a transformation from output matrix of LSTM network to non-repetitive sequence generation probability matrix to assist training process. The arranged data pattern can decrease the bit error rate (BER) during data retention. In addition, PDA-LSTM do not need extra flag bits to record data transport of 3D NAND flash compared with WBVM, DVDS. The experiment results show that the PDA-LSTM reduces the average BER by 80.4% compared with strategy without data arrangement, and by 18.4%, 15.2% compared respectively with WBVM and DVDS with code-length 64.
format Preprint
id arxiv_https___arxiv_org_abs_2511_00075
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PDA-LSTM: Knowledge-driven page data arrangement based on LSTM for LCM supression in QLC 3D NAND flash memories
Li, Qianhui
Wang, Weiya
Zhao, Qianqi
Qu, Tong
He, Jing
Qiang, Xuhong
Hou, Jingwen
Chen, Ke
Zhang, Bao
Wang, Qi
Hardware Architecture
Machine Learning
Quarter level cell (QLC) 3D NAND flash memory is emerging as the predominant storage solution in the era of artificial intelligence. QLC 3D NAND flash stores 4 bit per cell to expand the storage density, resulting in narrower read margins. Constrained to read margins, QLC always suffers from lateral charge migration (LCM), which caused by non-uniform charge density across adjacent memory cells. To suppress charge density gap between cells, there are some algorithm in form of intra-page data mapping such as WBVM, DVDS. However, we observe inter-page data arrangements also approach the suppression. Thus, we proposed an intelligent model PDA-LSTM to arrange intra-page data for LCM suppression, which is a physics-knowledge-driven neural network model. PDA-LSTM applies a long-short term memory (LSTM) neural network to compute a data arrangement probability matrix from input page data pattern. The arrangement is to minimize the global impacts derived from the LCM among wordlines. Since each page data can be arranged only once, we design a transformation from output matrix of LSTM network to non-repetitive sequence generation probability matrix to assist training process. The arranged data pattern can decrease the bit error rate (BER) during data retention. In addition, PDA-LSTM do not need extra flag bits to record data transport of 3D NAND flash compared with WBVM, DVDS. The experiment results show that the PDA-LSTM reduces the average BER by 80.4% compared with strategy without data arrangement, and by 18.4%, 15.2% compared respectively with WBVM and DVDS with code-length 64.
title PDA-LSTM: Knowledge-driven page data arrangement based on LSTM for LCM supression in QLC 3D NAND flash memories
topic Hardware Architecture
Machine Learning
url https://arxiv.org/abs/2511.00075