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Deep Transfer Learning-based Detection for Flash Memory Channels

Information Theory 2024-10-10 v1 Signal Processing math.IT

Abstract

The NAND flash memory channel is corrupted by different types of noises, such as the data retention noise and the wear-out noise, which lead to unknown channel offset and make the flash memory channel non-stationary. In the literature, machine learning-based methods have been proposed for data detection for flash memory channels. However, these methods require a large number of training samples and labels to achieve a satisfactory performance, which is costly. Furthermore, with a large unknown channel offset, it may be impossible to obtain enough correct labels. In this paper, we reformulate the data detection for the flash memory channel as a transfer learning (TL) problem. We then propose a model-based deep TL (DTL) algorithm for flash memory channel detection. It can effectively reduce the training data size from 10610^6 samples to less than 104 samples. Moreover, we propose an unsupervised domain adaptation (UDA)-based DTL algorithm using moment alignment, which can detect data without any labels. Hence, it is suitable for scenarios where the decoding of error-correcting code fails and no labels can be obtained. Finally, a UDA-based threshold detector is proposed to eliminate the need for a neural network. Both the channel raw error rate analysis and simulation results demonstrate that the proposed DTL-based detection schemes can achieve near-optimal bit error rate (BER) performance with much less training data and/or without using any labels.

Keywords

Cite

@article{arxiv.2410.05618,
  title  = {Deep Transfer Learning-based Detection for Flash Memory Channels},
  author = {Zhen Mei and Kui Cai and Long Shi and Jun Li and Li Chen and Kees A. Schouhamer Immink},
  journal= {arXiv preprint arXiv:2410.05618},
  year   = {2024}
}

Comments

This paper has been accepted for publication in IEEE Transactions on Communications

R2 v1 2026-06-28T19:12:20.795Z