计算机科学
偏移量(计算机科学)
解码方法
频道(广播)
人工智能
闪存
闪光灯(摄影)
学习迁移
噪音(视频)
人工神经网络
错误检测和纠正
算法
语音识别
计算机硬件
电信
艺术
图像(数学)
视觉艺术
程序设计语言
作者
Zhen Mei,Kui Cai,Long Shi,Jun Li,Li Chen,Kees A. Schouhamer Immink
标识
DOI:10.1109/tcomm.2024.3357616
摘要
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 10 6 samples to less than 10 4 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.
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