3D NAND快闪记忆体的错误产生

Weihua Liu, Fei Wu, Songmiao Meng, Xiang Chen, Changsheng Xie
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引用次数: 3

摘要

三维(3D) NAND闪存因其高容量比和高成本而成为固态硬盘(SSD)的首选存储组件。优化现代SSD的可靠性需要测试和收集大量来自3D NAND闪存的真实错误数据。然而,随着容量的增加,测试成本飙升了数十倍。降低测试高密度高容量闪存的成本势在必行。为了促进这一点,在本文中,我们的目标是能够有效地再现3D NAND闪存的错误数据。我们使用条件生成对抗网络(cGAN)来学习多干扰下的误差分布,并生成与现实世界相当的多种误差数据。评估结果表明,用cGAN进行误差生成是可行和有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Error Generation for 3D NAND Flash Memory
Three-dimension (3D) NAND flash memory is the preferred storage component of solid-state drive (SSD) for its high ratio of capacity and cost. Optimizing the reliability of modern SSD needs to test and collect a large amount of real-world error data from 3D NAND flash memory. However, the test costs have surged dozens of times as its capacity increases. It's imperative to reduce the costs of testing denser and high-capacity flash memory. To facilitate it, in this paper, we aim to enable reproducing error data efficiently for 3D NAND flash memory. We use a conditional generative adversarial network (cGAN) to learn the error distribution with multiple interferences and generate diverse error data comparable to the real-world. Evaluation results demonstrate it is feasible and efficient for error generation with cGAN.
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