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Machine learning-based proactive data retention error screening in 1Xnm TLC NAND flash

机译:1Xnm TLC NAND闪存中基于机器学习的主动数据保留错误筛选

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A screening method to proactively reduce data retention, as well as program disturb errors. Repeated program disturb (P.D.) measurement indicates that 25% of P.D. errors are concentrated in 3.5% of the memory cells, called PD-weak cells. PD-weak cells have 2.4× worse data retention (D.R.) than non-PD-weak cells, therefore D.R. errors are reduced by PD-weak cell screening. Proactive D.R. detection is a new capability, because conventional retention testing time is too long for chip testing. In 1Xnm TLC NAND flash, removal of PD-weak cells with <;2% overhead extends D.R. by 20%. The measurement method is described, and machine learning is applied to detect PD-weak cells. Detection rate vs. cost is also compared for 3 learning algorithms.
机译:一种主动减少数据保留以及程序干扰错误的筛选方法。重复的程序干扰(P.D.)测量表明P.D的25%错误集中在3.5%的存储单元(称为PD弱单元)中。与非PD弱的单元相比,PD弱的单元的数据保留(D.R.)差2.4倍,因此D.R. PD弱细胞筛选可减少错误。主动D.R.检测是一项新功能,因为传统的保留测试时间对于芯片测试来说太长了。在1Xnm TLC NAND闪存中,以小于等于2%的开销去除PD弱单元可扩展D.R.。减少20%描述了测量方法,并将机器学习应用于检测PD弱的细胞。还比较了3种学习算法的检测率与成本。

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