학술논문

Monte Carlo Simulator for Threshold Voltage Distribution of 3-D nand Flash Memory Using Machine Learning
Document Type
Periodical
Source
IEEE Transactions on Electron Devices IEEE Trans. Electron Devices Electron Devices, IEEE Transactions on. 71(1):542-546 Jan, 2024
Subject
Components, Circuits, Devices and Systems
Engineered Materials, Dielectrics and Plasmas
Training
Machine learning
Flash memories
Computational modeling
Data models
Predictive models
Monte Carlo methods
3-D NAND flash memory
incremental step pulse program (ISPP)
machine learning
Monte Carlo simulation
neural network
Vₜ distribution
Language
ISSN
0018-9383
1557-9646
Abstract
In this article, we propose a machine learning model-based simulator and method for predicting the threshold voltage ( ${V}_{\text {t}}$ ) distribution of 3-D NAND flash memory. The proposed machine learning modeling method aims to predict each incremental step pulse program (ISPP) slope after ensuring the model’s accuracy through training and test using only a small subset of the data from numerous devices that require prediction. As a result of model verification during the test phase of this model after training, the maximum error rate was 2.82%, confirming that high accuracy for prediction was achieved. Using the verified machine learning model, Monte Carlo simulations of random strings are performed, taking into account the factors that influence the formation of the ${V}_{\text {t}}$ distribution. The completed simulator demonstrates the ability to predict ${V}_{\text {t}}$ distribution in various environments, such as quad-level cell (QLC) and penta-level cell (PLC) operations.