ML-TCAD: Accelerating FeFET Reliability Analysis Using Machine Learning

Simon Thomann, Rodion Novkin, Jiajie Li, Yuting Hu, Jinjun Xiong, Hussam Amrouch

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

Physics-based simulations using technology computer aided design (TCAD) offer high accuracy while suffering from exceedingly slow computations and significant license costs (especially when high parallelism is inevitable for Monte Carlo analysis), rendering large-scale design-space explorations infeasible. Therefore, we employ machine learning (ML) algorithms, trained on accurate datasets produced by TCAD, in order to massively accelerate multidomain ferroelectric FET (FeFET) simulations and take TCAD out of our framework's loop. Part of this study explores approaches to predicting I-V characteristics using pure ML means or augmenting it with simple physics models. The huge speedup (13 600×) obtained through our ML-based modeling enabled unprecedented analysis of device-to-device and cycle-to-cycle variability for FeFET technology. Furthermore, we demonstrate how computationally infeasible analysis that would take years using TCAD (e.g., read disturbance pulses with 200 million time steps) became feasible for the first time.

Original languageEnglish
Pages (from-to)213-222
Number of pages10
JournalIEEE Transactions on Electron Devices
Volume71
Issue number1
DOIs
StatePublished - 1 Jan 2024

Keywords

  • Ferroelectric (FE)
  • ferroelectric FET (FeFET)
  • machine learning (ML)
  • multidomain
  • reliability
  • technology computer aided design (TCAD)
  • variation

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