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Artificial Neural Network based Modelling for Variational Effect on Double Metal Double Gate Negative Capacitance FET

Materials Science 2024-12-20 v1 Applied Physics

Abstract

In this work, we have implemented an accurate machine-learning approach for predicting various key analog and RF parameters of Negative Capacitance Field-Effect Transistors (NCFETs). Visual TCAD simulator and the Python high-level language were employed for the entire simulation process. However, the computational cost was found to be excessively high. The machine learning approach represents a novel method for predicting the effects of different sources on NCFETs while also reducing computational costs. The algorithm of an artificial neural network can effectively predict multi-input to single-output relationships and enhance existing techniques. The analog parameters of Double Metal Double Gate Negative Capacitance FETs (D2GNCFETs) are demonstrated across various temperatures (TT), oxide thicknesses (ToxT_{ox}), substrate thicknesses (TsubT_{sub}), and ferroelectric thicknesses (TFeT_{Fe}). Notably, at T=300KT=300K, the switching ratio is higher and the leakage current is 8484 times lower compared to T=500KT=500K. Similarly, at ferroelectric thicknesses TFe=4nmT_{Fe}=4nm, the switching ratio improves by 5.45.4 times compared to TFe=8nmT_{Fe}=8nm. Furthermore, at substrate thicknesses Tsub=3nmT_{sub}=3nm, switching ratio increases by 81%81\% from Tsub=7nmT_{sub}=7nm. For oxide thicknesses at Tox=0.8nmT_{ox}=0.8nm, the ratio increases by 41%41\% compared to Tox=0.4nmT_{ox}=0.4nm. The analysis reveals that TFe=4nmT_{Fe}=4nm, T=300KT=300K, Tox=0.8nmT_{ox}=0.8nm, and Tsub=3nmT_{sub}=3nm represent the optimal settings for D2GNCFETs, resulting in significantly improved performance. These findings can inform various applications in nanoelectronic devices and integrated circuit (IC) design.

Keywords

Cite

@article{arxiv.2412.14216,
  title  = {Artificial Neural Network based Modelling for Variational Effect on Double Metal Double Gate Negative Capacitance FET},
  author = {Yash Pathak and Laxman Prasad Goswami and Bansi Dhar Malhotra and Rishu Chaujar},
  journal= {arXiv preprint arXiv:2412.14216},
  year   = {2024}
}

Comments

7 pages, 8 figures

R2 v1 2026-06-28T20:41:03.890Z