Optimizing the Stability of FETs Based on Two-Dimensional Materials by Fermi Level Tuning
Theresia Knobloch, Burkay Uzlu, Yury Yu. Illarionov, Zhenxing Wang,, Martin Otto, Lado Filipovic, Michael Waltl, Daniel Neumaier, Max C. Lemme and, Tibor Grasser

TL;DR
This paper proposes a method to enhance the electrical stability of 2D material-based FETs by tuning the Fermi level to reduce charge trapping and hysteresis, thereby improving device reliability.
Contribution
It introduces a Fermi level tuning strategy to minimize charge trapping in 2D FETs, demonstrated with doped graphene layers on Al₂O₃, leading to reduced hysteresis and improved stability.
Findings
Fermi level tuning reduces hysteresis in 2D FETs.
Increasing Fermi-level distance from defect band improves reliability.
Experimental validation confirms theoretical predictions.
Abstract
Despite the enormous progress achieved during the past decade, nanoelectronic devices based on two-dimensional (2D) semiconductors still suffer from a limited electrical stability. This limited stability has been shown to result from the interaction of charge carriers originating from the 2D semiconductors with defects in the surrounding insulating materials. The resulting dynamically trapped charges are particularly relevant in field effect transistors (FETs) and can lead to a large hysteresis, which endangers stable circuit operation. Based on the notion that charge trapping is highly sensitive to the energetic alignment of the channel Fermi-level with the defect band in the insulator, we propose to optimize device stability by deliberately tuning the channel Fermi-level. Our approach aims to minimize the amount of electrically active border traps without modifying the total number of…
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Taxonomy
TopicsGraphene research and applications · Advancements in Semiconductor Devices and Circuit Design · Advanced Memory and Neural Computing
