材料科学
光电子学
异质结
晶体管
兴奋剂
阈下传导
MOSFET
薄脆饼
电气工程
电压
纳米技术
工程类
作者
Pranav Agarwal,Sankalp Rai,Rakshit Y. A,Varun Mishra
出处
期刊:Chinese Physics B
[IOP Publishing]
日期:2023-05-16
卷期号:32 (10): 107310-107310
被引量:2
标识
DOI:10.1088/1674-1056/acd5c0
摘要
Metal–oxide–semiconductor field-effect transistor (MOSFET) faces the major problem of being unable to achieve a subthreshold swing (SS) below 60 mV/dec. As device dimensions continue to reduce and the demand for high switching ratios for low power consumption increases, the tunnel field-effect transistor (TFET) appears to be a viable device, displaying promising characteristic as an answer to the shortcomings of the traditional MOSFET. So far, TFET designing has been a task of sacrificing higher ON state current for low subthreshold swing (and vice versa ), and a device that displays both while maintaining structural integrity and operational stability lies in the nascent stages of popular research. This work presents a comprehensive analysis of a heterojunction plasma doped gate-all-around TFET (HPD-GAA-TFET) by making a comparison between Mg 2 Si and Si which serve as source materials. Charge plasma technique is employed to implement doping in an intrinsic silicon wafer with the help of suitable electrodes. A low-energy bandgap material, i.e . magnesium silicide is incorporated as source material to form a heterojunction between source and silicon-based channel. A rigorous comparison of performance between Si-based GAA-TFET and HPD-GAA-TFET is conducted in terms of electrical, radio frequency (RF), linearity, and distortion parameters. It is observable that HPD-GAA-TFET outperforms conventional Si-based GAA-TFET with an ON-state current ( I ON ), subthreshold swing (SS), threshold voltage ( V th ), and current switching ratio being 0.377 mA, 12.660 mV/dec, 0.214 V, and 2.985 × 10 12 , respectively. Moreover, HPD-GAA-TFET holds faster switching and is more reliable than Si-based device. Therefore, HPD-GAA-TFET is suitable for low-power applications.
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