Pelgrom-based predictive model to estimate metal grain granularity and line edge roughness in advanced multigate MOSFETs

Loading...
Thumbnail Image
Identifiers

Publication date

Advisors

Tutors

Editors

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE
Metrics
Google Scholar
lacobus
Export

Research Projects

Organizational Units

Journal Issue

Abstract

The impact of different variability sources on the transistor performance increases as devices are scaled-down, being the metal grain granularity (MGG) and the line edge roughness (LER) some of the major contributors to this increase. Variability studies require the simulation of large samples of different device configurations to have statistical significance, increasing the computational cost. A novel Pelgrom-based predictive (PBP) model that estimates the impact of MGG and LER through the study of the threshold voltage standard deviation (σ VT h), is proposed. This technique is computationally efficient since once the threshold voltage mismatch is calculated, σ V T h can be predicted for different gate lengths (Lg), cross-sections, and intrinsic variability parameters, without further simulations. The validity of the PBP model is demonstrated for three state-of-the-art architectures (FinFETs, nanowire FETs, and nanosheet FETs) with different Lg, cross-sections, and drain biases (VD). The relative errors between the predicted and simulated data are lower than 10%, in the 92% of the cases

Description

Bibliographic citation

J. G. Fernandez, N. Seoane, E. Comesaña and A. García-Loureiro, "Pelgrom-Based Predictive Model to Estimate Metal Grain Granularity and Line Edge Roughness in Advanced Multigate MOSFETs," in IEEE Journal of the Electron Devices Society, vol. 10, pp. 953-959, 2022, doi: 10.1109/JEDS.2022.3214928

Relation

Has part

Has version

Is based on

Is part of

Is referenced by

Is version of

Requires

Sponsors

This work was supported by the Spanish MICINN, Xunta de Galicia, and FEDER Funds under Grant RYC-2017-23312, Grant PID2019-104834GB-I00, Grant ED431F 2020/008, and Grant ED431C 2022/16

Rights

Attribution 4.0 International