학술논문

Development of SiGe Indentation Process Control for Gate-All-Around FET Technology Enablement
Document Type
Periodical
Source
IEEE Transactions on Semiconductor Manufacturing IEEE Trans. Semicond. Manufact. Semiconductor Manufacturing, IEEE Transactions on. 35(3):412-417 Aug, 2022
Subject
Components, Circuits, Devices and Systems
Engineered Materials, Dielectrics and Plasmas
Radar measurements
Silicon germanium
Optical interferometry
Spaceborne radar
Logic gates
Monitoring
Optical scattering
Gate-all-around FET
machine learning
nanosheet
scatterometry
x-ray fluorescence
interferometry
Language
ISSN
0894-6507
1558-2345
Abstract
Methodologies for characterization of the lateral indentation of silicon-germanium (SiGe) nanosheets using different non-destructive and in-line compatible metrology techniques are presented and discussed. Gate-all-around nanosheet device structures with a total of three sacrificial SiGe sheets were fabricated and different etch process conditions used to induce indent depth variations. Scatterometry with spectral interferometry and x-ray fluorescence in conjunction with advanced interpretation and machine learning algorithms were used to quantify the SiGe indentation. Solutions for two approaches, average indent (represented by a single parameter) as well as sheet-specific indent, are presented. Both scatterometry with spectral interferometry as well as x-ray fluorescence measurements are suitable techniques to quantify the average indent through a single parameter. Furthermore, machine learning algorithms enable a fast solution path by combining x-ray fluorescence difference data with scatterometry spectra, therefore avoiding the need for a full optical model solution. A similar machine learning model approach can be employed for sheet-specific indent monitoring; however, reference data from cross-section transmission electron microscopy image analyses are required for training. It was found that scatterometry with spectral interferometry spectra and a traditional optical model in combination with advanced algorithms can achieve a very good match to sheet-specific reference data.