Quantifying stress distribution in ultra-large graphene drums through mode shape imaging

Ali Sarafraz*, Hanqing Liu, Katarina Cvetanović, Marko Spasenović, Sten Vollebregt, Tomás Manzaneque Garcia, Peter G. Steeneken, Farbod Alijani, Gerard J. Verbiest*

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

Suspended drums made of 2D materials hold potential for sensing applications. However, the industrialization of these applications is hindered by significant device-to-device variations presumably caused by non-uniform stress distributions induced by the fabrication process. Here, we introduce a methodology to determine the stress distribution from their mechanical resonance frequencies and corresponding mode shapes as measured by a laser Doppler vibrometer (LDV). To avoid limitations posed by the optical resolution of the LDV, we leverage a manufacturing process to create ultra-large graphene drums with diameters of up to 1000 μm. We solve the inverse problem of a Föppl–von Kármán plate model by an iterative procedure to obtain the stress distribution within the drums from the experimental data. Our results show that the generally used uniform pre-tension assumption overestimates the pre-stress value, exceeding the averaged stress obtained by more than 47%. Moreover, it is found that the reconstructed stress distributions are bi-axial, which likely originates from the transfer process. The introduced methodology allows one to estimate the tension distribution in drum resonators from their mechanical response and thereby paves the way for linking the used fabrication processes to the resulting device performance.

Original languageEnglish
Article number45
Number of pages8
Journalnpj 2D Materials and Applications
Volume8
Issue number1
DOIs
Publication statusPublished - 2024

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