Deep learning-guided prediction of mechanical properties in membrane resonators
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Date
2024-10-16
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Abstract
Micro/Nano-electro-mechanical-systems (MEMS/NEMS) are often hailed as disruptive
technologies, enabling highly precise measurements across a wide range of applications. In
this project we focus on resonator-type MEMS, which can be fabricated from micrometersized
membranes, with relative ease and cost-effective manufacturing processes. However,
determining optimal design parameters remains a significant challenge.
This thesis explores the potential of various machine learning (ML) models—such as feedforward
neural networks, convolutional networks, transformers and tree-based models—for
predicting key properties of mechanical resonators, i.e. eigenfrequencies, quality factors
and buckling behaviours. While finite element method-simulations (FEM) are the standard
approach in this context, our study shows that ML can yield comparable results at
a fraction of the computational cost.
We examine a series of model systems, from simple beam structures to membranes with
various hole types and configurations. Our approach is data-driven, and to generate training
data for ML we use COMSOL Multiphysics.
For high precision results, we utilise transfer learning, leveraging features from models
trained on entirely different domains. This enables us to successfully perform regression of
quality factors and eigenfrequencies, where in particular lower eigenmodes exhibit small
relative errors and standard deviations. We further demonstrate that neural networkbased
models can predict buckling in membranes with exceptional precision.
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Keywords
MEMS, resonator, membrane, buckling, machine learning, deep learning, transfer learning, regression, classification