In this paper, we propose a data-driven multiscale modeling framework for polysilicon micro electromechanical systems (MEMS). At the material level, the relevant features of the morphology of the polycrystalline structural film are learned by a (tiny) convolutional neural network, which is shown to be able to provide size-dependent solutions once trained in a proper way. At the device level, a multiple-input and mixed-data neural network-based model is adopted to also learn the effects of microfabrication defects on the performance indices of the entire device. With specific reference to a single-axis, resonant Lorentz force magnetometer, it is reported that the model is capable to efficiently estimate the expected scattering in its response, even for a characteristic size of the resonant structure not allowed for during the training process.

Deep Learning-based Multiscale Modelling of Polysilicon MEMS

Quesada-Molina, JP;Mariani, S
2022-01-01

Abstract

In this paper, we propose a data-driven multiscale modeling framework for polysilicon micro electromechanical systems (MEMS). At the material level, the relevant features of the morphology of the polycrystalline structural film are learned by a (tiny) convolutional neural network, which is shown to be able to provide size-dependent solutions once trained in a proper way. At the device level, a multiple-input and mixed-data neural network-based model is adopted to also learn the effects of microfabrication defects on the performance indices of the entire device. With specific reference to a single-axis, resonant Lorentz force magnetometer, it is reported that the model is capable to efficiently estimate the expected scattering in its response, even for a characteristic size of the resonant structure not allowed for during the training process.
2022
23rd International Conference on Thermal, Mechanical and Multi-Physics Simulation and Experiments in Microelectronics and Microsystems (EuroSimE)
978-1-6654-5836-8
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1233386
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