Actuators (Jul 2023)

Modelling the Periodic Response of Micro-Electromechanical Systems through Deep Learning-Based Approaches

  • Giorgio Gobat,
  • Alessia Baronchelli,
  • Stefania Fresca,
  • Attilio Frangi

DOI
https://doi.org/10.3390/act12070278
Journal volume & issue
Vol. 12, no. 7
p. 278

Abstract

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We propose a deep learning-based reduced order modelling approach for micro- electromechanical systems. The method allows treating parametrised, fully coupled electromechanical problems in a non-intrusive way and provides solutions across the whole device domain almost in real time, making it suitable for design optimisation and control purposes. The proposed technique specifically addresses the steady-state response, thus strongly reducing the computational burden associated with the neural network training stage and generating deep learning models with fewer parameters than similar architectures considering generic time-dependent problems. The approach is validated on a disk resonating gyroscope exhibiting auto-parametric resonance.

Keywords