One-shot learning for the complex dynamical behaviors of weakly nonlinear forced oscillators
Teng Ma, Luca Rosafalco, Wei Cui, Lin Zhao, Attilio Frangi
TLDR
This paper introduces MEv-SINDy, a one-shot learning method that identifies global frequency-response curves of nonlinear oscillators from a single data point.
Key contributions
- Introduces MEv-SINDy, a one-shot learning method for complex nonlinear dynamics.
- Infers governing equations for non-autonomous, multi-frequency systems from single data.
- Leverages Generalized Harmonic Balance (GHB) to decompose complex forced responses.
- Validated on MEMS, accurately predicting softening/hardening and jump phenomena.
Why it matters
Extrapolative prediction of complex nonlinear dynamics is a central challenge in engineering. This method significantly reduces data acquisition for characterizing and designing nonlinear microsystems, enabling more efficient engineering processes.
Original Abstract
Extrapolative prediction of complex nonlinear dynamics remains a central challenge in engineering. This study proposes a one-shot learning method to identify global frequency-response curves from a single excitation time history by learning governing equations. We introduce MEv-SINDy (Multi-frequency Evolutionary Sparse Identification of Nonlinear Dynamics) to infer the governing equations of non-autonomous and multi-frequency systems. The methodology leverages the Generalized Harmonic Balance (GHB) method to decompose complex forced responses into a set of slow-varying evolution equations. We validated the capabilities of MEv-SINDy on two critical Micro-Electro-Mechanical Systems (MEMS). These applications include a nonlinear beam resonator and a MEMS micromirror. Our results show that the model trained on a single point accurately predicts softening/hardening effects and jump phenomena across a wide range of excitation levels. This approach significantly reduces the data acquisition burden for the characterization and design of nonlinear microsystems.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.