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Main Authors: Kim, Yongho, Zuyev, Alexander, Pellicano, Francesco, Zippo, Antonio
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.20931
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author Kim, Yongho
Zuyev, Alexander
Pellicano, Francesco
Zippo, Antonio
author_facet Kim, Yongho
Zuyev, Alexander
Pellicano, Francesco
Zippo, Antonio
contents We study the problem of learning the input-output map of a controlled vibrating plate with a composite structure from experimental measurements. Analytical modeling of this control system faces challenges due to the essential orthotropy and unknown damping characteristics of the material. Surrogate models based on linear regression, multilayer perceptrons, and gated recurrent units are constructed from the available sampled data. Through comparative analysis, we show that the multilayer perceptron model provides an acceptable approximation of this dynamical system, capturing the potentially nonlinear phenomena in its input-output behavior.
format Preprint
id arxiv_https___arxiv_org_abs_2603_20931
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Data-Driven Modeling of a Controlled Orthotropic Plate Using Machine Learning
Kim, Yongho
Zuyev, Alexander
Pellicano, Francesco
Zippo, Antonio
Optimization and Control
93B15, 68T05
We study the problem of learning the input-output map of a controlled vibrating plate with a composite structure from experimental measurements. Analytical modeling of this control system faces challenges due to the essential orthotropy and unknown damping characteristics of the material. Surrogate models based on linear regression, multilayer perceptrons, and gated recurrent units are constructed from the available sampled data. Through comparative analysis, we show that the multilayer perceptron model provides an acceptable approximation of this dynamical system, capturing the potentially nonlinear phenomena in its input-output behavior.
title Data-Driven Modeling of a Controlled Orthotropic Plate Using Machine Learning
topic Optimization and Control
93B15, 68T05
url https://arxiv.org/abs/2603.20931