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Autori principali: López, Cristian, Herzlieb, Jackson E., Moore, Keegan J.
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2508.00931
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author López, Cristian
Herzlieb, Jackson E.
Moore, Keegan J.
author_facet López, Cristian
Herzlieb, Jackson E.
Moore, Keegan J.
contents The recently proposed System Identification via Validation and Adaptation (SIVA) method allows system identification, uncertainty quantification, and model validation directly from data. Inspired by generative modeling, SIVA employs a neural network that converts random noise to physically meaningful parameters. The known equation of motion utilizes these parameters to generate fake accelerations, which are compared to real training data using a mean square error loss. For concurrent parameter validation, independent datasets are passed through the model, and the resulting signals are classified as real or fake by a discriminator network, which guides the parameter-generator network. In this work, we apply SIVA to simulated vibration data from a cantilever beam that contains a lumped mass and a nonlinear end attachment, demonstrating accurate parameter estimation and model updating on complex, highly nonlinear systems.
format Preprint
id arxiv_https___arxiv_org_abs_2508_00931
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle System Identification via Validation and Adaptation for Model Updating Applied to a Nonlinear Cantilever Beam
López, Cristian
Herzlieb, Jackson E.
Moore, Keegan J.
Systems and Control
The recently proposed System Identification via Validation and Adaptation (SIVA) method allows system identification, uncertainty quantification, and model validation directly from data. Inspired by generative modeling, SIVA employs a neural network that converts random noise to physically meaningful parameters. The known equation of motion utilizes these parameters to generate fake accelerations, which are compared to real training data using a mean square error loss. For concurrent parameter validation, independent datasets are passed through the model, and the resulting signals are classified as real or fake by a discriminator network, which guides the parameter-generator network. In this work, we apply SIVA to simulated vibration data from a cantilever beam that contains a lumped mass and a nonlinear end attachment, demonstrating accurate parameter estimation and model updating on complex, highly nonlinear systems.
title System Identification via Validation and Adaptation for Model Updating Applied to a Nonlinear Cantilever Beam
topic Systems and Control
url https://arxiv.org/abs/2508.00931