Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/29295
Title: Uncertainty quantification for impact location and force estimation in composite structures
Authors: Hami Seno, A
Ferri Aliabadi, MH
Keywords: composite materials;structural health monitoring;uncertainty quantification;Bayesian updating;kriging
Issue Date: 17-Jun-2021
Publisher: SAGE Publications
Citation: Hami Seno, A. and Ferri Aliabadi, M.H. (2022) 'Uncertainty quantification for impact location and force estimation in composite structures', Structural Health Monitoring, 21 (3), pp. 1061 - 1075. doi: 10.1177/14759217211020255.
Abstract: Structural health monitoring of impact location and severity using Lamb waves has been proven to be a reliable method under laboratory conditions. However, real-life operational and environmental conditions (vibration noise, temperature changes, different impact scenarios, etc.) and measurement errors are known to generate variation in Lamb wave features which may significantly affect the accuracy of these estimates. Therefore, these uncertainties should be considered, as a deterministic approach may lead to erroneous decisions. In this article, a novel data-driven stochastic Kriging-based method for impact location and maximum force estimation, that is able to reliably quantify the output uncertainty is presented. The method utilises a novel modification of the kriging technique (normally used for spatial interpolation of geostatistical data) for statistical pattern matching and uncertainty quantification using Lamb wave features to estimate the location and maximum force of impacts. The data was experimentally obtained from a composite panel equipped with piezoelectric sensors. Comparison with a deterministic benchmark method developed in prior studies shows that the proposed method gives a more reliable estimate for experimental impacts under various simulated environmental and operational conditions by estimating the uncertainty. The developed method highlights the suitability of data-driven methods for uncertainty quantification, by taking advantage of the relationship between data points in the reference database that is a mandatory component of these methods (and is often seen as a disadvantage). By quantifying the uncertainty, there is more information for operators to reliably locate impacts and estimate the severity, leading to robust maintenance decisions.
URI: https://bura.brunel.ac.uk/handle/2438/29295
DOI: https://doi.org/10.1177/14759217211020255
ISSN: 1475-9217
Other Identifiers: ORCiD: Aldyandra Hami Seno https://orcid.org/0000-0001-9945-5299
Appears in Collections:Brunel Composites Centre

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