An inverse method for characterization of dynamic response of 2D structures under stochastic conditions

Xuefeng Li, Abdelmalek Zine,Mohamed Ichchou, Noureddine Bouhaddi,Pascal Fossat

CHINESE JOURNAL OF AERONAUTICS(2024)

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摘要
The reliable estimation of the wavenumber space (k -space) of the plates remains a longterm concern for acoustic modeling and structural dynamic behavior characterization. Most current analyses of wavenumber identification methods are based on the deterministic hypothesis. To this end, an inverse method is proposed for identifying wave propagation characteristics of twodimensional structures under stochastic conditions, such as wavenumber space, dispersion curves, and band gaps. The proposed method is developed based on an algebraic identification scheme in the polar coordinate system framework, thus named Algebraic K -Space Identification (AKSI) technique. Additionally, a model order estimation strategy and a wavenumber filter are proposed to ensure that AKSI is successfully applied. The main benefit of AKSI is that it is a reliable and fast method under four stochastic conditions: (A) High level of signal noise; (B) Small perturbation caused by uncertainties in measurement points' coordinates; (C) Non -periodic sampling; (D) Unknown structural periodicity. To validate the proposed method, we numerically benchmark AKSI and three other inverse methods to extract dispersion curves on three plates under stochastic conditions. One experiment is then performed on an isotropic steel plate. These investigations demonstrate that AKSI is a good in -situ k -space estimator under stochastic conditions. (c) 2024 Production and hosting by Elsevier Ltd. on behalf of Chinese Society of Aeronautics and Astronautics. This is an open access article under the CC BY license (http://creativecommons.org/licenses/ by/4.0/).
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关键词
Inverse method,Dispersion relation,Wavenumber space,Periodic plates,Stochastic conditions,Wave propagation characterization
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