2019
DOI: 10.1016/j.ymssp.2019.03.045
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Damage detection in an uncertain nonlinear beam based on stochastic Volterra series: An experimental application

Abstract: Damage detection in an uncertain nonlinear beam based on stochastic Volterra series: an experimental application. Mechanical Systems and Signal Processing, Elsevier, 2019, 128, pp.obtained by the deterministic version of the Volterra series, showing the advantage of the stochastic model use when we consider the experimental data variation with the capability to detect the presence of the damage with statistical confidence. Besides, the nonlinear metric used presented a higher sensitivity to the occurrence of t… Show more

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Cited by 17 publications
(27 citation statements)
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“…The Monte Carlo method was chosen because it is easier to perform when the deterministic algorithm is known. 23,43 More information about the random Kautz functions and the process of the random Volterra kernels estimation may be found in Villani et al 36,38 Damage detection based on novelty detection…”
Section: The Damage Detection Methodology Based On Stochastic Volterrmentioning
confidence: 99%
See 3 more Smart Citations
“…The Monte Carlo method was chosen because it is easier to perform when the deterministic algorithm is known. 23,43 More information about the random Kautz functions and the process of the random Volterra kernels estimation may be found in Villani et al 36,38 Damage detection based on novelty detection…”
Section: The Damage Detection Methodology Based On Stochastic Volterrmentioning
confidence: 99%
“…A method based on a stochastic version of the Volterra series, with the use of the random kernel's coefficients and contributions as damage detection features, combined with a novelty detection technique, was applied to solve the problem. Unlike what has been shown in the previous works published, 36,38 the kernel coefficients and the kernel contributions approaches were applied together, considering a unique index to monitor the structural condition, aiming to augment the robustness of the method. Moreover, a theoretical distribution was introduced to the Mahalanobis distance computed in the reference condition to reduce the possible problems related to the use of the kernel density estimator previously assumed.…”
Section: Final Remarksmentioning
confidence: 99%
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“…In this work, the shaker amplifier's voltage signal is used as input data for training, verification, and validation of the GP-NARX model. This approach is considered as excitation once this signal is constant over a frequency range [42]. Also, to take into account the data fluctuation observed in Fig.…”
Section: Gp-narx Model Verification and Validationmentioning
confidence: 99%