Damage detection in an uncertain nonlinear beam based on stochastic Volterra series
Luis Gustavo Giacon Villani, Samuel da Silva, Americo Cunha Jr

TL;DR
This paper introduces a stochastic Volterra series-based method for damage detection in nonlinear beams, effectively identifying cracks despite uncertainties and nonlinear behavior in the system.
Contribution
It proposes a novel stochastic Volterra series approach for damage detection in nonlinear systems with uncertainties, enhancing detection accuracy in complex conditions.
Findings
Effective crack detection with high confidence despite uncertainties.
High-order Volterra kernels improve damage identification in nonlinear regimes.
Method successfully distinguishes damage from nonlinear effects.
Abstract
The damage detection problem in mechanical systems, using vibration measurements, is commonly called Structural Health Monitoring (SHM). Many tools are able to detect damages by changes in the vibration pattern, mainly, when damages induce nonlinear behavior. However, a more difficult problem is to detect structural variation associated with damage, when the mechanical system has nonlinear behavior even in the reference condition. In these cases, more sophisticated methods are required to detect if the changes in the response are based on some structural variation or changes in the vibration regime, because both can generate nonlinearities. Among the many ways to solve this problem, the use of the Volterra series has several favorable points, because they are a generalization of the linear convolution, allowing the separation of linear and nonlinear contributions by input filtering…
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