Artículo de revista
Structural damage assessment using linear approximation with maximum entropy and transmissibility data
Fecha
2015Registro en:
Mechanical Systems and Signal Processing 54-55 (2015) 210–223
0888-3270
doi: 10.1016/j.ymssp.2014.08.018
Autor
Meruane Naranjo, Viviana
Ortiz Bernardín, Alejandro
Institución
Resumen
Supervised learning algorithms have been proposed as a suitable alternative to model
updating methods in structural damage assessment, being Artificial Neural Networks the
most frequently used. Notwithstanding, the slow learning speed and the large number of
parameters that need to be tuned within the training stage have been a major bottleneck
in their application. This article presents a new algorithm for real-time damage assessment
that uses a linear approximation method in conjunction with antiresonant
frequencies that are identified from transmissibility functions. The linear approximation
is handled by a statistical inference model based on the maximum-entropy principle.
The merits of this new approach are twofold: training is avoided and data is processed in a
period of time that is comparable to the one of Neural Networks. The performance of the
proposed methodology is validated by considering three experimental structures: an
eight-degree-of-freedom (DOF) mass-spring system, a beam, and an exhaust system of a
car. To demonstrate the potential of the proposed algorithm over existing ones, the
obtained results are compared with those of a model updating method based on parallel
genetic algorithms and a multilayer feedforward neural network approach.