Artículo de revista
Capsule neural networks for structural damage localization and quantification using transmissibility data
Fecha
2020Registro en:
Applied Soft Computing Journal 97 (2020) 106732
10.1016/j.asoc.2020.106732
Autor
Figueroa Barraza, Joaquín
López Droguett, Enrique
Meruane Naranjo, Viviana
Ramos Martins, Marcelo
Institución
Resumen
One of the current challenges in structural health monitoring (SHM) is to take the most advantage
of large amounts of data to deliver accurate damage measurements and predictions. Deep Learning
methods tackle these problems by finding complex relations hidden in the data available. Amongst
these, Capsule Neural Networks (CapsNets) have recently been developed, achieving promising results
in benchmark Deep Learning problems. In this paper, Capsule Networks are expanded to locate and
to quantify structural damage. The proposed approach is evaluated in two case studies: a system
with springs and masses that simulate a structure, and a beam with different damage scenarios.
For both case studies, training and validation sets are created using Finite Element (FE) models and
calibrated with experimental data, which is also used for testing. The main contributions of this study
are: A novel CapsNets-based method for dual classification–regression task in SHM, analysis of both
routing algorithms (dynamic routing and Expectation–Maximization routing) in the context of SHM,
and analysis of generalization between FE models and real-life experiments. The results show that the
proposed Capsule Networks with dynamic routing achieve better results than Convolutional Neural
Networks (CNN), especially when it comes to false positive values.