A Damage Detection Approach for Axially Loaded Beam-like Structures Based on Gaussian Mixture Model

Sensors (Basel). 2022 Oct 30;22(21):8336. doi: 10.3390/s22218336.

Abstract

Axially loaded beam-like structures represent a challenging case study for unsupervised learning vibration-based damage detection. Under real environmental and operational conditions, changes in axial load cause changes in the characteristics of the dynamic response that are significantly greater than those due to damage at an early stage. In previous works, the authors proposed the adoption of a multivariate damage feature composed of eigenfrequencies of multiple vibration modes. Successful results were obtained by framing the problem of damage detection as that of unsupervised outlier detection, adopting the well-known Mahalanobis squared distance (MSD) to define an effective damage index. Starting from these promising results, a novel approach based on unsupervised learning data clustering is proposed in this work, which increases the sensitivity to damage and significantly reduces the uncertainty associated with the results, allowing for earlier damage detection. The novel approach, which is based on Gaussian mixture model, is compared with the benchmark one based on the MSD, under the effects of an uncontrolled environment and, most importantly, in the presence of real damage due to corrosion.

Keywords: beam-like structures; gaussian mixture model; mahalanobis squared distance; real damage; structural health monitoring; tie-rods; unsupervised data clustering; unsupervised learning.

MeSH terms

  • Algorithms*
  • Cluster Analysis
  • Normal Distribution

Grants and funding

The research presented in this paper has been funded by the Italian National Research Program, in a project named “Life-long optimized structural assessment and proactive maintenance with pervasive sensing techniques” PRIN 2017.