Acoustic emission-based damage pattern identification and residual
strength prediction of glass-fiber reinforced polymers
Abstract
In this paper, the damage mechanisms and residual strength prediction
models of unidirectional glass-fiber reinforced polymers are
investigated by acoustic emission(AE) technique. The material exhibits
three damage modes: matrix cracking, fiber fracture, and interface
damage. A novel AE descriptor, amplitude/centroid frequency (ACF), is
introduced to differentiate interface damage from other damage modes.
Moreover, three signal types exhibit a strong clustering effect when
correlated with ACF and average frequency. Microscopic damage mechanisms
of the samples are observed using scanning electron microscopy and
correlated with AE signals. The AE signals are analyzed using machine
learning, and the clustering analysis results are used as a training set
to obtain classification models using support vector machine (SVM) and
K-nearest neighbor (KNN) methods. Leveraging the traditional mechanical
regression analysis prediction model, the study achieves prediction of
the material’s residual strength post-fatigue through improvement in AE
cumulative counting. Additionally, optimization of prediction results
can be achieved by a certain kind of signal after clustering. The
combination of supervised learning and residual strength prediction
models can realize the real-time classification of AE signals and apply
them to the prediction of residual strength, which has a significant
application value in real-time monitoring.