Classification of Micro-Damage in Piezoelectric Ceramics Using Machine Learning of Ultrasound Signals
Permanent lenke
https://hdl.handle.net/10037/16611Dato
2019-09-28Type
Journal articlePeer reviewed
Sammendrag
Ultrasound based structural health monitoring of piezoelectric material is challenging
if a damage changes at a microscale over time. Classifying geometrically similar damages with
a difference in diameter as small as 100 m is difficult using conventional sensing and signal analysis
approaches. Here, we use an unconventional ultrasound sensing approach that collects information
of the entire bulk of the material and investigate the applicability of machine learning approaches
for classifying such similar defects.
Our results show that appropriate feature design combined with simple k-nearest neighbor classifier can provide up to 98% classification accuracy even though conventional features for time-series data and a variety of classifiers cannot achieve close to 70% accuracy.
The newly proposed hybrid feature, which combines frequency domain information in the form of power spectral density and time domain information in the form of sign of slope change, is a suitable feature for achieving the best classification accuracy on this challenging problem.
Our results show that appropriate feature design combined with simple k-nearest neighbor classifier can provide up to 98% classification accuracy even though conventional features for time-series data and a variety of classifiers cannot achieve close to 70% accuracy.
The newly proposed hybrid feature, which combines frequency domain information in the form of power spectral density and time domain information in the form of sign of slope change, is a suitable feature for achieving the best classification accuracy on this challenging problem.
Beskrivelse
Published version, licensed CC BY-NC-ND 4.0. , available at: https://doi.org/10.3390/s19194216