Guided wave structural health monitoring uses
sparse sensor networks embedded in sophisticated structures for
defect detection and characterization. The biggest challenge of
those sensor networks is developing robust techniques for reliable
damage detection under changing environmental and operating
conditions. To address this challenge, we develop a novelty
classifier for damage detection based on one class support vector
machines. We identify appropriate features for damage detection
and introduce a feature aggregation method which quadratically
increases the number of available training observations.We adopt
a two-level voting scheme by using an ensemble of classifiers and
predictions. Each classifier is trained on a different segment of
the guided wave signal, and each classifier makes an ensemble of
predictions based on a single observation. Using this approach,
the classifier can be trained using a small number of baseline
signals. We study the performance using monte-carlo simulations
of an analytical model and data from impact damage experiments
on a glass fiber composite plate.We also demonstrate the classifier
performance using two types of baseline signals: fixed and rolling
baseline training set. The former requires prior knowledge of
baseline signals from all environmental and operating conditions,
while the latter does not and leverages the fact that environmental
and operating conditions vary slowly over time and can be
modeled as a Gaussian process.
Revised: February 19, 2018 |
Published: January 1, 2018
Citation
Dib G., O. Karpenko, E. Koricho, A. Khomenko, M. Haq, and L. Udpa. 2018.Ensembles of Novelty Detection Classifiers for Structural Health Monitoring using Guided Waves.Smart Materials and Structures 27, no. 1:Art. No. 015003.PNNL-SA-129076.doi:10.1088/1361-665X/aa973f