Unsupervised Machine and Deep Learning Methods for Structural Damage
Detection: A Comparative Study
Abstract
While many structural damage detection methods have been developed in
recent decades, few data-driven methods in unsupervised learning mode
have been developed to solve the practical difficulties in data
acquisition for civil infrastructures in different scenarios. To address
such a challenge, this paper proposes a number of improved unsupervised
novelty detection methods and conducts extensive comparative studies on
a laboratory scale steel bridge to examine their performances of damage
detection. The key concept behind unsupervised novelty detection in this
paper is that only normal data from undamaged structural scenarios are
required to train statistical models with these methods. Then, these
trained models are used to identify abnormal testing data from damaged
scenarios. To detect structural damage in the form of loosening bolts in
the steel bridge, four machine-learning methods (i.e., K-nearest
neighbors method, Gaussian mixture models, One-class support vector
machines, Density peaks-based fast clustering method) and one deep
learning method using a deep auto-encoder are selected. Meanwhile, some
modifications and improvements are made to enable these methods to
detect structural damage in unsupervised novelty detection mode. In
their comparative studies, the advantages and disadvantages of these
methods are analyzed based on their results of structural damage
detection.