人工智能
降维
计算机科学
无监督学习
特征学习
模式识别(心理学)
特征(语言学)
机器学习
卷积神经网络
主成分分析
结构健康监测
小波变换
分层(地质)
特征向量
维数之咒
特征工程
小波
深度学习
工程类
古生物学
哲学
语言学
俯冲
结构工程
生物
构造学
作者
Mahindra Rautela,J. Senthilnath,Ernesto Monaco,S. Gopalakrishnan
标识
DOI:10.1016/j.compstruct.2022.115579
摘要
With the introduction of damage tolerance-based design philosophies, the demand for reliable and robust structural health monitoring (SHM) procedures for aerospace composite structures is increasing rapidly. The performance of supervised learning algorithms for SHM depends on the amount of labeled and balanced datasets. Apart from this, collecting datasets accommodating all possible damage scenarios is cumbersome, costly, and inaccessible for aerospace applications. In this paper, we have proposed two different unsupervised-feature learning approaches where the algorithms are trained only on the baseline scenarios to learn the distribution of baseline signals. The trained unsupervised feature learner is used for delamination prediction with an anomaly detection philosophy. In the first approach, we have combined dimensionality reduction techniques (principal component analysis and independent component analysis) with a one-class support vector machine. In another approach, we have utilized deep learning-based deep convolutional autoencoders (CAE). These state-of-the-art algorithms are applied on three different guided wave-based experimental datasets. The raw guided wave signals present in the datasets are converted into wavelet-enhanced higher-order representations for training unsupervised feature-learning algorithms. We have also compared different techniques, and it is seen that CAE generates better reconstructions with lower mean squared error and can provide higher accuracy on all the datasets.
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