DOES THE CURSE OF DIMENSIONALITY APPLY TO UNSUPERVISED SHM? INVESTIGATING THE TRADE-OFF BETWEEN LOSS OF INFORMATION AND GENERALIZABILITY TO UNSEEN STRUCTURAL CONDITIONS

Mohammad Hesam Soleimani-Babakamali, Ismini Lourentzou, R. Sarlo
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Abstract

The curse of dimensionality (CD) brings difficulties in pattern recognition problems, such as those found in structural health monitoring (SHM). Dimensionality reduction techniques (DR) make data more manageable by reducing noise and noninformative portions. There exists a trade-off between CD and the loss of information due to the application of DR. Even though in supervised SHM, DR techniques are shown to be effective, for unsupervised SHM, the trade-off must be assessed due to the unknown data population of novel classes. This study assesses the trade-off concerning a novel method working with a raw frequency-domain feature, the fast Fourier transform (FFT). Different DR techniques are applied to the initial FFT-based feature to assess the trade-off, and detection results are compared. The results indicate that the loss of information can have detrimental effects, such as lowering the detection accuracy by 60% for the autoencoder-based DR. The accuracy reduction is present for all different DR techniques applied in the study; however, regularization lessens the accuracy decrements. This phenomenon indicates the assumption that novelties show themselves in less-vary portions of the baseline condition to be not true.
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维度的诅咒适用于无监督的shm吗?研究信息丢失和对未知结构条件的可泛化性之间的权衡
在结构健康监测(SHM)等模式识别问题中,维数诅咒(CD)给模式识别带来了困难。降维技术(DR)通过减少噪声和非信息部分使数据更易于管理。尽管在有监督的SHM中,DR技术被证明是有效的,但对于无监督的SHM,由于新类别的未知数据群,必须评估这种权衡。本研究评估了一种处理原始频域特征的新方法的权衡,即快速傅里叶变换(FFT)。将不同的DR技术应用于初始的基于fft的特征来评估权衡,并比较检测结果。结果表明,信息丢失可能会产生不利影响,例如将基于自编码器的DR的检测精度降低60%。研究中应用的所有不同DR技术都存在精度降低;然而,正则化减少了精度的下降。这一现象表明,假设在基线条件的变化较小的部分显示自己的新颖性是不正确的。
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