Paper
6 May 2024 Binary variational autoencoder for perceptual vibration hashing
Xiaoguang Li, Fajia Li, Haining Liu, Jingjing Yu, Weixin Wang, Shihu Zhao
Author Affiliations +
Proceedings Volume 13107, Fourth International Conference on Sensors and Information Technology (ICSI 2024); 131071W (2024) https://doi.org/10.1117/12.3029149
Event: Fourth International Conference on Sensors and Information Technology (ICSI 2024), 2024, Xiamen, China
Abstract
Machine learning methods can automatically extract inherent structural features in data, thus widely used for vibration feature extraction. However, it is very challenging to make a balance between generalizability and diagnostic accuracy on the extracted features. The variational autoencoder describes the observations in the latent space in a probabilistic way, so that the extracted latent space features have a good generalization ability. This paper develops the Binary Variational Autoencoder (BVAE), dedicated to describing the machine condition information carried by the vibration signals in a probabilistic way. The BVAE maps vibration signals into a latent space to extract machine condition information and binarizes them, resulting in a compact machine condition hash (MCH). The effectiveness of the developed method was verified using the Case Western Reserve University bearing data set. The results show that the machine conditional hash extracted by the BVAE can balance low dimensionality and high discriminability, achieving a diagnostic accuracy over 99%.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Xiaoguang Li, Fajia Li, Haining Liu, Jingjing Yu, Weixin Wang, and Shihu Zhao "Binary variational autoencoder for perceptual vibration hashing", Proc. SPIE 13107, Fourth International Conference on Sensors and Information Technology (ICSI 2024), 131071W (6 May 2024); https://doi.org/10.1117/12.3029149
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KEYWORDS
Vibration

Feature extraction

Binary data

Deep learning

Diagnostics

Machine learning

Signal processing

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