VAE Deviation for Detecting Bearing Anomalies |
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| Yukio Hiranaka, Koichi Tsujino |
- Abstract:
- Anomaly of rotating machines are usually inferred from vibration measurements. However, it is not easy to determine the normal range for conventional crest factor or primary component analysis. In this paper, we try to use the Artificial Neural Network technique to make judgments based on the degree of deviation from the learned normal range. Specifically, we evaluated VAE which compresses the measured sensor data into the latent space of smaller number of dimensions with standard normal distributions. We propose an anomaly score which indicates the deviation from the center of the normal distribution using linear VAE calculation and dimensionality compensation. The proposed anomaly score shows good performance with several test data sets and measured real data sets.
- Keywords:
- Variational Auto-Encoder, Bearing Anomaly Detection, Anomaly Score, Latent Space
- Download:
- IMEKO-TC10-2020-024.pdf
- DOI:
- -
- Event details
- IMEKO TC:
- TC10
- Event name:
- TC10 Conference 2020 (ONLINE)
- Title:
17th IMEKO TC10 Conference "Global trends in Testing, Diagnostics & Inspection for 2030” (2nd Conference jointly organized by IMEKO and EUROLAB aisbl)
- Place:
- Dubrovnik, CROATIA
- Time:
- 20 October 2020 - 22 October 2020