The Significance of Latent Data Divergence in Predicting System Degradation
- URL: http://arxiv.org/abs/2406.12914v1
- Date: Thu, 13 Jun 2024 11:41:20 GMT
- Title: The Significance of Latent Data Divergence in Predicting System Degradation
- Authors: Miguel Fernandes, Catarina Silva, Alberto Cardoso, Bernardete Ribeiro,
- Abstract summary: Condition-Based Maintenance is pivotal in enabling the early detection of potential failures in engineering systems.
We introduce a novel methodology grounded in the analysis of statistical similarity within latent data from system components.
We infer the similarity between systems by evaluating the divergence of these priors, offering a nuanced understanding of individual system behaviors.
- Score: 1.2058600649065616
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Condition-Based Maintenance is pivotal in enabling the early detection of potential failures in engineering systems, where precise prediction of the Remaining Useful Life is essential for effective maintenance and operation. However, a predominant focus in the field centers on predicting the Remaining Useful Life using unprocessed or minimally processed data, frequently neglecting the intricate dynamics inherent in the dataset. In this work we introduce a novel methodology grounded in the analysis of statistical similarity within latent data from system components. Leveraging a specifically designed architecture based on a Vector Quantized Variational Autoencoder, we create a sequence of discrete vectors which is used to estimate system-specific priors. We infer the similarity between systems by evaluating the divergence of these priors, offering a nuanced understanding of individual system behaviors. The efficacy of our approach is demonstrated through experiments on the NASA commercial modular aero-propulsion system simulation (C-MAPSS) dataset. Our validation not only underscores the potential of our method in advancing the study of latent statistical divergence but also demonstrates its superiority over existing techniques.
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