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Recurrent neural network based on statistical recurrent unit for Remaining Useful Life estimation

A.R. de Miranda, T.M. Barbosa, A.G. Scolari Conceição, S. Gomes Soares Alcalá

8th Brazilian Conference on Intelligent Systems - BRACIS 2019, Salvador (Brasil). 15-18 octubre 2019


Resumen:

In industry, efficient predictive maintenance tools can reduce maintenance costs and increase the safety and reliability of the monitored equipment, since they can anticipate equipment failures. In particular, making the efficient Remaining Useful Life (RUL) estimation of machinery is important to lead to appropriate maintenance actions. Traditional RUL approaches depend on prior knowledge of the equipment degradation process to predict RUL. However, in most cases, the accurate physical or expert models are not available. Following that, this paper proposes a Recurrent Neural Network (RNN) model architecture based on Statistical Recurrent Unit (SRU) for RUL estimation. The proposed architecture is able to extract hidden partners from multivariate time series sensor data with multiple operation condition faults and degradation. SRU outperforms other complex deep learning methods, since it obtains a multitude of past viewpoints by linear combinations of few averages. The proposed model is compared to state-of-the-art RUL approaches. Experimental results, using a turbofan aero engine data set, reveal that the proposed architecture outperforms state-of-the-art RUL approaches in most tests.


DOI: DOI icon https://doi.org/10.1109/BRACIS.2019.00081

Publicado en BRACIS 2019, pp: 1-6, ISBN: 978-1-7281-4254-8

Fecha de publicación: 2019-12-05.



Cita:
A.R. de Miranda, T.M. Barbosa, A.G. Scolari Conceição, S. Gomes Soares Alcalá, Recurrent neural network based on statistical recurrent unit for Remaining Useful Life estimation, 8th Brazilian Conference on Intelligent Systems - BRACIS 2019, Salvador (Brasil). 15-18 octubre 2019. En: BRACIS 2019: Conference proceedings, ISBN: 978-1-7281-4254-8

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