Mechanical Engineering Journal
Online ISSN : 2187-9745
ISSN-L : 2187-9745
Special Issue name: Nuclear Energy the Future Zero Carbon Power
Anomaly sign detection by monitoring thousands of process values using a two-stage autoencoder
Susumu NAITOYasunori TAGUCHIYuichi KATOKouta NAKATARyota MIYAKEIsaku NAGURAShinya TOMINAGAToshio AOKI
著者情報
ジャーナル オープンアクセス

2021 年 8 巻 4 号 p. 20-00534

詳細
抄録

In a large-scale plant such as a nuclear power plant, thousands of process values are measured for the purpose of monitoring the plant performance and the health of various systems. It is difficult for plant operators to constantly monitor all of the process values. We present a data-driven method to comprehensively monitor a large number of process values and detect early signs of anomalies, including unknown events, with few false positives. In order to learn the complex changing internal state of a nuclear power plant and accurately predict the normal process values, we created a two-stage autoencoder composed of a time window autoencoder and a deviation autoencoder, which is a deep learning network structure corresponding to the characteristics of the process values. We assessed performances of the two-stage autoencoder with simulated process values of a nuclear power plant, a 1,100 MW boiling water reactor having 3,100 analog process values. In situations where it is difficult to predict the normal state (rapid operation mode change, transient state, and small fluctuations in the process values), the two-stage autoencoder properly predicted the normal process values and showed excellent performances with early detection and zero false positives, except for one case. The two-stage autoencoder would be an effective solution for comprehensive plant monitoring and early detection of anomaly signs.

著者関連情報
© 2021 The Japan Society of Mechanical Engineers

This article is licensed under a Creative Commons [Attribution-NonCommercial-NoDerivatives 4.0 International] license.
https://creativecommons.org/licenses/by-nc-nd/4.0/
前の記事 次の記事
feedback
Top