2020 Fall Meeting

Presentation information

Oral presentation

IV. Nuclear Plant Technologies » 401-2 Operational Management, Inspection and Maintenance of Reactor

[2K01-05] Advancement of the Maintenance and Preservation Technology of the Plant 2

Thu. Sep 17, 2020 10:15 AM - 11:45 AM Room K (Zoom room 11)

Chair:fumihiko ishibashi(Toshiba ESS)

10:30 AM - 10:45 AM

[2K02] Development of Abnormal Sign Detection System using AI for Nuclear Power Plant

(4)Improvement of Detection Algorithm with Two-stage Autoencoder

*Susumu Naito1, Yasunori Taguchi1, Yuichi Kato1, Kouta Nakata1, Isaku Nagura2, Shinya Tominaga2, Ryota Miyake2, Toshio Aoki2 (1. TOSHIBA, 2. TOSHIBA ESS)

Keywords:plant performance monitoring, plant health monitoring, early detection of anomaly signs, machine learning, deep learning, autoencoder

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 new data-driven method to monitor many process values and to enable early detection of anomaly signs including unknown events with few false detections. We created a network configuration corresponding to the features of process values of a nuclear power plant. It is composed of two autoencoders. Each autoencoder learns signals of different characteristics to predict the normal state with high accuracy. We evaluated detection performances of this 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. The two-stage autoencoder clearly showed a good anomaly detection performance with zero false detections in the steady state and the transient state, under noisy conditions.