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Lee, Seung Jun
Nuclear Safety Assessment and Plant HMI Evolution Lab.
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RNN-based integrated system for real-time sensor fault detection and fault-informed accident diagnosis in nuclear power plant accidents

Author(s)
Choi, JeonghunLee, Seung Jun
Issued Date
2023-03
DOI
10.1016/j.net.2022.10.035
URI
https://scholarworks.unist.ac.kr/handle/201301/60167
Citation
NUCLEAR ENGINEERING AND TECHNOLOGY, v.55, no.3, pp.814 - 826
Abstract
Sensor faults in nuclear power plant instrumentation have the potential to spread negative effects from wrong signals that can cause an accident misdiagnosis by plant operators. To detect sensor faults and make accurate accident diagnoses, prior studies have developed a supervised learning-based sensor fault detection model and an accident diagnosis model with faulty sensor isolation. Even though the developed neural network models demonstrated satisfactory performance, their diagnosis performance should be reevaluated considering real-time connection. When operating in real-time, the diagnosis model is expected to indiscriminately accept fault data before receiving delayed fault information transferred from the previous fault detection model. The uncertainty of neural networks can also have a significant impact following the sensor fault features. In the present work, a pilot study was conducted to connect two models and observe actual outcomes from a real-time application with an integrated system. While the initial results showed an overall successful diagnosis, some issues were observed. To recover the diagnosis performance degradations, additive logics were applied to minimize the diagnosis failures that were not observed in the previous validations of the separate models. The results of a case study were then analyzed in terms of the real-time diagnosis outputs that plant operators would actually face in an emergency situation.
Publisher
한국원자력학회
ISSN
1738-5733
Keyword (Author)
Accident diagnosisFault-tolerant systemNuclear power plantsReal-time executionRecurrent neural networkSensor fault detection

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