Nuclear Engineering and Technology (Dec 2021)

Prediction of golden time for recovering SISs using deep fuzzy neural networks with rule-dropout

  • Hye Seon Jo,
  • Young Do Koo,
  • Ji Hun Park,
  • Sang Won Oh,
  • Chang-Hwoi Kim,
  • Man Gyun Na

Journal volume & issue
Vol. 53, no. 12
pp. 4014 – 4021

Abstract

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If safety injection systems (SISs) do not work in the event of a loss-of-coolant accident (LOCA), the accident can progress to a severe accident in which the reactor core is exposed and the reactor vessel fails. Therefore, it is considered that a technology that provides recoverable maximum time for SIS actuation is necessary to prevent this progression. In this study, the corresponding time was defined as the golden time. To achieve the objective of accurately predicting the golden time, the prediction was performed using the deep fuzzy neural network (DFNN) with rule-dropout. The DFNN with rule-dropout has an architecture in which many of the fuzzy neural networks (FNNs) are connected and is a method in which the fuzzy rule numbers, which are directly related to the number of nodes in the FNN that affect inference performance, are properly adjusted by a genetic algorithm. The golden time prediction performance of the DFNN model with rule-dropout was better than that of the support vector regression model. By using the prediction result through the proposed DFNN with rule-dropout, it is expected to prevent the aggravation of the accidents by providing the maximum remaining time for SIS recovery, which failed in the LOCA situation.

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