11:05 AM - 11:20 AM
[2K04] Development of Evaluation Method of the Number of SG Tubes Broken using Gaussian Process Regression
Keywords:machine-learning, pressurized water reactor, steam generator tube rupture, numerical simulation
Using Gaussian process regression, we developed a machine learning method to automatically evaluate the number of broken tubes in the event of a steam generator tube rupture in a pressurized water reactor. We extracted feature values from changes in reactor coolant pressure. We focused on the feature values and predicted number of broken tubes in a numerical simulation by machine learning.