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Classification of ultrasonic signals of thermally aged cast austenitic stainless steel (CASS) using machine learning (ML) models

  • Kim, Jin-Gyum (Korea Institute of Nuclear Safety) ;
  • Jang, Changheui (Department of Nuclear and Quantum Engineering, Korea Advanced Institute of Science and Technology) ;
  • Kang, Sung-Sik (Korea Institute of Nuclear Safety)
  • Received : 2021.07.08
  • Accepted : 2021.09.29
  • Published : 2022.04.25

Abstract

Cast austenitic stainless steels (CASSs) are widely used as structural materials in the nuclear industry. The main drawback of CASSs is the reduction in fracture toughness due to long-term exposure to operating environment. Even though ultrasonic non-destructive testing has been conducted in major nuclear components and pipes, the detection of cracks is difficult due to the scattering and attenuation of ultrasonic waves by the coarse grains and the inhomogeneity of CASS materials. In this study, the ultrasonic signals measured in thermally aged CASS were discriminated for the first time with the simple ultrasonic technique (UT) and machine learning (ML) models. Several different ML models, specifically the K-nearest neighbors (KNN), Support Vector Machine (SVM), and Multi-Layer Perceptron (MLP) models, were used to classify the ultrasonic signals as thermal aging condition of CASS specimens. We identified that the ML models can predict the category of ultrasonic signals effectively according to the aging condition.

Keywords

Acknowledgement

This study was supported by the Korea Foundation of Nuclear Safety (KoFONS) using financial resources granted by the Nuclear Safety and Security Commission (NSSC) of the Republic of Korea. (No. 2106001). The thermally aged CASS specimens were provided by the PNNL as a part of an international collaborative R&D project of PIONIC. We wish to thank Dr. Jongbeom Kim, Dr. Kyung-Mo Kim (Korea Atomic Energy Research Institute, KR) who helped us in providing the ultrasonic equipment. Also, we would like to acknowledge Dr. Thak Sang Byun (Oak Ridge National Laboratory, US) who helped us in providing the information of specimens.

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