Machine-Learning Approach to Determine Surface Quality on a Reactor Pressure Vessel (RPV) Steel

被引:2
|
作者
Griffin, James M. [1 ]
Mathew, Jino [1 ]
Gasparics, Antal [2 ]
Vertesy, Gabor [2 ]
Uytdenhouwen, Inge [3 ]
Chaouadi, Rachid [3 ]
Fitzpatrick, Michael E. [1 ]
机构
[1] Coventry Univ, Future Transport & Cities Res Ctr, Coventry CV1 2TU, W Midlands, England
[2] Ctr Energy Res, H-1121 Budapest, Hungary
[3] Belgian Nucl Res Ctr, SCK CEN, Boeretang 200, B-2400 Mol, Belgium
来源
APPLIED SCIENCES-BASEL | 2022年 / 12卷 / 08期
关键词
electro-magnetic; Barkhausen Noise; MAT; surface quality; imputation; augmentation; CART; Neural Networks; BARKHAUSEN NOISE;
D O I
10.3390/app12083721
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Surface quality measures such as roughness, and especially its uncertain character, affect most magnetic non-destructive testing methods and limits their performance in terms of an achievable signal-to-noise ratio and reliability. This paper is primarily focused on an experimental study targeting nuclear reactor materials manufactured from the milling process with various machining parameters to produce varying surface quality conditions to mimic the varying material surface qualities of in-field conditions. From energising a local area electromagnetically, a receiver coil is used to obtain the emitted Barkhausen noise, from which the condition of the material surface can be inspected. Investigations were carried out with the support of machine-learning algorithms, such as Neural Networks (NN) and Classification and Regression Trees (CART), to identify the differences in surface quality. Another challenge often faced is undertaking an analysis with limited experimental data. Other non-destructive methods such as Magnetic Adaptive Testing (MAT) were used to provide data imputation for missing data using other intelligent algorithms. For data reinforcement, data augmentation was used. With more data the problem of 'the curse of data dimensionality' is addressed. It demonstrated how both data imputation and augmentation can improve measurement datasets.
引用
收藏
页数:23
相关论文
共 50 条
  • [21] Theory Identity: A Machine-Learning Approach
    Larsen, Kai R.
    Hovorka, Dirk
    West, Jevin
    Birt, James
    Pfaff, James R.
    Chambers, Trevor W.
    Sampedro, Zebula R.
    Zager, Nick
    Vanstone, Bruce
    2014 47TH HAWAII INTERNATIONAL CONFERENCE ON SYSTEM SCIENCES (HICSS), 2014, : 4639 - 4648
  • [22] Groundwater quality prediction and risk assessment in Kerala, India: A machine-learning approach
    Aju, C. D.
    Achu, A. L.
    Mohammed, Maharoof P.
    Raicy, M. C.
    Gopinath, Girish
    Reghunath, Rajesh
    JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2024, 370
  • [23] POSTIRRADIATION ANNEALING OF REACTOR PRESSURE-VESSEL STEEL
    SERPAN, CZ
    REPORT OF NRL PROGRESS, 1973, (JUN): : 37 - 38
  • [24] An evolution of understanding of reactor pressure vessel steel embrittlement
    Lucas, G. E.
    JOURNAL OF NUCLEAR MATERIALS, 2010, 407 (01) : 59 - 69
  • [25] The fatigue behavior of irradiated Reactor Pressure Vessel steel
    Zhong, W.
    Tong, Z.
    Ning, G.
    Zhang, C.
    Lin, H.
    Yang, W.
    ENGINEERING FAILURE ANALYSIS, 2017, 82 : 840 - 847
  • [26] IRRADIATION-EMBRITTLEMENT OF REACTOR PRESSURE VESSEL STEEL
    Li, Guoyun
    Wu, Yukun
    Jiang, Guofu
    Huang, Juan
    Zhang, Haisheng
    PROCEEDINGS OF THE 18TH INTERNATIONAL CONFERENCE ON NUCLEAR ENGINEERING 2010, VOL 5, 2011, : 93 - 96
  • [27] Characterization of Reactor Pressure Vessel Steel by ABI Testing
    Hausild, Petr
    Siegl, Jan
    Materna, Ales
    Kytka, Milos
    Kopriva, Radim
    6TH NEW METHODS OF DAMAGE AND FAILURE ANALYSIS OF STRUCTURAL PARTS, 2016, 12 : 7 - 11
  • [28] Russian approach to reactor pressure vessel integrity
    Dragunov, Y.
    Biryukov, G.I.
    Dragunov, Y.G.
    Ivanov, A.N.
    Maximov, Y.M.
    Fil, N.S.
    Welding Research Council Bulletin, 1993, (386): : 39 - 48
  • [29] Machine-Learning Classification of Pulse Waveform Quality
    Ouyoung, Te
    Weng, Wan-Ling
    Hu, Ting-Yu
    Lee, Chia-Chien
    Wu, Li-Wei
    Hsiu, Hsin
    SENSORS, 2022, 22 (22)
  • [30] How can machine-learning methods assist in virtual screening for hyperuricemia? A healthcare machine-learning approach
    Ichikawa, Daisuke
    Saito, Toki
    Ujita, Waka
    Oyama, Hiroshi
    JOURNAL OF BIOMEDICAL INFORMATICS, 2016, 64 : 20 - 24