Acoustic emission source localisation for structural health monitoring of rail sections based on a deep learning approach

被引:24
作者
Mahajan, Harsh [1 ]
Banerjee, Sauvik [1 ]
机构
[1] Indian Inst Technol, Dept Civil Engn, Mumbai 400076, India
关键词
non-destructive testing; acoustic emission; rail health monitoring; damage localisation; deep learning application; data-driven solution; SOURCE LOCATION; CRACK DETECTION; PROPAGATION;
D O I
10.1088/1361-6501/acb002
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
An acoustic emission (AE) approach for non-destructive evaluation of structures has been developed over the last two decades. In complex structures, one of the limitations of AE testing is to find the location of the AE source. Time of flight and wave velocity are typically employed to localise AE sources. However, complex rail structures generate multiple wave modes travelling at varying speeds, making localisation difficult. In this paper, the challenge of localisation has been split into two parts: (a) identification of the AE source zone, i.e. head, web or foot, and (b) identification of location along the length of the rail. AE events are simulated using a pencil lead break (PLB) as the source. Three models including an artificial neural network and 1D and 2D convolutional neural networks (CNNs) are trained and tested using AE signals generated by PLB sources. The accuracy of zone identification is reported as 94.79% when using the 2DCNN algorithm. For location classification it is also found that 2DCNN performed best with 73.12%, 79.37% and 67.50% accuracy of localising the AE source along the length in the head, web and foot, respectively. For AE signal generation from actual damage in a rail, a bending test on an inverted damaged rail section was then performed with loads of 100 kN, 150 kN and 200 kN. For all loads, the 2DCNN model resulted in accurate prediction of the zone of the AE source, and it accurately predicted the AE source location along the length for the loads of higher intensity (150 kN, 200 kN). It is envisaged that the deep learning approach presented in this research work will be helpful in developing a real-time monitoring system for rail inspection based on AE.
引用
收藏
页数:15
相关论文
共 36 条
  • [1] Lamb wave based automatic damage detection using matching pursuit and machine learning
    Agarwal, Sushant
    Mitra, Mira
    [J]. SMART MATERIALS AND STRUCTURES, 2014, 23 (08)
  • [2] Detection of impact on aircraft composite structure using machine learning techniques
    Ai, Li
    Soltangharaei, Vafa
    Bayat, Mahmoud
    Van Tooren, Michel
    Ziehl, Paul
    [J]. MEASUREMENT SCIENCE AND TECHNOLOGY, 2021, 32 (08)
  • [3] Acoustic emission source location in complex structures using full automatic delta T mapping technique
    Al-Jumaili, Safaa Kh.
    Pearson, Matthew R.
    Holford, Karen M.
    Eaton, Mark J.
    Pullin, Rhys
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2016, 72-73 : 513 - 524
  • [4] Barbosh M., 2022, J. Infrastruct. Preservation Resilience, V3, P6, DOI [10.1186/s43065-022-00051-8, DOI 10.1186/S43065-022-00051-8]
  • [5] Wavelet packet transform for detection of single events in acoustic emission signals
    Bianchi, Davide
    Mayrhofer, Erwin
    Groeschl, Martin
    Betz, Gerhard
    Vernes, Andras
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2015, 64-65 : 441 - 451
  • [6] Bollas K., 2010, J ACOUST EMISS, V28, P215
  • [7] An initial investigation on the potential applicability of Acoustic Emission to rail track fault detection
    Bruzelius, K
    Mba, D
    [J]. NDT & E INTERNATIONAL, 2004, 37 (07) : 507 - 516
  • [8] A new algorithm for acoustic emission localization and flexural group velocity determination in anisotropic structures
    Ciampa, F.
    Meo, M.
    [J]. COMPOSITES PART A-APPLIED SCIENCE AND MANUFACTURING, 2010, 41 (12) : 1777 - 1786
  • [9] Machine learning based crack mode classification from unlabeled acoustic emission waveform features
    Das, Avik Kumar
    Suthar, Deepak
    Leung, Christopher K. Y.
    [J]. CEMENT AND CONCRETE RESEARCH, 2019, 121 : 42 - 57
  • [10] A generalizable deep learning framework for localizing and characterizing acoustic emission sources in riveted metallic panels
    Ebrahimkhanlou, Arvin
    Dubuc, Brennan
    Salamone, Salvatore
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2019, 130 : 248 - 272