Artificial Intelligence-Enabled Crack Length Estimation From Acoustic Emission Signal Signatures

被引:2
|
作者
Ennis, Shane [1 ]
Giurgiutiu, Victor [1 ]
机构
[1] Univ South Carolina, Dept Mech Engn, Columbia, SC 29208 USA
来源
JOURNAL OF NONDESTRUCTIVE EVALUATION, DIAGNOSTICS AND PROGNOSTICS OF ENGINEERING SYSTEMS | 2024年 / 7卷 / 01期
关键词
acoustic emission; damage classification; diagnostic feature extraction; elastic wave; prognosis; sensors; ultrasonics; CLASSIFICATION; GROWTH; STEEL;
D O I
10.1115/1.4064011
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This article addresses the classification of fatigue crack length using artificial intelligence (AI) applied to acoustic emission (AE) signals. The AE signals were collected during fatigue testing of two specimen types. One specimen type had a 1-mm hole for crack initiation. The other specimen type had a 150-mu m wide slit of various lengths. Fatigue testing was performed under stress intensity factor control to moderate crack advancement. The slit specimen produced AE signals only from crack advancement at the slit tips, whereas the 1-mm hole specimens produced AE signals from both crack tip advancement and crack rubbing or clapping. The AE signals were captured with a piezoelectric wafer active sensor (PWAS) array connected to MISTRAS instrumentation and aewin software. The collected AE signals were preprocessed using time-of-flight filtering and denoising. Choi Williams transform converted time domain AE signals into spectrograms. To apply machine learning, the spectrogram images were used as input data for the training, validation, and testing of a GoogLeNet convolutional neural network (CNN). The CNN was trained to sort the AE signals into crack length classes. CNN performance enhancements, including synthetic data generation and class balancing, were developed. A three-class example with crack lengths of (i) 10-12 mm, (ii) 12-14 mm, and (iii) 14-16 mm is provided. Our AI approach was able to classify the AE signals into these three classes with 91% accuracy, thus proving that the AE signals contain sufficient information for crack estimation using an AI-enabled approach.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Artificial Intelligence-Enabled Acoustic Analysis Technology for Accurate Detection and Interpretation of Breath Sounds in Children
    Cheng, Z. R.
    Zhang, H. Y.
    Thomas, B.
    Tan, Y. H.
    Teoh, O. H.
    Pugalenthi, A.
    PEDIATRIC PULMONOLOGY, 2019, 54 : S79 - S80
  • [22] BreastGAN: Artificial Intelligence-Enabled Breast Augmentation Simulation
    Chartier, Christian
    Watt, Ayden
    Lin, Owen
    Chandawarkar, Akash
    Lee, James
    Hall-Findlay, Elizabeth
    AESTHETIC SURGERY JOURNAL OPEN FORUM, 2022, 4
  • [23] Ethics and discrimination in artificial intelligence-enabled recruitment practices
    Zhisheng Chen
    Humanities and Social Sciences Communications, 10
  • [24] Ethics and discrimination in artificial intelligence-enabled recruitment practices
    Chen, Zhisheng
    HUMANITIES & SOCIAL SCIENCES COMMUNICATIONS, 2023, 10 (01):
  • [25] Privacy Preservation in Artificial Intelligence-Enabled Healthcare Analytics
    Li, Shancang
    Iqbal, Muddesar
    Bashir, Ali Kashif
    Wang, Xinheng
    HUMAN-CENTRIC COMPUTING AND INFORMATION SCIENCES, 2025, 15
  • [26] Artificial Intelligence Methods and Artificial Intelligence-Enabled Metrics for Surgical Education: A Multidisciplinary Consensus
    Vedula, S. Swaroop
    Ghazi, Ahmed
    Collins, Justin W.
    Pugh, Carla
    Stefanidis, Dimitrios
    Meireles, Ozanan
    Hung, Andrew J.
    Schwaitzberg, Steven
    Levy, Jeffrey S.
    Sachdeva, Ajit K.
    JOURNAL OF THE AMERICAN COLLEGE OF SURGEONS, 2022, 234 (06) : 1181 - 1192
  • [27] Artificial intelligence-enabled electrocardiogram for mortality and cardiovascular risk estimation: a model development and validation study
    Sau, Arunashis
    Pastika, Libor
    Sieliwonczyk, Ewa
    Patlatzoglou, Konstantinos
    Ribeiro, Antonio H.
    Mcgurk, Kathryn A.
    Zeidaabadi, Boroumand
    Zhang, Henry
    Macierzanka, Krzysztof
    Mandic, Danilo
    Sabino, Ester
    Giatti, Luana
    Barreto, Sandhi M.
    Camelo, Lidyane do Valle
    Tzoulaki, Joanna
    O'Regan, Declan P.
    Peters, Nicholas S.
    Ware, James S.
    Ribeiro, Antonio Luiz P.
    Kramer, Daniel B.
    Waks, Jonathan W.
    Ng, Fu Siong
    LANCET DIGITAL HEALTH, 2024, 6 (11): : e791 - e802
  • [28] Artificial intelligence-enabled penicillin allergy delabelling: an implementation study
    Stretton, Brandon
    Jiang, Melinda
    Kovoor, Joshua
    Inglis, Joshua M.
    Lam, Lydia
    Tan, Sheryn
    Yuson, Chino
    Smith, William
    Shakib, Sepehr
    Bacchi, Stephen
    INTERNAL MEDICINE JOURNAL, 2023, 53 (11) : 2119 - 2122
  • [29] Leveraging Artificial Intelligence-enabled Workflow Framework for Legacy Transformation
    Al-Barakati, Abdullah
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2021, 12 (12) : 297 - 303
  • [30] Artificial Intelligence-Enabled ECG: a Modern Lens on an Old Technology
    Anthony H. Kashou
    Adam M. May
    Peter A. Noseworthy
    Current Cardiology Reports, 2020, 22