A review of synthetic and augmented training data for machine learning in ultrasonic non-destructive evaluation

被引:38
作者
Sebastian, Uhlig [1 ,2 ]
Ilkin, Alkhasli [1 ,2 ]
Frank, Schubert [1 ]
Constanze, Tschoepe [1 ,2 ]
Matthias, Wolff [3 ]
机构
[1] IKTS, Fraunhofer Inst Ceram Technol & Syst, Dresden, Germany
[2] KogMatD, Fraunhofer IKTS Cognit Mat Diagnost Project Grp, Cottbus, Germany
[3] Brandenburg Univ Technol Cottbus Senftenberg, BTU C S, Chair Commun Engn, Cottbus, Germany
关键词
Non-destructive testing; NDT; Non-destructive evaluation; NDE; Ultrasonic testing; Ultrasonics; Flaw detection; Machine learning; Artificial intelligence; Deep learning; Synthetic training data; Data augmentation; ARTIFICIAL NEURAL-NETWORKS; ELASTIC-WAVE PROPAGATION; SPECTRAL FINITE-ELEMENT; DAMAGE DETECTION; CLASSIFICATION; IDENTIFICATION; SIMULATION; SCATTERING; MODELS; MEDIA;
D O I
10.1016/j.ultras.2023.107041
中图分类号
O42 [声学];
学科分类号
070206 ; 082403 ;
摘要
Ultrasonic Testing (UT) has seen increasing application of machine learning (ML) in recent years, promoting higher-level automation and decision-making in flaw detection and classification. Building a generalized training dataset to apply ML in non-destructive evaluation (NDE), and thus UT, is exceptionally difficult since data on pristine and representative flawed specimens are needed. Yet, in most UT test cases flawed specimen data is inherently rare making data coverage the leading problem when applying ML. Common data augmentation (DA) strategies offer limited solutions as they don't increase the dataset variance, which can lead to overfitting of the training data. The virtual defect method and the recent application of generative adversarial neural networks (GANs) in UT are sophisticated DA methods targeting to solve this problem. On the other hand, well-established research in modeling ultrasonic wave propagations allows for the generation of synthetic UT training data. In this context, we present a first thematic review to summarize the progress of the last decades on synthetic and augmented UT training data in NDE. Additionally, an overview of methods for synthetic UT data generation and augmentation is presented. Among numerical methods such as finite element, finite difference, and elastodynamic finite integration methods, semi-analytical methods such as general point source synthesis, superposition of Gaussian beams, and the pencil method as well as other UT modeling software are presented and discussed. Likewise, existing DA methods for one- and multidimensional UT data, feature space augmentation, and GANs for augmentation are presented and discussed. The paper closes with an in-detail discussion of the advantages and limitations of existing methods for both synthetic UT training data generation and DA of UT data to aid the decision-making of the reader for the application to specific test cases.
引用
收藏
页数:30
相关论文
共 235 条
[1]   Structural Health Monitoring (SHM) and Determination of Surface Defects in Large Metallic Structures using Ultrasonic Guided Waves [J].
Abbas, Muntazir ;
Shafiee, Mahmood .
SENSORS, 2018, 18 (11)
[2]  
Achenbach J., 2009, RECIPROCITY ELASTODY
[3]  
Aggarwal C.C., 2015, DATA CLASSIFICATION
[4]   Demonstration of Using Signal Feature Extraction and Deep Learning Neural Networks with Ultrasonic Data for Detecting Challenging Discontinuities in Composite Panels [J].
Aldrin, John C. ;
Forsyth, David S. .
45TH ANNUAL REVIEW OF PROGRESS IN QUANTITATIVE NONDESTRUCTIVE EVALUATION, VOL 38, 2019, 2102
[5]  
Amirfathi M.M., 1991, 1991 IEEE AEROSPACE
[6]  
Anderson JA., 1988, NEUROCOMPUTING
[7]  
[Anonymous], 1986, PSYCHOL BIOL MODELS
[8]  
[Anonymous], 1998, GENTLE TUTORIAL EM A
[9]  
Arjovsky M, 2017, PR MACH LEARN RES, V70
[10]   THE CLASSIFICATION OF DEFECTS FROM ULTRASONIC DATA USING NEURAL NETWORKS - THE HOPFIELD METHOD [J].
BAKER, AR ;
WINDSOR, CG .
NDT INTERNATIONAL, 1989, 22 (02) :97-105