Deep Learning Automated System for Thermal Defectometry of Multilayer Materials
https://doi.org/10.21122/2220-9506-2021-12-2-98-107
Abstract
Currently, along with growth in industrial production, the requirements for product quality testing are also increasing. In the tasks of defectoscopy and defectometry of multilayer materials, the use of thermal nondestructive testing method is promising. At the same time, interpretation of thermal testing data is complicated by a number of factors, which makes the use of traditional methods of data processing ineffective. Therefore, an urgent task is to search for new methods of thermal testing that will automate the diagnostic process and increase information content of obtained results. The purpose of article is to use the advances in deep learning for processing results of active thermal testing of products made of multilayer materials and development of an automated system for thermal defectoscopy and defectometry of such products. The proposed system consists of a heating source, an infrared camera for recording sequences of thermograms and a digital information processing unit. Three neural network modules are used for automated data processing, each of which performs one of the tasks: defects detection and classification, determination of the defect depth and thickness. The software algorithms and user interface for interacting with system are programmed in the NI LabVIEW development environment.
Experimental studies on samples made of multilayer fiberglass have shown a significant advantage of the developed system over using traditional methods for analyzing thermal testing data. The defect classification (determining the type) error on the test dataset was 15.7 %. Developed system ensured determination of defect depth with a relative error of 3.2 %, as well as the defect thickness with a relative error of 3.5 %.
About the Authors
A. S. MomotUkraine
Address for correspondence: Momot A.S. – National Technical University of Ukraine "Igor Sikorsky Kyiv Polytechnic Institute", Peremohy Ave., 37, Kyiv 03056, Ukraine
R. M. Galagan
Ukraine
Peremohy Ave., 37, Kyiv 03056
V. Yu. Gluhovskii
Ukraine
Peremohy Ave., 37, Kyiv 03056
References
1. Galagan R.М. Analysis of application of neural networks to improve the reliability of active thermal NDT. KPI Science News, 2019, no. 1, pp. 7–14. DOI: 10.20535/kpi-sn.2019.1.157374
2. Jiangang S. Analysis of data processing methods for pulsed thermal imaging characterisation of delaminations. Quantitative InfraRed Thermogra- phy Journal, 2013, vol. 10, pp. 9–25. DOI: 10.1080/17686733.2012.757860
3. Ahmed J., Gao B., Woo W.L., Wavelet-Integrated Alternating Sparse Dictionary Matrix Decomposition in Thermal Imaging CFRP Defect Detection. IEEE Transactions on Industrial Informatics, 2019, vol. 15, no. 7, pp. 4033–4043. DOI: 10.1109/TII.2018.2881341
4. Vavilov V.P. Dynamic thermal tomography: Recent improvements and applications. NDT&E International, 2018, no. 135, pp. 129–141. DOI: 10.1016/j.ndteint.2014.09.010
5. Dudzik S. Analysis of the accuracy of a neural algorithm for defect depth estimation using PCA processing from active thermography data. Infrared Physics & Technology, 2013, no. 56, pp. 1–7. DOI: 10.1016/j.infrared.2012.08.006
6. Balageas D., Maldague X., Burleigh D, Vavi- lov V.P., Oswald-Tranta B., Roche J.-M., Pradere C., Carlomagno G.M. Thermal (IR) and other NDT techniques for improved material inspection. Journal of Nondestructive Evaluation, 2016, vol. 35, no. 1, article 18, 17 p. DOI: 10.1007/s10921-015-0331-7
7. Marani R., Palumbo D., Reno V. Modeling and classification of defects in CFRP laminates by thermal non-destructive testing. Composites Part B: Engineering, 2018, no. 135, pp. 129–141. DOI: 10.1016/j.compositesb.2017.10.010
8. Hellstein P., Szwedo M. 3D thermography in non- destructive testing of composite structures. Measurement Science and Technology, 2016, vol. 27, no. 12, article id. 124006. DOI: 10.1088/0957-0233/27/12/124006
9. Vavilov V.P., Nesteruk D.A. Aktivnyj teplovoj kontrol' kompozicionnyh materialov s ispol'zovaniem nejronnyh setej [Active thermal testing of composite materials using neural networks]. Defektoskopiya [Defectoscopy], 2011, no. 10, pp. 10–18 (in Russian).
10. Saeed N., Omar M.A., Abdulrahman Y. A neural network approach for quantifying defects depth, for nondestructive testing thermograms. Infrared Physics & Technology, 2018, no. 94, pp. 55–64. DOI: 10.1016/j.infrared.2018.08.022
11. Chulkov A.O., Nesteruk D.A., Vavilov V.P. An Automated Algorithm for Constructing Maps of Defects in Active Thermal Testing. Russian Journal of Nondestructive Testing, 2019, vol. 55, pp. 617–621. DOI: 10.1134/S1061830919080035
12. Vavilov V., Plesovskikh A., Chulkov A. A com- plex approach to the development of the method and equipment for thermal nondestructive testing of CFRP cylindrical parts. Composites Part B: Engineering, 2015, vol. 68, pp. 375–384. DOI: 10.1016/j.compositesb.2014.09.007
13. Ciampa F., Mahmoodi P., Pinto F., Meo М. Re- cent Advances in Active Infrared Thermography for Non- Destructive Testing of Aerospace Components. Sensors, 2018, vol. 18(2), article id. 609. DOI: 10.3390/s18020609
14. Momot A., Galagan R. Influence of architecture and training dataset parameters on the neural networks efficiency in thermal nondestructive testing. Sciences of Europe, 2019, no. 44, pp. 20–25.
15. Chulkov A.O. Analyzing efficiency of optical and THz infrared thermography in nondestructive testing of GFRPs by using the Tanimoto criterion. NDT & E International, 2021, vol. 117, article id. 102383. DOI: 10.1016/j.ndteint.2020.102383
Review
For citations:
Momot A.S., Galagan R.M., Gluhovskii V.Yu. Deep Learning Automated System for Thermal Defectometry of Multilayer Materials. Devices and Methods of Measurements. 2021;12(2):98-107. https://doi.org/10.21122/2220-9506-2021-12-2-98-107