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Statistical model for assessing the reliability of non-destructive testing systems by solving inverse problems

https://doi.org/10.32362/2500-316X-2023-11-3-56-69

Abstract

Objectives. The wear monitoring of metal structural elements of power plants—in particular, pipelines of nuclear power plants—is an essential means of ensuring safety during their operation. Monitoring the state of the pipeline by direct inspection requires a considerable amount of labor, as well as, in some cases, the suspension of power plant operation. In order to reduce costs during monitoring measures, it is proposed to use mathematical modeling. This work aimes to develop a mathematical model of a diagnostic system for assessing the probability of detection of defects by solving inverse problems.

Methods. A binomial model for assessing the reliability of monitoring, comprising the Berens-Hovey parametric model of the probability of detection of defects and a parametric model based on studying test samples, was analyzed. As an alternative to this binomial model, a computational method for assessing the reliability of non-destructive testing systems by solving an inverse problem was proposed. To determine the parameters of the defect detection probability curve, the model uses data obtained by various monitoring teams over a long period of power plant operation. To serve as initial data, the defect distribution density over one or more of the following characteristics can be used: depth, length, and/or cross-sectional area of the defect. Using the proposed mathematical model, a series of test calculations was performed based on nine combinations of initial data. The combinations differed in the confidence coefficient of the initial monitoring system, the parameters of the distribution of defects, and the sensitivity of the monitoring system.

Results. The calculation data were used to construct curves of the probability density of detected defects as a function of the defect size, recover the values of the defect distribution parameters under various test conditions, and estimate the error of recovering the parameters. The degree of imperfection of the system was estimated using the curve of the detection probability of a defect by a certain monitoring system.

Conclusions. Under constraints on the data sample size, the proposed methodology allows the metal monitoring results to be applied with greater confidence than currently used methods at the same time as evaluating the efficiency of monitoring carried out by individual test teams or laboratories. In future, this can be used to form the basis of a recommendation of the involvement of a particular team to perform diagnostic work.

About the Authors

A. E. Alexandrov
MIREA - Russian Technological University
Russian Federation

Alexander E. Alexandrov - Dr. Sci. (Eng.), Professor, Department of Hardware Software and Mathematical Support of Computing System, Institute for Cybersecurity and Digital Technologies, MIREA - Russian Technological University.

20, Stromynka ul., Moscow, 107996

Scopus Author ID 57364491800


Competing Interests:

None



S. P. Borisov
MIREA - Russian Technological University
Russian Federation

Sergey P. Borisov - Senior Lecturer, Department of Hardware Software and Mathematical Support of Computing System, Institute for Cybersecurity and Digital Technologies, MIREA - Russian Technological University.

20, Stromynka ul., Moscow, 107996


Competing Interests:

None



L. V. Bunina
MIREA - Russian Technological University
Russian Federation

Ludmila V. Bunina - Senior Lecturer, Department of Hardware Software and Mathematical Support of Computing System, Institute for Cybersecurity and Digital Technologies, MIREA - Russian Technological University.

20, Stromynka ul., Moscow, 107996

Scopus Author ID 57218190491


Competing Interests:

None



S. S. Bikovsky
MIREA - Russian Technological University
Russian Federation

Sergey S. Bikovsky - Senior Lecturer, Department of Hardware Software and Mathematical Support of Computing System, Institute for Cybersecurity and Digital Technologies, MIREA - Russian Technological University.

20, Stromynka ul., Moscow, 107996

Scopus Author ID 57363858400


Competing Interests:

None



I. V. Stepanova
MIREA - Russian Technological University
Russian Federation

Irina V. Stepanova - Cand. Sci. (Geol.-Mineral.), Associate Professor, Department of Hardware Software and Mathematical Support of Computing System, Institute for Cybersecurity and Digital Technologies, MIREA - Russian Technological University.

20, Stromynka ul., Moscow, 107996

Scopus Author ID 57213161230


Competing Interests:

None



A. P. Titov
MIREA - Russian Technological University
Russian Federation

Andrey P. Titov - Cand. Sci. (Eng.), Associate Professor, Department of Hardware Software and Mathematical Support of Computing System, Institute for Cybersecurity and Digital Technologies, MIREA - Russian Technological University.

20, Stromynka ul., Moscow, 107996

Scopus Author ID 57363858500


Competing Interests:

None



References

1. Berens A.P. Probability of Detection (PoD) Analysis for the Advanced Retirement for Cause (RFC). Engine Structural Integrity Program (ENSIP) Nondestructive Evaluation (NDE) System Development. V. 1. PoD Analysis. Technical Report. Dayton: University of Dayton, Research Institute; 2000. 88 p.

2. Berens A.P. NDE reliability data analysis. In: ASM Metals Handbook. V. 17. Non-Destructive Evaluation and Quality Control: Qualitative Non-Destructive Evaluation. 1989;17:689-701.

3. Subair S.M., Balasubramaniama K., Rajagopala P., Kumar A., Rao B.P., Jayakumar T. Finite element simulations to predict probability of detection (PoD) curves for ultrasonic inspection of nuclear components. Procedia Engineering: 1st International Conference on Structural Integrity. 2014;86:461-468. https://doi.org/10.1016/j.proeng.2014.11.059

4. Filinov V.V., Mikaeva S.A., Rodyukov M.S., Filinova A.V. Modern architecture board information and control systems of heavy vehicles. Russ. Technol. J. 2017;5(3):114-123 (in Russ.). https://doi.org/10.32362/2500-316X-2017-5-3-114-123

5. Link R., Riess N. Non-Destructive Material Testing: Surface Crack Detection. V. 1. Hamburg: Helling GmbH; 2014.

6. Aleksandrov A.E., Azhder T.B., Stepanova I.V. A probabilistic model for calculating pipelines by the mechanism of ductile and brittle fracture. Informatsionnye Tekhnologii = Information Technologies. 2020;26(8): 443-450 (in Russ.). https://doi.org/10.17587/it.26.443-450

7. Casella G., Berger R. Statistical inference. 2nd ed. Duxbury Press; 2007. 650 p.

8. Kutner M.H., Nachtsheim C.I., Neter J., Li W. Applied Linear Statistical Models. 5th ed. New York: McGraw-Hill/Irwin; 2005. 1396 p.

9. Gandossi L., Annis C. Probability of Detection Curves: Statistical Best-Practices. ENIQ report. No. 41. Luxembourg: Publications Office of the European Union; 2010. 72 p.

10. Schneider C.R.A., Rudlin J.R. Review of statistical methods used in quantifying NDT reliability. Insight - Non-Destructive Testing and Condition Monitoring. 2004;46(2):77-79. https://doi.org/10.1784/insi.46.2.77.55549

11. Berens A.P., Hovey P.W. Evaluation of NDE reliability characterization. AFWAL-TR-81-4160. V. 1. Dayton: Air Force Wright-Aeronautical Laboratories, Wright-Patterson Air Force Base; 1981.

12. Alain S., Badeau N. Using passive-axis focusing wedges to decrease inspection reject rates. FOCUS The NDT Technician. 2021;20(3):1-5. Available from URL: https://ndtlibrary.asnt.org/2021/UsingPassiveAxisFocusingWedgestoDecreaseInspectionRejectRates (accessed December 15, 2022).

13. Berens A.P., Hovey P.W. Flaw detection reliability criteria. V. 1. Methods and results. AD-A142 001. Final technical report. Dayton: University of Dayton, Research Institute; 1984. 175 p. Available from URL: https://archive.org/details/DTIC_ADA142001

14. Getman A.F., Kozin Yu.N. Nerazrushayushchii kontrol' i bezopasnost' ekspluatatsii sosudov i truboprovodov davleniya (Non-Destructive Testing and Safety of Operation of Pressure Vessels and Pipelines). Moscow: Energoatomizdat; 1997. 288 p. (in Russ.). ISBN 5-283-03151-9

15. Annis C., Aldrin J.C., Sabbagh H.A. What is missing in nondestructive testing capability evaluation? Mater. Eval. 2015;73(1):1-11.

16. Aleksandrov A.E. Evaluation of the reliability of metal testing results based on an alternative algorithm. Informatsionnye Tekhnologii = Information Technologies. 2018;8(24):529-537 (in Russ.). https://doi.org/10.17587/it.24.529-537

17. Montgomery D.C. Design and Analysis of Experiments. 10th ed. Wiley; 2020. 688 p. ISBN 978-1-119-72210-6

18. Annis C., Gandossi L., Martin O. Optimal sample size for probability of detection curves. Nucl. Eng. Des. 2013;262:98-105. https://doi.org/10.1016Zj.nucengdes.2013.03.059

19. Tikhonov A.N., Kal'ner V.D., Glasko V.B. Matematicheskoe modelirovanie i metod obratnykh zadach v mashinostroenii (Mathematical Modeling and Method of Inverse Problems in Mechanical Engineering). Moscow: Mashinostroenie; 1990. 264 p. (in Russ.).

20. Aldrin J.C., Shell E.B., Oneida E.K., Sabbagh H.A., Sabbagh E., Murphy R.K., Mazdiyasni S., Lindgren E.A. Model-based inverse methods for sizing surface-breaking discontinuities with eddy current probe variability. AIP Conference Proceedings. 2016;1706(1):090002_1-090002_10. https://doi.org/10.1063/1.4940539

21. Aldrin J.C., Oneida E.K., Shell E.B., Sabbagh H.A., Sabbagh E., Murphy R.K., Mazdiyasni S., Lindgren E.A., Mooers R.D. Model-based probe state estimation and crack inverse methods addressing eddy current probe variability. AIP Conference Proceedings. 2017;1806(1):110013_1- 110013_11. https://doi.org/10.1063/1.4974691

22. Bertovic M., Given J., Rentala V.M., Lehleitner J., Kanzler D., Heckel T., Tkachenko V. Human Factors in der POD - ist das moglich? e-Journal of Nondestructive Testing (eJNDT). Available from URL: https://www.ndt.net/article/dgzfp2022/papers/mo.3.b.3.pdf

23. Yusa N., Knopp J.S. Evaluation of probability of detection (POD) studies with multiple explanatory variables. J. Nucl. Sci. Technol. 2015;53(4):574-579. https://doi.org/10.1080/00223131.2015.1064332

24. Schneider C.R.A., Sanderson R.M., Carpentier C., Zhao L., Nageswaran C. Estimation of probability of detection curves based on theoretical simulation of the inspection process. Annual Br. Conf. on NDT. 2012. 12 р. Available from URL: https://www.bindt.org/downloads/NDT2012_5C1.pdf

25. Aldrin J.C., Annis C., Sabbagh H.A., Knopp J.S., Lindgren E.A. assessing the reliability of nondestructive evaluation methods for damage characterization. AIP Conference Proceedings. 2014;1581(1):2071-2078. https://doi.org/10.1063/1.4865078

26. Alexandrov A.E., Azhder T.B., Bunina L.V., Bikovsky S.S., Titov A.P. Computer program for calculating pipelines destruction probability. In: Silhavy R., Silhavy P., Prokopova Z. (Eds.). Proceedings of the Computational Methods in Systems and Software. CoMeSySo: Data Science and Intelligent Systems. Ser. Lecture Notes in Networks and Systems. 2021. V. 231. P. 718-733. https://doi.org/10.1007/978-3-030-90321-3_59


Supplementary files

1. Defect size distribution of detected defects (all series)
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Type Исследовательские инструменты
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Indexing metadata ▾
  • A mathematical model of a diagnostic system for assessing the probability of detection of defects in metal structural elements of power plants by solving inverse problems was developed.
  • Under constraints on the data sample size, the proposed methodology allows the metal monitoring results to be applied with greater confidence than currently used methods at the same time as evaluating the efficiency of monitoring carried out by individual test teams or laboratories.

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Alexandrov A.E., Borisov S.P., Bunina L.V., Bikovsky S.S., Stepanova I.V., Titov A.P. Statistical model for assessing the reliability of non-destructive testing systems by solving inverse problems. Russian Technological Journal. 2023;11(3):56-69. https://doi.org/10.32362/2500-316X-2023-11-3-56-69

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