Automated Defect Detection and Decision-Support in Gas Turbine Blade Inspection

被引:43
作者
Aust, Jonas [1 ]
Shankland, Sam [2 ]
Pons, Dirk [1 ]
Mukundan, Ramakrishnan [2 ]
Mitrovic, Antonija [2 ]
机构
[1] Univ Canterbury, Dept Mech Engn, Christchurch 8041, New Zealand
[2] Univ Canterbury, Dept Comp Sci & Software Engn, Christchurch 8041, New Zealand
关键词
automated defect detection; blade inspection; gas turbine engines; aircraft; visual inspection; image segmentation; image processing; applied computing; computer vision; object detection; maintenance automation; aerospace; MRO; FAILURE ANALYSIS; IMAGES; DAMAGE;
D O I
10.3390/aerospace8020030
中图分类号
V [航空、航天];
学科分类号
08 ; 0825 ;
摘要
Background-In the field of aviation, maintenance and inspections of engines are vitally important in ensuring the safe functionality of fault-free aircrafts. There is value in exploring automated defect detection systems that can assist in this process. Existing effort has mostly been directed at artificial intelligence, specifically neural networks. However, that approach is critically dependent on large datasets, which can be problematic to obtain. For more specialised cases where data are sparse, the image processing techniques have potential, but this is poorly represented in the literature. Aim-This research sought to develop methods (a) to automatically detect defects on the edges of engine blades (nicks, dents and tears) and (b) to support the decision-making of the inspector when providing a recommended maintenance action based on the engine manual. Findings-For a small sample test size of 60 blades, the combined system was able to detect and locate the defects with an accuracy of 83%. It quantified morphological features of defect size and location. False positive and false negative rates were 46% and 17% respectively based on ground truth. Originality-The work shows that image-processing approaches have potential value as a method for detecting defects in small data sets. The work also identifies which viewing perspectives are more favourable for automated detection, namely, those that are perpendicular to the blade surface.
引用
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页码:1 / 27
页数:27
相关论文
共 100 条
[81]   "How many images do I need?" Understanding how sample size per class affects deep learning model performance metrics for balanced designs in autonomous wildlife monitoring [J].
Shahinfar, Saleh ;
Meek, Paul ;
Falzon, Greg .
ECOLOGICAL INFORMATICS, 2020, 57
[82]  
Shen ZJ, 2019, INT CONF COMPUT NETW, P1005, DOI [10.1109/ICCNC.2019.8685593, 10.1109/iccnc.2019.8685593]
[83]   Automated defect detection for Fluorescent Penetrant Inspection using Random Forest [J].
Shipway, N. J. ;
Barden, T. J. ;
Huthwaite, P. ;
Lowe, M. J. S. .
NDT & E INTERNATIONAL, 2019, 101 :113-123
[84]   Smart Maintenance Decision Support Systems (SMDSS) based on corporate big data analytics [J].
Sumblauskas, Daniel ;
Gemmill, Douglas ;
Igou, Amy ;
Anzengruber, Johanna .
EXPERT SYSTEMS WITH APPLICATIONS, 2017, 90 :303-317
[85]   Revisiting Unreasonable Effectiveness of Data in Deep Learning Era [J].
Sun, Chen ;
Shrivastava, Abhinav ;
Singh, Saurabh ;
Gupta, Abhinav .
2017 IEEE INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV), 2017, :843-852
[86]   TOPOLOGICAL STRUCTURAL-ANALYSIS OF DIGITIZED BINARY IMAGES BY BORDER FOLLOWING [J].
SUZUKI, S ;
ABE, K .
COMPUTER VISION GRAPHICS AND IMAGE PROCESSING, 1985, 30 (01) :32-46
[87]  
Svensen M., 2018, P EUR C PHM SOC, P3
[88]   Machine learning to classify animal species in camera trap images: Applications in ecology [J].
Tabak, Michael A. ;
Norouzzadeh, Mohammad S. ;
Wolfson, David W. ;
Sweeney, Steven J. ;
Vercauteren, Kurt C. ;
Snow, Nathan P. ;
Halseth, Joseph M. ;
Di Salvo, Paul A. ;
Lewis, Jesse S. ;
White, Michael D. ;
Teton, Ben ;
Beasley, James C. ;
Schlichting, Peter E. ;
Boughton, Raoul K. ;
Wight, Bethany ;
Newkirk, Eric S. ;
Ivan, Jacob S. ;
Odell, Eric A. ;
Brook, Ryan K. ;
Lukacs, Paul M. ;
Moeller, Anna K. ;
Mandeville, Elizabeth G. ;
Clune, Jeff ;
Miller, Ryan S. .
METHODS IN ECOLOGY AND EVOLUTION, 2019, 10 (04) :585-590
[89]   Quantitative detection of defects based on Markov-PCA-BP algorithm using pulsed infrared thermography technology [J].
Tang Qingju ;
Dai Jingmin ;
Liu Junyan ;
Liu Chunsheng ;
Liu Yuanlin ;
Ren Chunping .
INFRARED PHYSICS & TECHNOLOGY, 2016, 77 :144-148
[90]  
Tian WG, 2008, PROCEEDINGS OF THE SECOND INTERNATIONAL SYMPOSIUM ON TEST AUTOMATION & INSTRUMENTATION, VOL. 3, P1694