Corrosion detection and severity level prediction using acoustic emission and machine learning based approach

被引:50
作者
Sheikh, Muhammad Fahad [1 ]
Kamal, Khurram [2 ]
Rafique, Faheem [2 ]
Sabir, Salman [2 ]
Zaheer, Hassan [2 ]
Khan, Kashif [3 ]
机构
[1] Univ Management & Technol Lahore, Sialkot Campus, Lahore, Pakistan
[2] Natl Univ Sci & Technol, Islamabad, Pakistan
[3] DHA Suffa Univ, Karachi, Pakistan
基金
中国国家自然科学基金;
关键词
Acoustic emission; Corrosion detection; Accelerated corrosion testing; Machine learning classifiers; Severity level prediction; CONCRETE; PIPELINES; CRACKING;
D O I
10.1016/j.asej.2021.03.024
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Failure caused by corrosion in industries are the major cause of breakdown maintenance. Acoustic emission during the accelerated corrosion testing is a reliable method for corrosion detection, however, classification of these acoustic emission signals by machine learning techniques is still in its infancy. Proposed approach uses a hybrid technique that combines the detection of corrosion through acoustic emission signals from accelerated corrosion testing with machine learning techniques to accurately predict the corrosion severity levels. Laboratory based experimentation setup was established for accelerated corrosion testing of mild steel samples for different time spans and mass loss of samples were recorded. Acoustic emission signals were acquired at high frequency sampling rate with Sound Well AE sensor, NI Elvis kit and NI Labview software. AE mean, AE RMS, AE energy, and kurtosis were selected as distinct features as they represent a linear relationship with the corrosion process. For multi-class problem, five Corrosion severity levels have been made based on mass loss occurred during accelerated corrosion testing for which Naive Bayes, BP-NN and RBF-NN showed accuracy of 90.4%, 94.57%, and 100% respectively. (C) 2021 THE AUTHORS. Published by Elsevier BV on behalf of Faculty of Engineering, Ain Shams University.
引用
收藏
页码:3891 / 3903
页数:13
相关论文
共 31 条
[1]  
Agarwala V.S., 2000, Corrosion detection and monitoring: a review, CORROSION 2000
[2]   Classification of cracking mode in concrete by acoustic emission parameters [J].
Aggelis, Dimitrios G. .
MECHANICS RESEARCH COMMUNICATIONS, 2011, 38 (03) :153-157
[3]  
[Anonymous], 2003, ASME INT MECH ENG C
[4]  
Bandana Garg, 2013, CIRCULATION, V701, P8888
[5]   Comparison of estimation capabilities of response surface methodology (RSM) with artificial neural network (ANN) in lipase-catalyzed synthesis of palm-based wax ester [J].
Basri, Mahiran ;
Rahman, Raja Noor Zaliha Raja Abd ;
Ebrahimpour, Afshin ;
Salleh, Abu Bakar ;
Gunawan, Erin Ryantin ;
Rahman, Mohd Basyaruddin Abd .
BMC BIOTECHNOLOGY, 2007, 7 (1)
[6]   Structural damage diagnosis and life-time assessment by acoustic emission monitoring [J].
Carpinteri, A. ;
Lacidogna, G. ;
Pugno, N. .
ENGINEERING FRACTURE MECHANICS, 2007, 74 (1-2) :273-289
[7]   Cracking and crackling in concrete-like materials: A dynamic energy balance [J].
Carpinteri, A. ;
Lacidogna, G. ;
Corrado, M. ;
Di Battista, E. .
ENGINEERING FRACTURE MECHANICS, 2016, 155 :130-144
[8]  
Christian U.G., 2008, Acoustic Emission Testing
[9]   Machine Learning approach to corrosion assessment in subsea pipelines [J].
De Masi, Giulia ;
Gentile, Manuela ;
Vichi, Roberta ;
Bruschi, Roberto ;
Gabetta, Giovanna .
OCEANS 2015 - GENOVA, 2015,
[10]  
Droubi MG, 2017, 14 INT C SLOV SOC NO