Deep-Learning-Based Methodology for Fault Diagnosis in Electromechanical Systems

被引:33
作者
Arellano-Espitia, Francisco [1 ]
Delgado-Prieto, Miguel [1 ]
Martinez-Viol, Victor [1 ]
Jose Saucedo-Dorantes, Juan [2 ]
Alfredo Osornio-Rios, Roque [2 ]
机构
[1] Tech Univ Catalonia UPC, MCIA Dept Elect Engn, Barcelona 08034, Spain
[2] Autonomous Univ Queretaro, HSPdigital CA Mecatron Engn Fac, San Juan Del Rio 76806, Mexico
关键词
condition monitoring; fault detection; data-driven fault diagnosis systems; deep neural network; feature fusion; VIBRATION;
D O I
10.3390/s20143949
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Fault diagnosis in manufacturing systems represents one of the most critical challenges dealing with condition-based monitoring in the recent era of smart manufacturing. In the current Industry 4.0 framework, maintenance strategies based on traditional data-driven fault diagnosis schemes require enhanced capabilities to be applied over modern production systems. In fact, the integration of multiple mechanical components, the consideration of multiple operating conditions, and the appearance of combined fault patterns due to eventual multi-fault scenarios lead to complex electromechanical systems requiring advanced monitoring strategies. In this regard, data fusion schemes supported with advanced deep learning technology represent a promising approach towards a big data paradigm using cloud-based software services. However, the deep learning models' structure and hyper-parameters selection represent the main limitation when applied. Thus, in this paper, a novel deep-learning-based methodology for fault diagnosis in electromechanical systems is presented. The main benefits of the proposed methodology are the easiness of application and high adaptability to available data. The methodology is supported by an unsupervised stacked auto-encoders and a supervised discriminant analysis.
引用
收藏
页码:1 / 23
页数:23
相关论文
共 48 条
[1]   Non-invasive method for rotor bar fault diagnosis in three-phase squirrel cage induction motor with advanced signal processing technique [J].
Barusu, Madhusudhana Reddy ;
Sethurajan, Umamaheswari ;
Deivasigamani, Meganathan .
JOURNAL OF ENGINEERING-JOE, 2019, (17) :4415-4419
[2]   Reconfigurable Monitoring System for Time-Frequency Analysis on Industrial Equipment Through STFT and DWT [J].
Cabal-Yepez, Eduardo ;
Garcia-Ramirez, Armando G. ;
Romero-Troncoso, Rene J. ;
Garcia-Perez, Arturo ;
Osornio-Rios, Roque A. .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2013, 9 (02) :760-771
[3]   Big Data Deep Learning: Challenges and Perspectives [J].
Chen, Xue-Wen ;
Lin, Xiaotong .
IEEE ACCESS, 2014, 2 :514-525
[4]   Multisensor Feature Fusion for Bearing Fault Diagnosis Using Sparse Autoencoder and Deep Belief Network [J].
Chen, Zhuyun ;
Li, Weihua .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2017, 66 (07) :1693-1702
[5]   The reflection of evolving bearing faults in the stator current's extended park vector approach for induction machines [J].
Corne, Bram ;
Vervisch, Bram ;
Derammelaere, Stijn ;
Knockaert, Jos ;
Desmet, Jan .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2018, 107 :168-182
[6]  
Corral-Hernandez Jesus A, 2018, [Chinese Journal of Electrical Engineering, 中国电气工程学报], V4, P66
[7]   Bearing Fault Detection by a Novel Condition-Monitoring Scheme Based on Statistical-Time Features and Neural Networks [J].
Delgado Prieto, Miguel ;
Cirrincione, Giansalvo ;
Garcia Espinosa, Antonio ;
Antonio Ortega, Juan ;
Henao, Humberto .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2013, 60 (08) :3398-3407
[8]   Using Deep Learning-Based Approach to Predict Remaining Useful Life of Rotating Components [J].
Deutsch, Jason ;
He, David .
IEEE TRANSACTIONS ON SYSTEMS MAN CYBERNETICS-SYSTEMS, 2018, 48 (01) :11-20
[9]   Multisensor Wireless System for Eccentricity and Bearing Fault Detection in Induction Motors [J].
Esfahani, Ehsan Tarkesh ;
Wang, Shaocheng ;
Sundararajan, V. .
IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2014, 19 (03) :818-826
[10]  
Falkner H., 2011, IEA ENERGY PAP, V2011, P47