Machine Health Indicator Construction Framework for Failure Diagnostics and Prognostics

被引:0
作者
Vepa Atamuradov
Kamal Medjaher
Fatih Camci
Noureddine Zerhouni
Pierre Dersin
Benjamin Lamoureux
机构
[1] Imagine Laboratory,Assystem Energy & Infrastructure
[2] Production Engineering Laboratory (LGP) INP-ENIT,undefined
[3] Amazon Inc. 11501 Alterra Parkway,undefined
[4] FEMTO-ST,undefined
[5] UMR CNRS-UFC/ENSMM,undefined
[6] ALSTOM Transport,undefined
来源
Journal of Signal Processing Systems | 2020年 / 92卷
关键词
Health indicator construction; Time-domain; Frequency-domain; Time-frequency domain features; Condition monitoring; Hybrid feature evaluation; Fusion; Diagnostics; Prognostics; Gearbox; Point machines; Battery; Predictive maintenance;
D O I
暂无
中图分类号
学科分类号
摘要
Condition monitoring (CM) data should undergo through preprocessing to extract health indicators (HIs) for proper system health assessment. Machine health indicators provide vital information about health state of subcomponents(s) or overall system. There are many techniques in the literature used to construct HIs from CM data either for failure diagnostics or prognostics purposes. The majority of proposed HI extraction methods are mostly application specific (e.g. gearbox, shafts, and bearings etc.). This paper provides an overview of the used techniques and proposes an HI extraction, evaluation, and selection framework for monitoring of different applications. The extracted HIs are evaluated through a compatibility test where they can be used in either failure diagnostics or prognostics. An HI selection is carried out by a new hybrid feature goodness ranking metric in feature evaluation. The selected features are then used in fusion to get the representative component HI. Several case study CM data are used to demonstrate the essentiality of the proposed framework in component monitoring.
引用
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页码:591 / 609
页数:18
相关论文
共 140 条
[1]  
Liu D(2015)A health indicator extraction and optimization framework for lithium-ion battery degradation modeling and prognostics IEEE Transactions on Systems, Man, and Cybernetics: Systems 45 915-928
[2]  
Zhou J(2017)Segmentation based feature evaluation and fusion for prognostics feature selection based on segment evaluation The International Journal of Prognostics and Health Management 8 1-14
[3]  
Liao H(2014)Survey of condition indicators for condition monitoring systems Annual Conference of the Prognostics and Health Management Society 5 1-13
[4]  
Peng Y(2011)A review of gearbox condition monitoring based on vibration analysis techniques diagnostics and prognostics Rotating Machinery, Structural Health Monitoring, Shock and Vibration 5 307-324
[5]  
Peng X(2016)A review of gear fault diagnosis using various condition indicators Procedia Engineering 144 253-263
[6]  
Atamuradov V(2015)Bearing health monitoring based on Hilbert – Huang ransform, support vector machine, and regression IEEE Transactions on Instrumentation and Measurement 64 52-62
[7]  
Camci F(2017)An effective health indicator based on two dimensional hidden Markov model Journal of Mechanical Science and Technology 31 1543-1550
[8]  
Zhu J(2013)Real time diagnosis & fault detection for the reliability improvement of the embedded systems Journal of Signal Processing Systems 73 153-160
[9]  
Nostrand T(2017)An integrated data preprocessing framework based on apache spark for fault diagnosis of power grid equipment Journal of Signal Processing Systems 86 221-236
[10]  
Spiegel C(2016)A review on signal processing techniques utilized in the fault diagnosis of rolling element bearings Tribology International 96 289-306