A Systematic Guide for Predicting Remaining Useful Life with Machine Learning

被引:44
作者
Berghout, Tarek [1 ]
Benbouzid, Mohamed [2 ,3 ]
机构
[1] Univ Batna 2, Lab Automat & Mfg Engn, Batna 05000, Algeria
[2] Univ Brest, Inst Rech Dupuy Lome, CNRS, UMR 6027, F-29238 Brest, France
[3] Shanghai Maritime Univ, Logist Engn Coll, Shanghai 201306, Peoples R China
关键词
damage propagation; deep learning; degradation analysis; machine learning; prognosis and health management; remaining useful life; GENERATIVE ADVERSARIAL NETWORK; OF-THE-ART; NEURAL-NETWORK; ENGINEERED SYSTEMS; HEALTH; PROGNOSTICS; STATE; LSTM; AEROENGINES; VALIDATION;
D O I
10.3390/electronics11071125
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Prognosis and health management (PHM) are mandatory tasks for real-time monitoring of damage propagation and aging of operating systems during working conditions. More definitely, PHM simplifies conditional maintenance planning by assessing the actual state of health (SoH) through the level of aging indicators. In fact, an accurate estimate of SoH helps determine remaining useful life (RUL), which is the period between the present and the end of a system's useful life. Traditional residue-based modeling approaches that rely on the interpretation of appropriate physical laws to simulate operating behaviors fail as the complexity of systems increases. Therefore, machine learning (ML) becomes an unquestionable alternative that employs the behavior of historical data to mimic a large number of SoHs under varying working conditions. In this context, the objective of this paper is twofold. First, to provide an overview of recent developments of RUL prediction while reviewing recent ML tools used for RUL prediction in different critical systems. Second, and more importantly, to ensure that the RUL prediction process from data acquisition to model building and evaluation is straightforward. This paper also provides step-by-step guidelines to help determine the appropriate solution for any specific type of driven data. This guide is followed by a classification of different types of ML tools to cover all the discussed cases. Ultimately, this review-based study uses these guidelines to determine learning model limitations, reconstruction challenges, and future prospects.
引用
收藏
页数:31
相关论文
共 132 条
[1]   Online Remaining Useful Life Prediction for Lithium-Ion Batteries Using Partial Discharge Data Features [J].
Ali, Muhammad Umair ;
Zafar, Amad ;
Nengroo, Sarvar Hussain ;
Hussain, Sadam ;
Park, Gwan-Soo ;
Kim, Hee-Je .
ENERGIES, 2019, 12 (22)
[2]  
[Anonymous], 2012, PROC IEEE INT C PROG, DOI DOI 10.1109/PHM.2012.6227845
[3]  
[Anonymous], 2015, A note on the evaluation of generative models
[4]  
[Anonymous], 2019, JMST Advances
[5]  
Aydin O, 2017, 2017 4TH INTERNATIONAL CONFERENCE ON ELECTRICAL AND ELECTRONIC ENGINEERING (ICEEE 2017), P281, DOI 10.1109/ICEEE2.2017.7935834
[6]  
Bellani L., 2019, INT J PROGNOSTICS HL, V31, P1
[7]  
Berghout Tarek, 2020, 2020 1st International Conference on Communications, Control Systems and Signal Processing (CCSSP), P358, DOI 10.1109/CCSSP49278.2020.9151607
[8]   A Semi-Supervised Deep Transfer Learning Approach for Rolling-Element Bearing Remaining Useful Life Prediction [J].
Berghout, Tarek ;
Mouss, Leila-Hayet ;
Bentrcia, Toufik ;
Benbouzid, Mohamed .
IEEE TRANSACTIONS ON ENERGY CONVERSION, 2022, 37 (02) :1200-1210
[9]   Auto-NAHL: A Neural Network Approach for Condition-Based Maintenance of Complex Industrial Systems [J].
Berghout, Tarek ;
Benbouzid, Mohamed ;
Muyeen, S. M. ;
Bentrcia, Toufik ;
Mouss, Leila-Hayet .
IEEE ACCESS, 2021, 9 :152829-152840
[10]   Machine Learning-Based Condition Monitoring for PV Systems: State of the Art and Future Prospects [J].
Berghout, Tarek ;
Benbouzid, Mohamed ;
Bentrcia, Toufik ;
Ma, Xiandong ;
Djurovic, Sinisa ;
Mouss, Leila-Hayet .
ENERGIES, 2021, 14 (19)