Continual learning for predictive maintenance: Overview and challenges

被引:31
作者
Hurtado, Julio [1 ]
Salvati, Dario [1 ]
Semola, Rudy [1 ]
Bosio, Mattia [2 ,3 ]
Lomonaco, Vincenzo [1 ]
机构
[1] Univ Pisa, Dept Informat, Largo Bruno Pontecorvo 3, I-56127 Pisa, Italy
[2] SEA Vis, Via Claudio Treves 9E, I-27100 Pavia, Italy
[3] ARGO Vis, Via Gianfranco Zuretti 4, I-20125 Milan, Italy
来源
INTELLIGENT SYSTEMS WITH APPLICATIONS | 2023年 / 19卷
关键词
Continual learning; Machine learning; Non-stationary distribution; Predictive maintenance; USEFUL LIFE PREDICTION; CONCEPT DRIFT DETECTION; SUPPORT VECTOR MACHINE; FAULT-DIAGNOSIS; ROTATING MACHINERY; NEURAL-NETWORKS; DECISION TREE; AUTO-ENCODER; INDUSTRY; 4.0; DATA STREAMS;
D O I
10.1016/j.iswa.2023.200251
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Deep learning techniques have become one of the main propellers for solving engineering problems effectively and efficiently. For instance, Predictive Maintenance methods have been used to improve predictions of when maintenance is needed on different machines and operative contexts. However, deep learning methods are not without limitations, as these models are normally trained on a fixed distribution that only reflects the current state of the problem. Due to internal or external factors, the state of the problem can change, and the performance decreases due to the lack of generalization and adaptation. Contrary to this stationary training set, real-world applications change their environments constantly, creating the need to constantly adapt the model to evolving scenarios. To aid in this endeavor, Continual Learning methods propose ways to constantly adapt prediction models and incorporate new knowledge after deployment. Despite the advantages of these techniques, there are still challenges to applying them to real-world problems. In this work, we present a brief introduction to predictive maintenance, non-stationary environments, and continual learning, together with an extensive review of the current state of applying continual learning in real-world applications and specifically in predictive maintenance. We then discuss the current challenges of both predictive maintenance and continual learning, proposing future directions at the intersection of both areas. Finally, we propose a novel way to create benchmarks that favor the application of continuous learning methods in more realistic environments, giving specific examples of predictive maintenance.
引用
收藏
页数:18
相关论文
共 248 条
[1]  
Rusu AA, 2016, Arxiv, DOI [arXiv:1606.04671, DOI 10.43550/ARXIV:1606.04671, DOI 10.48550/ARXIV.1606.04671]
[2]   Classification Using Streaming Random Forests [J].
Abdulsalam, Hanady ;
Skillicorn, David B. ;
Martin, Patrick .
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2011, 23 (01) :22-36
[3]  
Aggarwal C. C., 2006, P 32 INT C VER LARG, P607
[4]   GANomaly: Semi-supervised Anomaly Detection via Adversarial Training [J].
Akcay, Samet ;
Atapour-Abarghouei, Amir ;
Breckon, Toby P. .
COMPUTER VISION - ACCV 2018, PT III, 2019, 11363 :622-637
[5]  
Alippi C., 2009, Proceedings 2009 International Joint Conference on Neural Networks (IJCNN 2009 - Atlanta), P114, DOI 10.1109/IJCNN.2009.5178799
[6]  
Alippi C., 2014, Fault diagnosis systems, P249
[7]   Just-In-Time Classifiers for Recurrent Concepts [J].
Alippi, Cesare ;
Boracchi, Giacomo ;
Roveri, Manuel .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2013, 24 (04) :620-634
[8]  
Alippi C, 2012, IEEE IJCNN
[9]   A just-in-time adaptive classification system based on the intersection of confidence intervals rule [J].
Alippi, Cesare ;
Boracchi, Giacomo ;
Roveri, Manuel .
NEURAL NETWORKS, 2011, 24 (08) :791-800
[10]   Just-in-Time Adaptive Classifiers-Part II: Designing the Classifier [J].
Alippi, Cesare ;
Roveri, Manuel .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 2008, 19 (12) :2053-2064