An evolving approach to unsupervised and Real-Time fault detection in industrial processes

被引:63
|
作者
Bezerra, Clauber Gomes [1 ]
Jales Costa, Bruno Sielly [2 ]
Guedes, Luiz Affonso [3 ]
Angelov, Plamen Parvanov [4 ,5 ]
机构
[1] Fed Inst Rio Grande Norte IFRN, Campus EaD,Ave Senador Salgado Filho 1559, BR-59015000 Natal, RN, Brazil
[2] IFRN, Campus Natal Zona Norte,Rua Brusque 2926, BR-59112490 Natal, RN, Brazil
[3] Fed Univ Rio Grande Norte UFRN, Dept Comp Engn & Automat DCA, Campus Univ, BR-59078900 Natal, RN, Brazil
[4] Univ Lancaster, Data Sci Grp, Sch Comp & Commun, Lancaster LA1 4WA, England
[5] Carlos III Univ, Chair Excellence, Madrid, Spain
关键词
Fault detection; Industrial processes; Typicality; Eccentricity; TEDA; Autonomous learning; RECURSIVE DENSITY-ESTIMATION; ARTIFICIAL IMMUNE-SYSTEM; NONLINEAR-SYSTEMS; PART I; DIAGNOSIS; MODEL; OBSERVER; DESIGN;
D O I
10.1016/j.eswa.2016.06.035
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Fault detection in industrial processes is a field of application that has gaining considerable attention in the past few years, resulting in a large variety of techniques and methodologies designed to solve that problem. However, many of the approaches presented in literature require relevant amounts of prior knowledge about the process, such as mathematical models, data distribution and pre-defined parameters. In this paper, we propose the application of TEDA Typicality and Eccentricity Data Analytics, a fully autonomous algorithm, to the problem of fault detection in industrial processes. In order to perform fault detection, TEDA analyzes the density of each read data sample, which is calculated based on the distance between that sample and all the others read so far. TEDA is an online algorithm that learns autonomously and does not require any previous knowledge about the process nor any user-defined parameters. Moreover, it requires minimum computational effort, enabling its use for real-time applications. The efficiency of the proposed approach is demonstrated with two different real world industrial plant data streams that provide "normal" and "faulty" data. The results shown in this paper are very encouraging when compared with traditional fault detection approaches. (C) 2016 Elsevier Ltd. All rights reserved.
引用
收藏
页码:134 / 144
页数:11
相关论文
共 50 条
  • [1] Fully unsupervised fault detection and identification based on recursive density estimation and self-evolving cloud-based classifier
    Sielly Jales Costa, Bruno
    Angelov, Plamen Parvanov
    Guedes, Luiz Affonso
    NEUROCOMPUTING, 2015, 150 : 289 - 303
  • [2] An adaptive constrained clustering approach for real-time fault detection of industrial systems
    Askari, Bahman
    Bozza, Augusto
    Cavone, Graziana
    Carli, Raffaele
    Dotoli, Mariagrazia
    EUROPEAN JOURNAL OF CONTROL, 2023, 74
  • [3] FAULT DETECTION IN FLUID SYSTEMS: AN INTERACTIVE REAL-TIME APPROACH
    Angeli, C.
    Chatzinikolaou, A.
    8TH INTERNATIONAL INDUSTRIAL SIMULATION CONFERENCE 2010, ISC 2010, 2010, : 223 - 227
  • [4] Observer-Based Fault Detection Approach Using Fuzzy Adaptive Poles Placement System With Real-Time Implementation
    Eissa, Magdy Abdullah
    Sali, Aduwati
    Ahmad, Faisul Arif
    Darwish, Rania R.
    IEEE ACCESS, 2021, 9 : 83272 - 83284
  • [5] An efficient neural-network model for real-time fault detection in industrial machine
    Verma, Amar Kumar
    Nagpal, Shivika
    Desai, Aditya
    Sudha, Radhika
    NEURAL COMPUTING & APPLICATIONS, 2021, 33 (04) : 1297 - 1310
  • [6] A Real-Time Configuration Approach for an Observer-Based Residual Generator of Fault Detection Systems
    Zhao, Hao
    Luo, Hao
    Liu, Tianyu
    PROCESSES, 2022, 10 (02)
  • [7] A new Unsupervised Approach to Fault Detection and Identification
    Jales Costa, Bruno Sielly
    Angelov, Plamen Parvanov
    Guedes, Luiz Affonso
    PROCEEDINGS OF THE 2014 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2014, : 1557 - 1564
  • [8] An integrated approach for real-time hazard mitigation in complex industrial processes
    Rebello, Sinda
    Yu, Hongyang
    Ma, Lin
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2019, 188 : 297 - 309
  • [9] Unsupervised domain adversarial network for few-sample fault detection in industrial processes
    Fang, Ruiyi
    Wang, Kai
    Li, Jing
    Yuan, Xiaofeng
    Wang, Yalin
    ADVANCED ENGINEERING INFORMATICS, 2024, 61
  • [10] A Real-Time Fault Detection Framework Based on Unsupervised Deep Learning for Prognostics and Health Management of Railway Assets
    Shimizu, Minoru
    Perinpanayagam, Suresh
    Namoano, Bernadin
    IEEE ACCESS, 2022, 10 : 96442 - 96458