Soft computing approaches to fault diagnosis for dynamic systems

被引:54
作者
Calado, JMF
Korbicz, J
Patan, K
Patton, RJ
da Costa, JMGS
机构
[1] Polytech Inst Lisbon, Inst Super Engn Lisboa, IDMEC, P-1949014 Lisbon, Portugal
[2] Tech Univ Zielona Gora, Inst Control & Computat Engn, PL-65246 Zielona Gora, Poland
[3] Univ Hull, Fac Engn & Math, Kingston Upon Hull HU6 7RX, N Humberside, England
[4] Univ Tecn Lisboa, Inst Super Tecn, IDMEC, P-1049001 Lisbon, Portugal
关键词
classification; computational intelligence in control; evolutionary algorithms; fault diagnosis; FDI; fuzzy systems; neural networks; soft computing methods;
D O I
10.3166/ejc.7.248-286
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Recent approaches to fault detection and isolation for dynamic systems using methods of integrating quantitative and qualitative model information, based upon soft computing (SC) methods are surveyed and studied in some detail. SC methods are considered an important extension to the quantitative model-based approach for residual generation in fault detection and isolation (FDI). When quantitative models are not readily available, a correctly trained neural network (NN) can be used as a non-linear dynamic model of the system. The paper describes some powerful NN methods, taking into account the dynamic as well as non-linear system behaviour. Sometimes, further insight is required as to the explicit behaviour of the model-involved and it is then that fuzzy and even neuro-fuzzy methods come to their own in data-driven FDI applications. The paper also discusses the use of evolutionary programming tools for observer and NAI design. The paper provides many powerful examples of the use of SC methods for achieving good detection and isolation of faults in the presence of uncertain plant behaviour, together with their practical value for fault diagnosis of real process systems.
引用
收藏
页码:248 / 286
页数:39
相关论文
共 137 条
[91]  
OBUCHOWICZ A, 1999, P 7 EUR C INT TECHN
[92]  
OBUCHOWICZ KJ, 1998, P 7 INT S INT INF SY, P300
[93]  
OBUCHOWICZ PK, 1997, P 3 C NN THEIR APPL, P123
[94]   Multiple fault diagnosis in analogue circuits using time domain response features and multilayer perceptrons [J].
Ogg, S ;
Lesage, S ;
Jervis, BW ;
Maidon, Y ;
Zimmer, T .
IEE PROCEEDINGS-CIRCUITS DEVICES AND SYSTEMS, 1998, 145 (04) :213-218
[95]   QUALITATIVE SIMULATION OF CHEMICAL PROCESS SYSTEMS - STEADY-STATE ANALYSIS [J].
OYELEYE, OO ;
KRAMER, MA .
AICHE JOURNAL, 1988, 34 (09) :1441-1454
[96]   A hybrid hierarchical neural network-fuzzy expert system approach to chemical process fault diagnosis [J].
Ozyurt, B ;
Kandel, A .
FUZZY SETS AND SYSTEMS, 1996, 83 (01) :11-25
[97]   Intelligent joint fault diagnosis of industrial robots [J].
Pan, MC ;
Van Brussel, H ;
Sas, P .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 1998, 12 (04) :571-588
[98]   Neural networks and simple models for the fault diagnosis of naval turbochargers [J].
Pantelelis, NG ;
Kanarachos, AE ;
Gotzias, N .
MATHEMATICS AND COMPUTERS IN SIMULATION, 2000, 51 (3-4) :387-397
[99]  
PATAN K, 2000, P IFAC S FAULT DET S, V1, P186
[100]  
PATAN K, 1999, P EUR CONTR C ECC 99