An ensemble of dynamic neural network identifiers for fault detection and isolation of gas turbine engines

被引:125
作者
Amozegar, M. [1 ]
Khorasani, K. [1 ]
机构
[1] Concordia Univ, Dept Elect & Comp Engn, Montreal, PQ H3G 1M8, Canada
关键词
Ensemble learning; Fault detection and isolation; System identification; Dynamic neural networks; Gas turbine engines; DIAGNOSIS; SYSTEM;
D O I
10.1016/j.neunet.2016.01.003
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this paper, a new approach for Fault Detection and Isolation (FDI) of gas turbine engines is proposed by developing an ensemble of dynamic neural network identifiers. For health monitoring of the gas turbine engine, its dynamics is first identified by constructing three separate or individual dynamic neural network architectures. Specifically, a dynamic multi-layer perceptron (MLP), a dynamic radial-basis function (RBF) neural network, and a dynamic support vector machine (SVM) are trained to individually identify and represent the gas turbine engine dynamics. Next, three ensemble-based techniques are developed to represent the gas turbine engine dynamics, namely, two heterogeneous ensemble models and one homogeneous ensemble model. It is first shown that all ensemble approaches do significantly improve the overall performance and accuracy of the developed system identification scheme when compared to each of the stand-alone solutions. The best selected stand-alone model (i.e., the dynamic RBF network) and the best selected ensemble architecture (i.e., the heterogeneous ensemble) in terms of their performances in achieving an accurate system identification are then selected for solving the FDI task. The required residual signals are generated by using both a single model-based solution and an ensemble-based solution under various gas turbine engine health conditions. Our extensive simulation studies demonstrate that the fault detection and isolation task achieved by using the residuals that are obtained from the dynamic ensemble scheme results in a significantly more accurate and reliable performance as illustrated through detailed quantitative confusion matrix analysis and comparative studies. (C) 2016 Elsevier Ltd. All rights reserved.
引用
收藏
页码:106 / 121
页数:16
相关论文
共 53 条
[1]  
Al-Zyoud I.A.-D., 2005, P INT JOINT C NEUR N
[2]  
[Anonymous], KNOWLEDGE ENG REV
[3]   Boosting regression estimators [J].
Avnimelech, R ;
Intrator, N .
NEURAL COMPUTATION, 1999, 11 (02) :499-520
[4]  
Billings SA, 2013, NONLINEAR SYSTEM IDENTIFICATION: NARMAX METHODS IN THE TIME, FREQUENCY, AND SPATIO-TEMPORAL DOMAINS, P1, DOI 10.1002/9781118535561
[5]  
Bishop C., 2006, Pattern recognition and machine learning, P423
[6]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[7]  
Brown G., 2005, Information Fusion, V6, P5, DOI 10.1016/j.inffus.2004.04.004
[8]   A modular code for real time dynamic simulation of gas turbines in Simulink [J].
Camporeale, S. M. ;
Fortunato, B. ;
Mastrovito, M. .
JOURNAL OF ENGINEERING FOR GAS TURBINES AND POWER-TRANSACTIONS OF THE ASME, 2006, 128 (03) :506-517
[9]   NARX-based nonlinear system identification using orthogonal least squares basis hunting [J].
Chen, S. ;
Wang, X. X. ;
Harris, C. J. .
IEEE TRANSACTIONS ON CONTROL SYSTEMS TECHNOLOGY, 2008, 16 (01) :78-84
[10]   NONLINEAR-SYSTEM IDENTIFICATION USING NEURAL NETWORKS [J].
CHEN, S ;
BILLINGS, SA ;
GRANT, PM .
INTERNATIONAL JOURNAL OF CONTROL, 1990, 51 (06) :1191-1214