A neural network approach for the real-time detection of faults

被引:19
作者
Chetouani, Yahya [1 ]
机构
[1] Univ Rouen, Dept Genie Chim, F-76821 Mont St Aignan, France
关键词
safety; functioning risk; fault detection; reliability; neural network; CUSUM;
D O I
10.1007/s00477-007-0123-4
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Fault detection is an essential part of the operation of any chemical plant. Early detection of faults is important in chemical industry since a lot of damage and loss can result before a fault present in the system is detected. Even though fault detection algorithms are designed and implemented for quickly detecting incidents, most these algorithms do not have an optimal property in terms of detection delay with respect to false alarm rate. Based on the optimization property of cumulative sum (CUSUM), a real-time system for detecting changes in dynamic systems is designed in this paper. This work is motivated by combining two fault detection (FD) strategies; a simplified procedure of the incident detection problem is formulated by using both the artificial neural networks (ANN) and the CUSUM statistical test (Page-Hinkley test). The design of a model-based residual generator is intended to reveal any drift from the normal behavior of the process. In order to obtain a reliable model for the normal process dynamics, the neural black-box modeling by means of a nonlinear auto-regressive with eXogenous input (NARX) model has been chosen in this study. This paper also shows the choice and the performance of the neural network in the training and test phases. After describing the system architecture and the proposed methodology of the fault detection, we present a realistic application in order to show the technique's potential. The purpose is to develop and test the fault detection method on a real incident data, to detect the change presence, and pinpoint the moment it occurred. The experimental results demonstrate the robustness of the FD method.
引用
收藏
页码:339 / 349
页数:11
相关论文
共 53 条
[1]   Optimizing resources in model selection for support vector machine [J].
Adankon, Mathias M. ;
Cheriet, Mohamed .
PATTERN RECOGNITION, 2007, 40 (03) :953-963
[2]  
BASSEVILLE M, 1986, LECT NOTES CONTR INF, V77, P11
[3]  
BILLINGS SA, 1986, INT J CONTROL, V44, P235, DOI 10.1080/00207178608933593
[4]   Neural prediction of combustion instability [J].
Cammarata, L ;
Fichera, A ;
Pagano, A .
APPLIED ENERGY, 2002, 72 (02) :513-528
[5]   REPRESENTATIONS OF NON-LINEAR SYSTEMS - THE NARMAX MODEL [J].
CHEN, S ;
BILLINGS, SA .
INTERNATIONAL JOURNAL OF CONTROL, 1989, 49 (03) :1013-1032
[6]   A neural network-based procedure for the monitoring of exponential mean [J].
Cheng, CS ;
Cheng, SS .
COMPUTERS & INDUSTRIAL ENGINEERING, 2001, 40 (04) :309-321
[7]   An improved incremental training algorithm for support vector machines using active query [J].
Cheng, Shouxian ;
Shih, Frank Y. .
PATTERN RECOGNITION, 2007, 40 (03) :964-971
[8]   Application of the generalized likelihood ratio test for detecting changes in a chemical reactor [J].
Chetouani, Y. .
PROCESS SAFETY AND ENVIRONMENTAL PROTECTION, 2006, 84 (B5) :371-377
[9]   Fault detection in a chemical reactor by using the standardized innovation [J].
Chetouani, Y .
PROCESS SAFETY AND ENVIRONMENTAL PROTECTION, 2006, 84 (B1) :27-32
[10]   Fault detection by using the innovation signal: application to an exothermic reaction [J].
Chetouani, Y .
CHEMICAL ENGINEERING AND PROCESSING-PROCESS INTENSIFICATION, 2004, 43 (12) :1579-1585