Title :
Robust detection and isolation of process faults using neural networks
Author :
Marcu, Teodor ; Mirea, Letitia
Author_Institution :
Dept. of Autom. Control & Ind. Inf., Tech. Univ. of Iasi, Romania
fDate :
10/1/1997 12:00:00 AM
Abstract :
The problem of robust model-based diagnosis of process faults is addressed by means of artificial neural networks. Different structures and learning methods are investigated for both approaches to function approximation and pattern recognition. Main emphasis is placed upon static and dynamic neural nets that are used as predictors of nonlinear models for symptom generation. Dynamic neural networks are properly integrated into a generalized observer scheme. The goal is to achieve an adequate approximation of process outputs for each known class of system behavior. Symptoms are then evaluated by means of pattern classification. Application to a laboratory process is presented. A diagnosing subsystem is designed to detect incipient faults in the components of a three-tank system. It is implemented in real-time by using the SIMULINL/MATLAB programming environment. Experimental results regarding the diagnosis of single and multiple faults are included in a comparative study. It demonstrates the effectiveness of the suggested approach
Keywords :
diagnostic expert systems; fault diagnosis; function approximation; learning (artificial intelligence); neural nets; observers; pattern recognition; process control; SIMULINL/MATLAB; dynamic neural networks; fault detection; fault diagnosis; fault isolation; function approximation; learning methods; nonlinear models; observer; pattern recognition; process faults; programming environment; static neural networks; symptom generation; three-tank system; Artificial neural networks; Fault detection; Fault diagnosis; Function approximation; Learning systems; Mathematical model; Nonlinear dynamical systems; Pattern recognition; Predictive models; Robustness;
Journal_Title :
Control Systems, IEEE