Title :
Diagnosis techniques for sensor faults of industrial processes
Author :
Simani, S. ; Fantuzzi, C. ; Beghelli, S.
Author_Institution :
Dipt. di Fisica, Ferrara Univ., Italy
fDate :
9/1/2000 12:00:00 AM
Abstract :
A model-based procedure exploiting analytical redundancy for the detection and isolation of faults in input-output control sensors of a dynamic system is presented. The diagnosis system is based on state estimators, namely dynamic observers or Kalman filters designed in deterministic and stochastic environments, respectively, and uses residual analysis and statistical tests for fault detection and isolation. The state estimators are obtained from an input-output data process and standard identification techniques based on ARX or errors-in-variables models, depending on signal to noise ratio. In the latter case the Kalman filter parameters, i.e., the model parameters and input-output noise variances, are obtained by processing the noisy data according to the Frisch scheme rules. The proposed fault detection and isolation tool has been tested on a single-shaft industrial gas turbine model. Results from simulation show that minimum detectable faults are perfectly compatible with the industrial target of this application
Keywords :
Kalman filters; fault diagnosis; gas turbines; identification; observers; process control; redundancy; sensors; statistical analysis; ARX; Frisch scheme rules; Kalman filters; analytical redundancy; diagnosis techniques; dynamic observers; errors-in-variables models; fault detection; fault isolation; industrial processes; input-output noise variances; model-based procedure; residual analysis; sensor faults; single-shaft industrial gas turbine model; statistical tests; Analytical models; Electrical equipment industry; Fault detection; Fault diagnosis; Observers; Redundancy; Sensor systems; State estimation; Stochastic resonance; Stochastic systems;
Journal_Title :
Control Systems Technology, IEEE Transactions on