Title :
Complete-model diesel-engine diagnosis using gain schedule-mu analysis and non-linear estimator
Author :
Nohra, Chady ; Younes, Rafic
Author_Institution :
Electr. Eng. Dept., LIU Lebanese Int. Univ., Beyrouth, Lebanon
Abstract :
Three different fault-diagnosis system for a turbocharged diesel engine with variable-geometry turbocharger control, were proposed in this paper. Numerous and diversified actuator and/or sensors faults such as air-leakage in the admission collector, compressor malfunctioning, intake-valves fault, intercooler fault, deterioration in the turbine-compressor coupling, defect in the variable geometry of the turbine are identified and analyzed. Furthermore, a complete non-linear engine model with four state variables was adopted. The first proposed strategy consists in developing a Fault Detection and Isolation algorithm (FDI) based on the theory of Gain Schedule Control operated on a Takagi-Sugeno model of the diesel. The second proposed strategy based on the theory of μ analysis control, carried out on a linearization model LTI of the diesel. The third strategy adopted and implemented in the current work follows similar general method published by Demetrion and Polycarpou [15]. The basic idea is to use an adaptive training of an on line observer to estimate the unknown faults parameters.
Keywords :
compressors; diesel engines; fault diagnosis; fuel systems; gain control; intake systems (machines); linearisation techniques; nonlinear estimation; observers; parameter estimation; variable structure systems; FDI algorithm; Takagi-Sugeno model; actuators; adaptive training; admission collector; air leakage; compressor malfunctioning; defects; deterioration; fault detection-and-isolation algorithm; fault diagnosis system; fault parameter estimation; gain schedule-mu analysis; intake valves fault; intercooler fault; linearization model; nonlinear estimator; online observer; sensors fault; turbine-compressor coupling; turbocharged diesel engine; variable-geometry turbocharger control; Diesel engines; Equations; Mathematical model; Observers; Uncertainty; Vectors; Adaptive training; Diagnosis; Fault detection and isolation estimator (FDIE); Gain Schedule Control; H∞/ μ control; H-Infinity Optimization; Nonlinear Complete Engine Model; RBF neural network; structured singular value;
Conference_Titel :
Industrial Electronics and Applications (ICIEA), 2012 7th IEEE Conference on
Conference_Location :
Singapore
Print_ISBN :
978-1-4577-2118-2
DOI :
10.1109/ICIEA.2012.6360854