Title :
Neural network based modeling of a large steam turbine-generator rotor body parameters from on-line disturbance data
Author :
Karayaka, H. Bora ; Keyhani, Ali ; Heydt, Gerald Thomas ; Agrawal, Baj L. ; Selin, Douglas A.
Author_Institution :
Ohio State Univ., Columbus, OH, USA
fDate :
12/1/2001 12:00:00 AM
Abstract :
A novel technique to estimate and model rotor-body parameters of a large steam turbine-generator from real time disturbance data is presented. For each set of disturbance data collected at different operating conditions, the rotor body parameters of the generator are estimated using an output error method (OEM). Artificial neural network (ANN) based estimators are later used to model the nonlinearities in the estimated parameters based on the generator operating conditions. The developed ANN models are then validated with measurements not used in the training procedure. The performance of estimated parameters is also validated with extensive simulations and compared against the manufacturer values
Keywords :
electric machine analysis computing; machine theory; neural nets; parameter estimation; rotors; steam turbines; turbogenerators; ANN models; artificial neural network based estimators; computer simulations; large steam turbine-generator rotor body parameters; measurements; neural network based modeling; online disturbance data; operating conditions; Artificial neural networks; Electrical resistance measurement; Neural networks; Parameter estimation; Rotors; Shape; Shock absorbers; Stators; Synchronous generators; Voltage;
Journal_Title :
Energy Conversion, IEEE Transactions on