Title :
Maximum likelihood estimation of synchronous machine parameters from standstill time response data
Author :
Keyhani, A. ; Tsai, H. ; Leksan, T.
Author_Institution :
Ohio State Univ., Columbus, OH, USA
fDate :
3/1/1994 12:00:00 AM
Abstract :
This paper presents a systematic approach for identification of a three-phase salient-pole synchronous machine rated at 5 kVA from standstill time-domain data. Machine time constant models and the equivalent circuit models are identified and their parameters are estimated. The initialization of the estimated parameters is achieved by the Laplace transformation of the recorded standstill time-response data and the derivation of the well-known operational inductances. The estimation is performed using the Maximum Likelihood algorithm. Based on the best estimated equivalent circuit models, simulation studies using the measured on-line dynamic responses are performed to validate the identified machine models
Keywords :
Laplace transforms; machine theory; maximum likelihood estimation; parameter estimation; synchronous machines; time-domain analysis; 5 kVA; Laplace transformation; Maximum Likelihood algorithm; equivalent circuit models; machine time constant models; maximum likelihood estimation; on-line dynamic responses; parameter estimation; salient-pole synchronous machine; standstill time response data; synchronous machine parameters; time-domain data; Cost function; Equivalent circuits; Maximum likelihood estimation; Parameter estimation; Synchronous machines; Testing; Time domain analysis; Time factors; Transfer functions; Voltage;
Journal_Title :
Energy Conversion, IEEE Transactions on