Power system modeling and controls continue to become more complex with the advent of smart grid technologies and large-scale deployment of renewable energy resources. As demonstrated in recent studies, inaccurate system models could lead to large-scale blackouts, thereby motivating the need for model calibration. Current methods of model calibration rely on manual tuning based on engineering experience, are time consuming and could yield inaccurate parameter estimates. In this paper, the Extended Kalman Filter (EKF) is used as a tool to calibrate exciter and Power System Stabilizer (PSS) models of a particular type of machine in the Western Electricity Coordinating Council (WECC). The EKF-based parameter estimation is a recursive prediction-correction process which uses the mismatch between simulation and measurement to adjust the model parameters at every time step. Numerical simulations using actual field test data demonstrate the effectiveness of the proposed approach in calibrating the parameters.
Revised: July 23, 2014 |
Published: July 26, 2012
Citation
Kalsi K., P. Du, and Z. Huang. 2012.Model Calibration of Exciter and PSS Using Extended Kalman Filter. In IEEE Power and Energy Society General Meeting, July 22-26, 2012, San Diego, California, 1-6. Piscataway, New Jersey:IEEE.PNNL-SA-84437.doi:10.1109/PESGM.2012.6345560