Emergent Mind

Power System Dynamic State Estimation Using Extended and Unscented Kalman Filters

(2012.06069)
Published Dec 11, 2020 in eess.SY and cs.SY

Abstract

Accurate estimation of power system dynamics is very important for the enhancement of power system reliability, resilience, security, and stability of power system. With the increasing integration of inverter-based distributed energy resources, the knowledge of power system dynamics has become more necessary and critical than ever before for proper control and operation of the power system. Although recent advancement of measurement devices and the transmission technologies have reduced the measurement and transmission error significantly, these measurements are still not completely free from the measurement noises. Therefore, the noisy measurements need to be filtered to obtain the accurate power system operating dynamics. In this work, the power system dynamic states are estimated using extended Kalman filter (EKF) and unscented Kalman filter (UKF). We have performed case studies on Western Electricity Coordinating Council (WECC)'s $3$-machine $9$-bus system and New England $10$-machine $39$-bus. The results show that the UKF and EKF can accurately estimate the power system dynamics. The comparative performance of EKF and UKF for the tested case is also provided. Other Kalman filtering techniques alongwith the machine learning-based estimator will be updated inthis report soon.All the sources code including Newton Raphsonpower flow, admittance matrix calculation, EKF calculation, andUKF calculation are publicly available in Github

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