October 31, 2014
Conference Paper

Estimating Power System Dynamic States Using Extended Kalman Filter

Abstract

Abstract—The state estimation tools which are currently deployed in power system control rooms are based on a steady state assumption. As a result, the suite of operational tools that rely on state estimation results as inputs do not have dynamic information available and their accuracy is compromised. This paper investigates the application of Extended Kalman Filtering techniques for estimating dynamic states in the state estimation process. The new formulated “dynamic state estimation” includes true system dynamics reflected in differential equations, not like previously proposed “dynamic state estimation” which only considers the time-variant snapshots based on steady state modeling. This new dynamic state estimation using Extended Kalman Filter has been successfully tested on a multi-machine system. Sensitivity studies with respect to noise levels, sampling rates, model errors, and parameter errors are presented as well to illustrate the robust performance of the developed dynamic state estimation process.

Revised: November 3, 2014 | Published: October 31, 2014

Citation

Huang Z., K.P. Schneider, J. Nieplocha, and N. Zhou. 2014. Estimating Power System Dynamic States Using Extended Kalman Filter. In IEEE PES General Meeting , Conference & Exposition, July 27-31, 2014, National Harbor, MD. Piscataway, New Jersey:Institute of Electrical and Electronics Engineers. PNNL-SA-100167.