Friday, January 18, 2013

Dissertation

Model Estimation of Electric Power Systems by Phasor Measurement Units Data

Abstract


This dissertation tackles the online estimation of synchronous machines’ power subsystems electromechanical models using the output based Phasor Measurements Units (PMUs) data while disregarding any inside data. The research develops state space models and estimates their parameters and states. The research tests the developed algorithms against models of a higher and of the same complexity as the estimated models.

The dissertation explores two estimations approaches using the PMUs data: i)non- inear Kalman lters namely the Extended Kalman Filter (EKF) and then the Unscented Kalman Filter (UKF) and ii) Least Squares Estimation (LSE) with Finite Dierences (FN) and then with System Identication. The EKF based research i) establishes a decoupling technique for the subsystem the rest of the power system ii) nds the maximum number of parameters to estimate for classical machine model and iii) estimates such parameters  The UKF based research i) estimates a set of electromechanical parameters and states for the ux decay model and ii) shows the advantage of using a dual estimation lter with colored noise to solve the diculty of some simultaneous state and parameter estimation.

The LSE with FN estimation i) evaluates numerically the state space dierential equations and transform the problem to an overestimated linear system whose parameters can be estimated, ii) carries out sensitivity studies evaluating the impact of operating conditions and iii) addresses the requirements for implementation on real data taken from the electric grid of the United States. The System Identication method i) develops a linearized electromechanical model, ii) completes a parameters sub-set selection study using singular values decomposition, iii) estimates the parameters of the proposed model and iv) validates its output versus the measured output.