Title :
Power system modeling for inverse problems
Author_Institution :
Dept. of Electr., Comput. Eng. Univ. of WisconsinMadison, Madison, WI, USA
fDate :
3/1/2004 12:00:00 AM
Abstract :
Large disturbances in power systems often initiate complex interactions between continuous dynamics and discrete events. The paper develops a hybrid automaton that describes such behavior. Hybrid systems can be modeled in a systematic way by a set of differential-algebraic equations, modified to incorporate impulse (state reset) action and constraint switching. This differential-algebraic impulsive-switched (DAIS) model is a realization of the hybrid automaton. The paper presents a practical object-oriented approach to implementing the DAIS model. Each component of a system is modeled autonomously. Connections between components are established by simple algebraic equations. The systematic nature of the DAIS model enables efficient computation of trajectory sensitivities, which in turn facilitate algorithms for solving inverse problems. The paper outlines a number of inverse problems, including parameter uncertainty, parameter estimation, grazing bifurcations, boundary value problems, and dynamic embedded optimization.
Keywords :
automata theory; bifurcation; boundary-value problems; differential equations; inverse problems; power system parameter estimation; power system simulation; DAIS model; boundary value problems; constraint switching; continuous dynamics; differential-algebraic equations; differential-algebraic impulsive-switched model; discrete events; dynamic embedded optimization; grazing bifurcations; hybrid automaton; hybrid systems; impulse action; inverse problem; inverse problems; large disturbances; parameter estimation; parameter uncertainty; power system modeling; practical object-oriented; state reset; trajectory sensitivities computation; Automata; Computational modeling; Differential algebraic equations; Hybrid power systems; Inverse problems; Object oriented modeling; Parameter estimation; Power system dynamics; Power system modeling; Uncertain systems;
Journal_Title :
Circuits and Systems I: Regular Papers, IEEE Transactions on
DOI :
10.1109/TCSI.2004.823654