Fixed speed wind generator model parameter estimation using improved particle swarm optimization and system frequency disturbances

Francisco Gonzalez-Longatt, F. González-Longatt, P. Regulski, P. Wall, W. Terzija

    Research output: Chapter in Book/Report/Conference proceedingConference contribution

    Abstract

    When planning power system operation it is important to have reliable models of the elements of the power system. Fixed speed wind turbines are a widely installed generation technology that use a single squirrel cage induction generator. The local wind profile and the properties of the induction machine constitute the main considerations when modeling these wind turbines. Existing methods for estimating the parameter values of induction machine models use a wide variety of parameter estimation algorithms but primarily use active and reactive power measurements made during start-up or direct mechanical testing to fit the model to. Proposed here is a parameter estimation method that applies improved particle swarm optimization to active and reactive power measurements made during a deviation in system frequency to estimate the parameter values of a induction machine model. This method has shown good accuracy and the use of on-line data may prove beneficial in future applications.
    Original languageEnglish
    Title of host publicationIET Conference Publications|IET Conf Publ
    Pages161
    Number of pages5
    Volume2011
    DOIs
    Publication statusPublished - 2011
    EventIET Conference on Renewable Power Generation, RPG 2011 - Edinburgh
    Duration: 1 Jul 2011 → …

    Conference

    ConferenceIET Conference on Renewable Power Generation, RPG 2011
    CityEdinburgh
    Period1/07/11 → …

    Keywords

    • Generator modelling
    • Parameter estimation
    • Particle swarm optimization
    • Wind power
    • Wind turbine

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