Dynamic multi-turbine multi-state model of wind farm based on historical wind data

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3 Scopus citations

Abstract

In order to enhance the accuracy of the dynamic equivalence of wind farm (WF) under different wind conditions (WCs), this paper proposed a Dynamic Multi-Turbine Multi-State (DMTMS) Model of WF based on the historical wind data. The proposed model could represent the dynamic characteristics of WF under different WCs with high accuracy. Support vector clustering (SVC), whose cluster partition is completed by the genetic algorithm (GA), is adopted so as to handle the varietion of wind energy with the pre-fault active power of wind turbines (WT) as input parameters. Equivalence model of cable is established with the principle of maintaining the terminal voltage of wind turbines unchanged. The model is demonstrated on a WF consisting of 133 WTs connected to the grid with a transmission line. Dynamic characteristics of DMTMS are compared against the detail WF model under different WCs. Results demonstrated that the DMTMS model can adapt to different wind conditions.

Original languageEnglish
Article number7065974
JournalAsia-Pacific Power and Energy Engineering Conference, APPEEC
Volume2015-March
Issue numberMarch
DOIs
StatePublished - 23 Mar 2014
Event6th IEEE PES Asia-Pacific Power and Energy Engineering Conference, APPEEC 2014 - Kowloon, Hong Kong
Duration: 7 Dec 201410 Dec 2014

Keywords

  • dynamic equivalence
  • genetic algorithm
  • multi-turbine multi-state
  • support vector clustering
  • wind farm

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