3.9 Article

Axial induction controller field test at Sedini wind farm

期刊

WIND ENERGY SCIENCE
卷 6, 期 2, 页码 389-408

出版社

COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/wes-6-389-2021

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资金

  1. European Union's Horizon 2020 research and innovation programme [727477]
  2. H2020 Societal Challenges Programme [727477] Funding Source: H2020 Societal Challenges Programme

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This paper discusses the design and testing of an axial induction controller on a row of wind turbines in Italy. A wake model was used to optimize turbine power reduction setpoints, with results showing a positive increase in energy production from the induction control.
This paper describes the design and testing of an axial induction controller implemented on a row of nine turbines on the Sedini wind farm in Sardinia, Italy. This work was performed as part of the EU Horizon 2020 research project CL-Windcon. An engineering wake model, selected for its good fit to historical SCADA data from the site, was used in the LongSim code to optimise turbine power reduction setpoints for a large matrix of steady-state wind conditions. The setpoints were incorporated into a dynamic control algorithm capable of running on-site using available wind condition estimates from the turbines. The complete algorithm was tested in dynamic time-domain simulations using LongSim, using a time-varying wind field generated from historical met mast data from the site. The control algorithm was implemented on-site, with the wind farm controller toggled on and off at 35 min intervals to allow the performance with and without the controller to be compared in comparable wind conditions. Data were collected between July 2019 and early February 2020. The results have been analysed and indicate a positive increase in energy production resulting from the induction control, in line with LongSim model predictions, although a larger volume of valid data would be necessary to provide statistically robust conclusions. The measurements also provide a validation of the LongSim model, proving its value for both steady-state setpoint optimisation and time-domain simulation of wind farm performance.

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