Article, 2024

Wind turbine power curve modelling under wake conditions using measurements from a spinner-mounted lidar

Applied Energy, ISSN 0306-2619, 1872-9118, Volume 364, Page 122985, 10.1016/j.apenergy.2024.122985

Contributors

Sebastiani, Alessandro 0000-0002-4351-9510 [1] Angelou, Nikolas 0000-0002-9627-422X (Corresponding author) [1] Peña, Alfredo 0000-0002-7900-9651 [1]

Affiliations

  1. [1] Technical University of Denmark
  2. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

Most wind turbines are installed inside wind farms, where they often operate under wake-affected inflow conditions. New methods are required to evaluate the power performance of a wind turbine in wake, as the International Electrotechnical Commission (IEC) standard procedure is applicable only to wake-free turbines. In this work, we investigate the accuracy of a multivariate power curve acquired through a polynomial regression, whose input variables are wind speed and turbulence measurements retrieved upstream of the turbine’s rotor. For this purpose, we use measurements from the SpinnerLidar, a continuous-wave, scanning Doppler lidar measuring the turbine inflow. The SpinnerLidar was mounted in the spinner of a Neg Micon 80 wind turbine located within an onshore wind farm in western Denmark. The input variables are selected among the available lidar measurements with a feature-selection algorithm, resulting in seven input variables, distributed in different locations along the rotor area: six wind speed and one turbulence measurements. The multivariate power curve is tested and compared with IEC-similar power curves under both wake-affected and wake-free conditions. Results show that the multivariate power curve estimates the turbine’s power output more accurately than the IEC-similar power curves, with error reductions up to 66.5% and 34.2% under wake-affected and wake-free conditions, respectively. Furthermore, the multivariate power curve estimates have an accuracy of the same order under both wake-affected and wake-free conditions. Finally, we show that the multivariate model accurately predicts the power even when a simple measuring geometry is used, such as circular scanning pattern with a diameter equal to 90% of the rotor.

Keywords

Commission, Denmark, Doppler lidar, International, International Electrotechnical Commission, New methods, SpinnerLidar, accuracy, algorithm, area, circular scan pattern, conditions, continuous-wave, curve estimation, curve model, curves, diameter, error, error reduction, estimation, farms, feature-selection algorithm, geometry, inflow, inflow conditions, input, input variables, lidar, lidar measurements, location, measurement geometry, measurements, method, model, multivariate model, onshore wind farms, output, patterns, performance, polynomial regression, power, power curve, power curve estimation, power curve model, power output, power performance, procedure, reduction, regression, results, rotor, rotor area, scanning Doppler lidar, scanning patterns, speed, spinner, standard procedure, turbine, turbine inflow, turbine power output, turbine rotor, turbulence, turbulence measurements, variables, wake, wake conditions, western Denmark, wind, wind farms, wind speed, wind turbine power curve models, wind turbines

Funders

  • European Commission

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