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Global sensitivity analysis of wind turbine power output
Authors:Phillip M McKay  Rupp Carriveau  David S‐K Ting  Jennifer L Johrendt
Affiliation:1. Wind Energy Institute of Canada, , North Cape, Prince Edward Island, Canada, C0B 2B0;2. Department of Civil and Environmental Engineering, University of Windsor, , Windsor, Ontario, Canada, N9B 3P4;3. Department of Mechanical, Automotive, and Materials Engineering, University of Windsor, , Windsor, Ontario, Canada, N9B 3P4
Abstract:The dynamics of wind turbine behavior are complex and a critical area of study for the wind industry. Identification of factors that cause changes in turbine performance can sometimes prove to be challenging, whereas other times, it can be intuitive. The quantification of the effect that these factors have is valuable for making improvements to both power performance and turbine health. In commercial farms, large quantities of meteorological and performance data are commonly collected to monitor daily operations. These data can also be used to analyze the relationship between each parameter in order to better understand the interactions that occur and the information contained within these signals. In this global sensitivity analysis, a neural network is used to model select wind turbine supervisory control and data acquisition system parameters for an array of turbines from a commercial wind farm that exhibit signs of wake interaction. An extended Fourier amplitude sensitivity test is then performed for 2 years of 10‐min averaged data. The study examines the primary and combined sensitivities of power output to each selected parameter for two turbines in the array. The primary sensitivities correspond to single parameter interactions, whereas combined sensitivities account for interactions between multiple parameters simultaneously. Highly influential parameters such as wind speed and rotor rotation frequency produce expected results; the extended Fourier amplitude sensitivity test method proved effective at quantifying the sensitivity of a wide range of more subtle inputs. These include blade pitch, yaw position, main bearing and ambient temperatures as well as wind speed and yaw position standard deviation. The technique holds promise for application in full‐scale wake studies where it might be used to determine the benefits of emerging power optimization strategies such as active wake management. The field of structural health monitoring can also benefit from this method. Copyright © 2013 John Wiley & Sons, Ltd.
Keywords:global sensitivity analysis  wind turbine SCADA  power optimization  Fourier amplitude sensitivity test  wind turbine wake  turbine group aerodynamics
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