Energies (Jul 2021)

Towards Better Wind Resource Modeling in Complex Terrain: A k-Nearest Neighbors Approach

  • Pedro Quiroga-Novoa,
  • Gabriel Cuevas-Figueroa,
  • José Luis Preciado,
  • Rogier Floors,
  • Alfredo Peña,
  • Oliver Probst

DOI
https://doi.org/10.3390/en14144364
Journal volume & issue
Vol. 14, no. 14
p. 4364

Abstract

Read online

Wind turbines are often placed in complex terrains, where benefits from orography-related speed up can be capitalized. However, accurately modeling the wind resource over the extended areas covered by a typical wind farm is still challenging over a flat terrain, and over a complex terrain, the challenge can be even be greater. Here, a novel approach for wind resource modeling is proposed, where a linearized flow model is combined with a machine learning approach based on the k-nearest neighbor (k-NN) method. Model predictors include combinations of distance, vertical shear exponent, a measure of the terrain complexity and speedup. The method was tested by performing cross-validations on a complex site using the measurements of five tall meteorological towers. All versions of the k-NN approach yield significant improvements over the predictions obtained using the linearized model alone; they also outperform the predictions of non-linear flow models. The new method improves the capabilities of current wind resource modeling approaches, and it is easily implemented.

Keywords