Theoretical and Applied Mechanics Letters (Jan 2024)

A call for enhanced data-driven insights into wind energy flow physics

  • Coleman Moss,
  • Romit Maulik,
  • Giacomo Valerio Iungo

Journal volume & issue
Vol. 14, no. 1
p. 100488

Abstract

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With the increased availability of experimental measurements aiming at probing wind resources and wind turbine operations, machine learning (ML) models are poised to advance our understanding of the physics underpinning the interaction between the atmospheric boundary layer and wind turbine arrays, the generated wakes and their interactions, and wind energy harvesting. However, the majority of the existing ML models for predicting wind turbine wakes merely recreate Computational fluid dynamics (CFD) simulated data with analogous accuracy but reduced computational costs, thus providing surrogate models rather than enhanced data-enabled physics insights. Although ML-based surrogate models are useful to overcome current limitations associated with the high computational costs of CFD models, using ML to unveil processes from experimental data or enhance modeling capabilities is deemed a potential research direction to pursue. In this letter, we discuss recent achievements in the realm of ML modeling of wind turbine wakes and operations, along with new promising research strategies.

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