Data-driven quantification of model-form uncertainty in Reynolds-averaged simulations of wind farms
Ali Eidi, Navid Zehtabiyan-Rezaie, Reza Ghiassi, Xiang Yang, Mahdi, Abkar

TL;DR
This paper introduces a data-driven machine learning framework to quantify and reduce model-form uncertainties in RANS simulations of wind farms, improving accuracy in predicting wake effects and power losses.
Contribution
It develops a novel two-step feature selection and extreme gradient boosting approach to predict Reynolds stress perturbations, enhancing uncertainty quantification in wind farm simulations.
Findings
The framework accurately estimates uncertainty bounds for wake velocity and turbulence.
It outperforms uniform perturbation methods in uncertainty estimation.
The method generalizes well to different wind farm layouts.
Abstract
Computational fluid dynamics using the Reynolds-averaged Navier-Stokes (RANS) remains the most cost-effective approach to study wake flows and power losses in wind farms. The underlying assumptions associated with turbulence closures are one of the biggest sources of errors and uncertainties in the model predictions. This work aims to quantify model-form uncertainties in RANS simulations of wind farms at high Reynolds numbers under neutrally stratified conditions by perturbing the Reynolds stress tensor through a data-driven machine-learning technique. To this end, a two-step feature-selection method is applied to determine key features of the model. Then, the extreme gradient boosting algorithm is validated and employed to predict the perturbation amount and direction of the modeled Reynolds stress toward the limiting states of turbulence on the barycentric map. This procedure leads to…
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