Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics

<p>Wind turbine wakes affect power production and loads but are highly turbulent and therefore complex to model. Proper orthogonal decomposition (POD) has often been applied for reduced-order models (ROMs), as POD yields an orthogonal basis optimal in terms of capturing the turbulent kinetic e...

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Main Authors: J. F. Céspedes Moreno, J. P. Murcia León, S. J. Andersen
Format: Article
Language:English
Published: Copernicus Publications 2025-03-01
Series:Wind Energy Science
Online Access:https://wes.copernicus.org/articles/10/597/2025/wes-10-597-2025.pdf
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author J. F. Céspedes Moreno
J. P. Murcia León
S. J. Andersen
author_facet J. F. Céspedes Moreno
J. P. Murcia León
S. J. Andersen
author_sort J. F. Céspedes Moreno
collection DOAJ
description <p>Wind turbine wakes affect power production and loads but are highly turbulent and therefore complex to model. Proper orthogonal decomposition (POD) has often been applied for reduced-order models (ROMs), as POD yields an orthogonal basis optimal in terms of capturing the turbulent kinetic energy content. POD is typically used to understand flow physics and reconstruct a specific flow case. However, reduced-order models have been proposed for predicting wind turbine wake aerodynamics by applying POD on multiple flow cases with different governing parameters to derive a global basis intended to represent all flows within the parameter space. This article evaluates the convergence and efficiency of global POD bases covering multiple cases of wind turbine wake aerodynamics in large wind farms. The analysis shows that the global POD bases have better performance across the parameter space than the optimal POD basis computed from a single dataset. The error associated with using a global basis across the parameter space of reconstructions decreases and converges as the dataset is expanded with more flow cases, and there is a low sensitivity as to which datasets to include. It is also shown how this error is an order of magnitude smaller than the truncation error for 100 modes. Finally, the global basis has the advantage of providing consistent physical interpretability of the highly turbulent flow within wind farms.</p>
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institution Kabale University
issn 2366-7443
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publishDate 2025-03-01
publisher Copernicus Publications
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series Wind Energy Science
spelling doaj-art-a9c8efae91944c0288cee05c4fb36fcd2025-08-20T03:42:47ZengCopernicus PublicationsWind Energy Science2366-74432366-74512025-03-011059761110.5194/wes-10-597-2025Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamicsJ. F. Céspedes Moreno0J. P. Murcia León1S. J. Andersen2Department of Wind and Energy Systems, Technical University of Denmark, Frederiksborgvej 399, Roskilde, 4000, DenmarkDepartment of Wind and Energy Systems, Technical University of Denmark, Frederiksborgvej 399, Roskilde, 4000, DenmarkDepartment of Wind and Energy Systems, Technical University of Denmark, Anker Engelunds Vej 1, Kgs. Lyngby, 2800, Denmark<p>Wind turbine wakes affect power production and loads but are highly turbulent and therefore complex to model. Proper orthogonal decomposition (POD) has often been applied for reduced-order models (ROMs), as POD yields an orthogonal basis optimal in terms of capturing the turbulent kinetic energy content. POD is typically used to understand flow physics and reconstruct a specific flow case. However, reduced-order models have been proposed for predicting wind turbine wake aerodynamics by applying POD on multiple flow cases with different governing parameters to derive a global basis intended to represent all flows within the parameter space. This article evaluates the convergence and efficiency of global POD bases covering multiple cases of wind turbine wake aerodynamics in large wind farms. The analysis shows that the global POD bases have better performance across the parameter space than the optimal POD basis computed from a single dataset. The error associated with using a global basis across the parameter space of reconstructions decreases and converges as the dataset is expanded with more flow cases, and there is a low sensitivity as to which datasets to include. It is also shown how this error is an order of magnitude smaller than the truncation error for 100 modes. Finally, the global basis has the advantage of providing consistent physical interpretability of the highly turbulent flow within wind farms.</p>https://wes.copernicus.org/articles/10/597/2025/wes-10-597-2025.pdf
spellingShingle J. F. Céspedes Moreno
J. P. Murcia León
S. J. Andersen
Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics
Wind Energy Science
title Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics
title_full Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics
title_fullStr Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics
title_full_unstemmed Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics
title_short Convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics
title_sort convergence and efficiency of global bases using proper orthogonal decomposition for capturing wind turbine wake aerodynamics
url https://wes.copernicus.org/articles/10/597/2025/wes-10-597-2025.pdf
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AT jpmurcialeon convergenceandefficiencyofglobalbasesusingproperorthogonaldecompositionforcapturingwindturbinewakeaerodynamics
AT sjandersen convergenceandefficiencyofglobalbasesusingproperorthogonaldecompositionforcapturingwindturbinewakeaerodynamics