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dc.contributor.authorFitzgerald, Breiffnien
dc.date.accessioned2024-02-13T14:09:43Z
dc.date.available2024-02-13T14:09:43Z
dc.date.issued2024en
dc.date.submitted2024en
dc.identifier.citationShubham Baisthakur and Breiffni Fitzgerald, Physics-Informed Neural Network surrogate model for bypassing Blade Element Momentum theory in wind turbine aerodynamic load estimation, Renewable Energy, 2024en
dc.identifier.otherYen
dc.descriptionPUBLISHEDen
dc.description.abstractThis paper proposes the use of Artificial Neural Networks (ANNs), specifically Physics-Informed Neural Networks (PINNs), for dynamic surrogate modelling of wind turbines. PINNs offer the flexibility to model complex relationships while incorporating physics-based constraints, enabling accurate representation of wind turbine dynamics. In this paper, a PINN-based surrogate model is developed for the Blade Element Momentum (BEM) aerodynamic model used in state-of-the-art numerical wind turbine simulations. The PINN model replaces the time-consuming root-finding process in BEM with high-dimensional regression, significantly improving computational efficiency. The PINN model is trained using data generated from a numerical model of the IEA-15MW reference wind turbine, and its performance is compared against conventional data-driven Neural Network (DDNN) models. The proposed surrogate model provides more efficient and accurate evaluations of wind turbine responses compared with traditional surrogate modelling approaches. A significant computational advantage is obtained by using the developed surrogate models with a forty-fold speedup demonstrated compared to the BEM model. Replacing the BEM model with the PINN-based surrogate model for load computation in the numerical model used for dynamic analysis results in an overall reduction of 35% in computational time for a complete dynamic simulation. This is a substantial improvement in efficiency without sacrificing accuracy — the maximum Mean Absolute Error (MAE) values for the surrogate models are of the order of , which shows that the surrogate models can predict the angle of attack at any blade node with a discrepancy of less than . The surrogate models significantly reduce computational time while maintaining high accuracy, making them a promising approach for simulating wind turbine dynamics, especially in fields such as reliability analysis or fatigue estimation where many simulations are necessary.en
dc.language.isoenen
dc.relation.ispartofseriesRenewable Energyen
dc.rightsYen
dc.subjectBEM aerodynamic modelen
dc.subjectSurrogate modellingen
dc.subjectPhysics-Informed Neural Networken
dc.titlePhysics-Informed Neural Network surrogate model for bypassing Blade Element Momentum theory in wind turbine aerodynamic load estimationen
dc.typeJournal Articleen
dc.type.supercollectionscholarly_publicationsen
dc.type.supercollectionrefereed_publicationsen
dc.identifier.peoplefinderurlhttp://people.tcd.ie/fitzgeb7en
dc.identifier.rssinternalid261984en
dc.identifier.doihttps://doi.org/10.1016/j.renene.2024.120122en
dc.rights.ecaccessrightsopenAccess
dc.subject.TCDThemeSmart & Sustainable Planeten
dc.subject.TCDTagARTIFICIAL NEURAL NETWORKSen
dc.subject.TCDTagENERGYen
dc.subject.TCDTagMACHINE LEARNINGen
dc.subject.TCDTagRenewable energiesen
dc.subject.TCDTagRenewable energyen
dc.subject.TCDTagStructural Engineeringen
dc.subject.TCDTagWind Energy and Wind Turbinesen
dc.identifier.orcid_id0000-0002-5278-6696en
dc.status.accessibleNen
dc.contributor.sponsorScience Foundation Ireland (SFI)en
dc.contributor.sponsorGrantNumber20/FFP-P/8702en
dc.identifier.urihttp://hdl.handle.net/2262/105549


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