dc.contributor.author | Fitzgerald, Breiffni | en |
dc.date.accessioned | 2024-02-13T14:09:43Z | |
dc.date.available | 2024-02-13T14:09:43Z | |
dc.date.issued | 2024 | en |
dc.date.submitted | 2024 | en |
dc.identifier.citation | Shubham Baisthakur and Breiffni Fitzgerald, Physics-Informed Neural Network surrogate model for bypassing Blade Element Momentum theory in wind turbine aerodynamic load estimation, Renewable Energy, 2024 | en |
dc.identifier.other | Y | en |
dc.description | PUBLISHED | en |
dc.description.abstract | This 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.iso | en | en |
dc.relation.ispartofseries | Renewable Energy | en |
dc.rights | Y | en |
dc.subject | BEM aerodynamic model | en |
dc.subject | Surrogate modelling | en |
dc.subject | Physics-Informed Neural Network | en |
dc.title | Physics-Informed Neural Network surrogate model for bypassing Blade Element Momentum theory in wind turbine aerodynamic load estimation | en |
dc.type | Journal Article | en |
dc.type.supercollection | scholarly_publications | en |
dc.type.supercollection | refereed_publications | en |
dc.identifier.peoplefinderurl | http://people.tcd.ie/fitzgeb7 | en |
dc.identifier.rssinternalid | 261984 | en |
dc.identifier.doi | https://doi.org/10.1016/j.renene.2024.120122 | en |
dc.rights.ecaccessrights | openAccess | |
dc.subject.TCDTheme | Smart & Sustainable Planet | en |
dc.subject.TCDTag | ARTIFICIAL NEURAL NETWORKS | en |
dc.subject.TCDTag | ENERGY | en |
dc.subject.TCDTag | MACHINE LEARNING | en |
dc.subject.TCDTag | Renewable energies | en |
dc.subject.TCDTag | Renewable energy | en |
dc.subject.TCDTag | Structural Engineering | en |
dc.subject.TCDTag | Wind Energy and Wind Turbines | en |
dc.identifier.orcid_id | 0000-0002-5278-6696 | en |
dc.status.accessible | N | en |
dc.contributor.sponsor | Science Foundation Ireland (SFI) | en |
dc.contributor.sponsorGrantNumber | 20/FFP-P/8702 | en |
dc.identifier.uri | http://hdl.handle.net/2262/105549 | |