LAPSE:2023.13265
Published Article

LAPSE:2023.13265
Data Reduction and Reconstruction of Wind Turbine Wake Employing Data Driven Approaches
March 1, 2023
Abstract
Data driven approaches are utilized for optimal sensor placement as well as for velocity prediction of wind turbine wakes. In this work, several methods are investigated for suitability in the clustering analysis and for predicting the time history of the flow field. The studies start by applying a proper orthogonal decomposition (POD) technique to extract the dynamics of the flow. This is followed by evaluations of different hyperparameters of the clustering and machine learning algorithms as well as their impacts on the prediction accuracy. Two test cases are considered: (1) the wake of a cylinder and (2) the wake of a rotating wind turbine rotor exposed to complex flow conditions. The training and test data for both cases are obtained from high fidelity CFD approaches. The studies reveal that the combination of a classification-based machine learning algorithm for optimal sensor placement and Bi-LSTM is sufficient for predicting periodic signals, but a more advanced technique is required for the highly complex data of the turbine near wake. This is done by exploiting the dynamics of the wake from the set of POD modes for flow field reconstruction. A satisfactory accuracy is achieved for an appropriately chosen prediction horizon of the Bi-LSTM networks. The obtained results show that data-driven approaches for wind turbine wake prediction can offer an alternative to conventional prediction approaches.
Data driven approaches are utilized for optimal sensor placement as well as for velocity prediction of wind turbine wakes. In this work, several methods are investigated for suitability in the clustering analysis and for predicting the time history of the flow field. The studies start by applying a proper orthogonal decomposition (POD) technique to extract the dynamics of the flow. This is followed by evaluations of different hyperparameters of the clustering and machine learning algorithms as well as their impacts on the prediction accuracy. Two test cases are considered: (1) the wake of a cylinder and (2) the wake of a rotating wind turbine rotor exposed to complex flow conditions. The training and test data for both cases are obtained from high fidelity CFD approaches. The studies reveal that the combination of a classification-based machine learning algorithm for optimal sensor placement and Bi-LSTM is sufficient for predicting periodic signals, but a more advanced technique is required for the highly complex data of the turbine near wake. This is done by exploiting the dynamics of the wake from the set of POD modes for flow field reconstruction. A satisfactory accuracy is achieved for an appropriately chosen prediction horizon of the Bi-LSTM networks. The obtained results show that data-driven approaches for wind turbine wake prediction can offer an alternative to conventional prediction approaches.
Record ID
Keywords
aerodynamics, Bi-LSTM, Computational Fluid Dynamics, data driven, Machine Learning, POD, wake, wind turbine
Subject
Suggested Citation
Geibel M, Bangga G. Data Reduction and Reconstruction of Wind Turbine Wake Employing Data Driven Approaches. (2023). LAPSE:2023.13265
Author Affiliations
Geibel M: Institute of Aerodynamics and Gas Dynamics (IAG), University of Stuttgart, Pfaffenwaldring 21, 70569 Stuttgart, Germany [ORCID]
Bangga G: Institute of Aerodynamics and Gas Dynamics (IAG), University of Stuttgart, Pfaffenwaldring 21, 70569 Stuttgart, Germany; DNV Services UK, One Linear Park, Avon Street, Temple Quay, Bristol BS2 0PS, UK [ORCID]
Bangga G: Institute of Aerodynamics and Gas Dynamics (IAG), University of Stuttgart, Pfaffenwaldring 21, 70569 Stuttgart, Germany; DNV Services UK, One Linear Park, Avon Street, Temple Quay, Bristol BS2 0PS, UK [ORCID]
Journal Name
Energies
Volume
15
Issue
10
First Page
3773
Year
2022
Publication Date
2022-05-20
ISSN
1996-1073
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Original Submission
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PII: en15103773, Publication Type: Journal Article
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LAPSE:2023.13265
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https://doi.org/10.3390/en15103773
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