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 fr...
In this paper, we formulate a physics-based surrogate wake model in the framework of online wind far...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
High-fidelity optimisation studies are a useful asset in the design of critical components for large...
A data-driven approach is an alternative to extract general models for wind energy applications. A s...
Abstract In this talk, three machine learning (ML) algorithms viz. Support Vector Regression (SVR), ...
In this paper, three machine learning (ML) algorithms, Support Vector Regression (SVR), Artificial N...
In this paper a new paradigm for prediction of wind turbine wakes is proposed, which is based on a r...
Deep convolutional neural networks are a promising machine learning approach for computationally eff...
As wind energy continues to be a crucial part of sustainable power generation, the need for precise ...
In studies of wind plant designs, wake dynamics are of great interests as wakes affect downstream tu...
To maximize the effectiveness of the rapidly increasing capacity of installed wind energy resources,...
International audienceFor actively controlling aerodynamic systems – like Wind Turbine (WT) blades -...
Accurate prediction of power generation capability needs proper assessment of blade loading and wake...
The development of new wake models is currently one of the key approaches envisioned to further impr...
Abstract Machine Learning (ML) algorithms have been more prevalent in recent years, and they are be...
In this paper, we formulate a physics-based surrogate wake model in the framework of online wind far...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
High-fidelity optimisation studies are a useful asset in the design of critical components for large...
A data-driven approach is an alternative to extract general models for wind energy applications. A s...
Abstract In this talk, three machine learning (ML) algorithms viz. Support Vector Regression (SVR), ...
In this paper, three machine learning (ML) algorithms, Support Vector Regression (SVR), Artificial N...
In this paper a new paradigm for prediction of wind turbine wakes is proposed, which is based on a r...
Deep convolutional neural networks are a promising machine learning approach for computationally eff...
As wind energy continues to be a crucial part of sustainable power generation, the need for precise ...
In studies of wind plant designs, wake dynamics are of great interests as wakes affect downstream tu...
To maximize the effectiveness of the rapidly increasing capacity of installed wind energy resources,...
International audienceFor actively controlling aerodynamic systems – like Wind Turbine (WT) blades -...
Accurate prediction of power generation capability needs proper assessment of blade loading and wake...
The development of new wake models is currently one of the key approaches envisioned to further impr...
Abstract Machine Learning (ML) algorithms have been more prevalent in recent years, and they are be...
In this paper, we formulate a physics-based surrogate wake model in the framework of online wind far...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
High-fidelity optimisation studies are a useful asset in the design of critical components for large...