End-to-end Wind Turbine Wake Modelling with Deep Graph Representation
Learning
- URL: http://arxiv.org/abs/2211.13649v2
- Date: Mon, 28 Nov 2022 10:54:34 GMT
- Title: End-to-end Wind Turbine Wake Modelling with Deep Graph Representation
Learning
- Authors: Siyi Li, Mingrui Zhang, Matthew D. Piggott
- Abstract summary: This work proposes a surrogate model for the representation of wind turbine wakes based on a graph representation learning method termed a graph neural network.
The proposed end-to-end deep learning model operates directly on unstructured meshes and has been validated against high-fidelity data.
A case study based upon a real world wind farm further demonstrates the capability of the proposed approach to predict farm scale power generation.
- Score: 7.850747042819504
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Wind turbine wake modelling is of crucial importance to accurate resource
assessment, to layout optimisation, and to the operational control of wind
farms. This work proposes a surrogate model for the representation of wind
turbine wakes based on a state-of-the-art graph representation learning method
termed a graph neural network. The proposed end-to-end deep learning model
operates directly on unstructured meshes and has been validated against
high-fidelity data, demonstrating its ability to rapidly make accurate 3D flow
field predictions for various inlet conditions and turbine yaw angles. The
specific graph neural network model employed here is shown to generalise well
to unseen data and is less sensitive to over-smoothing compared to common graph
neural networks. A case study based upon a real world wind farm further
demonstrates the capability of the proposed approach to predict farm scale
power generation. Moreover, the proposed graph neural network framework is
flexible and highly generic and as formulated here can be applied to any steady
state computational fluid dynamics simulations on unstructured meshes.
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