论文标题
端到端风力涡轮机唤醒建模,深度图表示
End-to-end Wind Turbine Wake Modelling with Deep Graph Representation Learning
论文作者
论文摘要
风力涡轮机唤醒建模对于准确的资源评估,布局优化和风电场的运营控制至关重要。这项工作提出了一个基于最先进的图形表示方法的风力涡轮机唤醒的替代模型,称为图形神经网络。拟议的端到端深度学习模型直接在非结构化的网格上运行,并已针对高保真数据进行了验证,这证明了其能够快速对各种入口条件和涡轮偏航角度进行准确的3D流场预测。此处采用的特定图形神经网络模型可很好地推广到看不见的数据,并且与常见的图神经网络相比,对过度平滑的敏感性不太敏感。基于现实世界风电场的案例研究进一步证明了拟议方法预测农场量表发电的能力。此外,所提出的图形神经网络框架是灵活且高通用的,如下所示,可以应用于非组织网格上的任何稳态计算流体动力学模拟。
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.