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A novel dynamic wind farm wake model based on deep learning

机译:基于深度学习的新型动态风电场唤醒模型

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A deep learning based reduced order modelling method for general unsteady fluid systems is proposed, which is then applied to develop a novel dynamic wind farm wake model. The proposed method employs the proper orthogonal decomposition technique for reducing the flow field dimension and the long short-term memory network for predicting the reduced representation of the flow field at a future time step. The method is specifically designed to tackle distributed fluid systems (such as wind farm wakes) and to be control-oriented. For wind farm wake modelling, a set of large eddy simulations are first carried out to generate a series of flow field data for wind turbines operating in different conditions. Then the proposed method is employed to develop the data-based wake model. The results show that this novel dynamic wind farm wake model can predict the main features of unsteady wind turbine wakes similarly as high-fidelity wake models while running as fast as the low-fidelity static wake models and that the model's overall prediction error is just 4.8% with respect to the free-stream wind speed. As an illustrative example, the developed model can predict the unsteady turbine wakes of a 9-turbine test wind farm within several seconds based on a standard desktop while it requires tens of thousands of CPU hours on a high-performance computing cluster if a high-fidelity model is used. Thus the developed model can be used for fast yet accurate simulation of wind farms as well as for their predictions and control designs.
机译:提出了一种基于深度学习的一般不稳定流体系统的减少阶阶建模方法,然后应用于开发一种新型动态风电场唤醒模型。所提出的方法采用适当的正交分解技术来减少流场维度和长短期存储网络,以预测未来时间步长的流场的减少表示。该方法专门设计用于用分布式流体系统(例如风电场唤醒)并被控制取向。对于风电场唤醒建模,首先进行一组大涡模拟,以产生在不同条件下运行的风力涡轮机的一系列流场数据。然后采用所提出的方法来开发基于数据的唤醒模型。结果表明,这种新型动态风电场唤醒模型可以预测不稳定的风力涡轮机的主要特征,同样如高保真唤醒模型,同时像低保真静态唤醒模型一样快地运行,而模型的整体预测误差仅为4.8关于自由流风速的%。作为说明性示例,开发的模型可以在基于标准桌面的几秒钟内预测9涡轮机测试风电场的非定常涡轮机唤醒,而在高性能计算群集中需要数万个CPU小时,如果高度 - 使用富达模型。因此,开发的模型可用于快速且精确地模拟风电场以及它们的预测和控制设计。

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