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Surrogate modeling a computational fluid dynamics-based wind turbine wake simulation using machine learning

机译:代理使用机器学习建模基于计算的流体动力学的风力涡轮机唤醒模拟

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The wind farm layout optimisation problem involves finding the optimal locations for wind turbines on a wind farm site in order to minimise the so-called “wake effect”. The wake effect is the effect of turbulence on wind velocity produced by a turbine's rotating blades. This results in reduction in power production and increased fatigue in downstream turbines inside the wake. This paper uses wind velocity data produced from expensive Computational Fluid Dynamics (CFD) simulations of a rotating wind turbine at various incoming wind speeds to generate ground truth wake data, and explores the ability of machine learning algorithms to create surrogate models for predicting the reduced-velocity wind speeds inside a wake. In an extensive evaluation, we show that (i) given data from a CFD simulation, we can construct a model to interpolate wind velocity inside the wake at any arbitrary 3D point with high levels of accuracy; and (ii) given data from several CFD simulations (the training data) we can also accurately predict wind velocities in the wake of CFD simulations that we have not yet run (i.e. we can extrapolate to simulations where the incoming wind speeds are different to those in the training data). The net effect of these findings are that they pave the way towards the construction of novel and improved wake models for wind turbines, which in turn can be incorporated into existing algorithms for solving wind farm layout optimisation problems more accurately.
机译:风电场布局优化问题涉及在风电场网站上找到风力涡轮机的最佳位置,以最小化所谓的“唤醒效果”。唤醒效果是湍流对涡轮机旋转叶片产生的风速的影响。这导致在唤醒内部的电力产生和增加下游涡轮机的疲劳。本文采用来自昂贵的计算流体动力学(CFD)模拟的风速数据在各种进入风速下,以产生地面真理唤醒数据,并探讨机器学习算法的能力,以创建用于预测减少的代理模型速度风速速度在醒来内。在广泛的评估中,我们展示了(i)从CFD仿真给定数据,我们可以构建一个模型,以在具有高精度水平的任意3D点内插入唤醒内的风速; (ii)给出来自几个CFD模拟的数据(培训数据),我们还可以准确地预测我们尚未运行的CFD模拟中的风速(即,我们可以推断到传入风速与那些不同的模拟在培训数据中)。这些调查结果的净效应是它们为风力涡轮机建造了新颖的和改进的唤醒模型,这反过来可以纳入现有的算法,以更准确地解决风电场布局优化问题。

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