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Physics-induced graph neural network: An application to wind-farm power estimation

机译:物理感应图神经网络:在风电场功率估算中的应用

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We propose a physics-inspired data-driven model that can estimate the power outputs of all wind turbines in any layout under any wind conditions. The proposed model comprises two parts: (1) representing a wind farm configuration with the current wind conditions as a graph, and (2) processing the graph input and estimating power outputs of all the wind turbines using a physics-induced graph neural network (PGNN). By utilizing the form of an engineering wake interaction model as a basis function, PGNN effectively imposes physics-induced bias for modelling the interaction among wind turbines into the network structure. simulation study shows that the combination of a graph representation of a wind farm and PGNN produce not only accurate and generalizable estimations but also physically explainable estimations. That is, the computing and reasoning procedures of PGNN can be understood by analyzing the intermediate features of the model. We also conduct a layout optimization experiment to show the effectiveness of PGNN as a differentiable surrogate model for wind farm power estimations. (C) 2019 Elsevier Ltd. All rights reserved.
机译:我们提出了一个受物理学启发的数据驱动模型,该模型可以估计在任何风况下任何布局的所有风力涡轮机的功率输出。所提出的模型包括两个部分:(1)以当前风况为图表表示风电场配置,以及(2)使用物理感应图神经网络处理所有风力涡轮机的图表输入并估算功率输出( PGNN)。通过利用工程唤醒相互作用模型的形式作为基础函数,PGNN有效地施加了物理上的偏差,从而将风力涡轮机之间的相互作用建模为网络结构。仿真研究表明,风电场的图形表示与PGNN的结合不仅可以产生准确而可概括的估计值,而且还可以提供物理上可以解释的估计值。也就是说,可以通过分析模型的中间特征来理解PGNN的计算和推理过程。我们还进行了布局优化实验,以显示PGNN作为风电场功率估算的可替代替代模型的有效性。 (C)2019 Elsevier Ltd.保留所有权利。

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