Predicting wind farm wake losses with deep convolutional hierarchical encoder–decoder neural networks

David A. Romero, Saeede Hasanpoor, Enrico G. A. Antonini, C. H. Amon
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Abstract

Wind turbine wakes are the most significant factor affecting wind farm performance, decreasing energy production and increasing fatigue loads in downstream turbines. Wind farm turbine layouts are designed to minimize wake interactions using a suite of predictive models, including analytical wake models and computational fluid dynamics simulations (CFD). CFD simulations of wind farms are time-consuming and computationally expensive, which hinder their use in optimization studies that require hundreds of simulations to converge to an optimal turbine layout. In this work, we propose DeepWFLO, a deep convolutional hierarchical encoder–decoder neural network architecture, as an image-to-image surrogate model for predicting the wind velocity field for Wind Farm Layout Optimization (WFLO). We generate a dataset composed of image representations of the turbine layout and undisturbed flow field in the wind farm, as well as images of the corresponding wind velocity field, including wake effects generated with both analytical models and CFD simulations. The proposed DeepWFLO architecture is then trained and optimized through supervised learning with an application-tailored loss function that considers prediction errors in both wind velocity and energy production. Results on a commonly used test case show median velocity errors of 1.0%–8.0% for DeepWFLO networks trained with analytical and CFD data, respectively. We also propose a model-fusion strategy that uses analytical wake models to generate an additional input channel for the network, resulting in median velocity errors below 1.8%. Spearman rank correlations between predictions and data, which evidence the suitability of DeepWFLO for optimization purposes, range between 92.3% and 99.9%.
利用深度卷积分层编码器-解码器神经网络预测风电场尾流损失
风力涡轮机激波是影响风电场性能的最重要因素,不仅会降低发电量,还会增加下游涡轮机的疲劳负荷。风电场涡轮机布局的设计采用了一整套预测模型,包括尾流分析模型和计算流体动力学模拟 (CFD),以尽量减少尾流相互作用。风电场的 CFD 模拟耗时且计算成本高,这阻碍了它们在优化研究中的应用,因为优化研究需要数百次模拟才能获得最佳的涡轮机布局。在这项工作中,我们提出了 DeepWFLO(一种深度卷积分层编码器-解码器神经网络架构)作为图像到图像的替代模型,用于预测风电场布局优化(WFLO)的风速场。我们生成了一个数据集,该数据集由风电场中涡轮机布局和未受干扰流场的图像表征以及相应风速场的图像组成,包括分析模型和 CFD 模拟生成的尾流效应。然后,通过监督学习对提出的 DeepWFLO 架构进行训练和优化,监督学习采用了考虑风速和发电量预测误差的应用定制损失函数。一个常用测试案例的结果显示,使用分析数据和 CFD 数据训练的 DeepWFLO 网络的速度误差中值分别为 1.0%-8.0% 。我们还提出了一种模型融合策略,利用分析唤醒模型为网络生成额外的输入通道,从而使速度误差中值低于 1.8%。预测与数据之间的斯皮尔曼等级相关性介于 92.3% 与 99.9% 之间,证明了 DeepWFLO 适用于优化目的。
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