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Data-Driven Wind Farm Optimization Incorporating Effects of Turbulence Intensity

机译:结合湍流强度影响的数据驱动风电场优化

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We demonstrate assimilation of field data from a nacelle-mounted lidar and meteorological tower into a medium-fidelity Reynolds-Averaged Navier Stokes wind farm flow model to better predict the effects of atmospheric stability. Increased predictability under a variety of atmospheric conditions can lead to more effective control design and optimization of a wind farm. In particular, atmospheric stability affects wind turbine wake propagation and, therefore, aspects of wind farm control and performance, such as active wind farm control, layout optimization, and power output. Accurately modeling wakes in different stability conditions remains a persistent challenge. This paper presents an optimization framework that leverages high-fidelity field or simulation data to correct a lower-fidelity flow model. Optimal model corrections are found by solving a regularized, high-dimensional, gradient-based optimization problem using adjoint flowfield information. We validate the trained model against large eddy simulation results, and perform separate gradient-based layout optimizations of a simulated utility-scale wind farm to maximize power. Using the data-driven model corrections, we find that atmospheric stability significantly impacts layout optimization and power production: the optimal layout for stable conditions produced 9.1% more power than the optimal layout for unstable conditions, and the optimal layout for neutral conditions underperformed by 8.5% in unstable conditions.
机译:我们演示了将机舱安装的激光雷达和气象塔的野外数据同化为中等保真度的雷诺平均Navier Stokes风电场流模型,以更好地预测大气稳定性的影响。在各种大气条件下提高的可预测性可以导致更有效的控制设计和风电场的优化。特别是,大气稳定性会影响风力涡轮机的尾流传播,进而影响风电场控制和性能的各个方面,例如主动风电场控制,布局优化和功率输出。在不同的稳定性条件下准确建模尾流仍然是一个持续的挑战。本文提出了一种优化框架,该框架利用高保真度字段或仿真数据来校正低保真度的流模型。通过使用伴随流场信息来解决正则化的高维,基于梯度的优化问题,可以找到最佳模型校正。我们针对大型涡流仿真结果验证了训练后的模型,并对仿真的公用事业规模的风电场进行了单独的基于梯度的布局优化,以最大程度地提高功率。使用数据驱动的模型校正,我们发现大气稳定性会严重影响布局优化和电力生产:稳定条件下的最佳布局所产生的功率比不稳定条件下的最佳布局高9.1%,而中性条件下的最佳布局所产生的动力却不足在不稳定条件下为8.5%。

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