利用累积卷曲尾流模型解决深阵列效应和对尾流操纵的影响

IF 3.6 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
C. Bay, P. Fleming, B. Doekemeijer, J. King, M. Churchfield, Rafael Mudafort
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引用次数: 12

摘要

摘要风力发电场的设计和分析在很大程度上依赖于计算效率高的工程模型,这些模型需要多次评估才能找到最佳解决方案。最近的一篇文章将最先进的高斯-旋度混合(GCH)模型与三个海上风电场的历史数据进行了比较。其中确定了两个模型差异点:经历大量尾迹的涡轮机的尾迹预测差以及两个涡轮机之间长距离的尾迹相互作用。本文解决了这两个问题,并提出了累积旋度(CC)模型。将CC模型与三个海上风电场的高保真仿真数据和历史数据进行比较,证实了CC模型在较大机间距离的大尾迹损失和尾迹恢复情况下比GCH模型的精度有所提高。此外,CC模型在单涡轮和少涡轮尾迹相互作用方面的表现与GCH模型相当,这已经被精确地建模了。最后,将CC模型以矢量化的形式实现,大大减少了许多风况的计算时间。CC模型现在能够以较低的计算成本对小型和大型海上风电场进行可靠的模拟研究,从而使其成为尾流转向优化和布局优化的理想候选者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Addressing deep array effects and impacts to wake steering with the cumulative-curl wake model
Abstract. Wind farm design and analysis heavily rely on computationally efficient engineering models that are evaluated many times to find an optimal solution. A recent article compared the state-of-the-art Gauss-curl hybrid (GCH) model to historical data of three offshore wind farms. Two points of model discrepancy were identified therein: poor wake predictions for turbines experiencing a lot of wakes and wake interactions between two turbines over long distances. The present article addresses those two concerns and presents the cumulative-curl (CC) model. Comparison of the CC model to high-fidelity simulation data and historical data of three offshore wind farms confirms the improved accuracy of the CC model over the GCH model in situations with large wake losses and wake recovery over large inter-turbine distances. Additionally, the CC model performs comparably to the GCH model for single- and fewer-turbine wake interactions, which were already accurately modeled. Lastly, the CC model has been implemented in a vectorized form, greatly reducing the computation time for many wind conditions. The CC model now enables reliable simulation studies for both small and large offshore wind farms at a low computational cost, thereby making it an ideal candidate for wake-steering optimization and layout optimization.
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来源期刊
Wind Energy Science
Wind Energy Science GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
6.90
自引率
27.50%
发文量
115
审稿时长
28 weeks
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