NM80型风力机气动声学模拟研究

IF 1.3 Q2 ENGINEERING, AEROSPACE International Journal of Turbomachinery, Propulsion and Power Pub Date : 2023-10-20 DOI:10.3390/ijtpp8040043
Filippo De Girolamo, Lorenzo Tieghi, Giovanni Delibra, Valerio Francesco Barnabei, Alessandro Corsini
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引用次数: 0

摘要

风力涡轮机在清洁能源转型的欧洲绿色协议中发挥着重要作用。噪音是开放技术问题中的一个关键方面,因为它决定了在有人居住的地方附近安装陆上设施的可能性,以及在海上对野生动物可能产生的有害影响。本文对不同方法预测风力机声压级的精度进行了评价。在OpenFOAM中对2.75 MW Neg Micon NM80水平轴风力涡轮机(HWAT)进行了仿真,并在turesfoam库中实现了执行器线方法(ALM)对涡轮机进行了建模。考虑了两种不同的流入条件:具有典型大气边界层剖面的平稳流入和来自具有完全湍流条件的前驱通道的时变流入。这项工作中使用的噪声预测替代模型是基于Amiet和Brooks-Pope-Marcolini (BPM)的合成/替代声学模型(sam)。这种方法允许叶片运动建模和预测URANS后处理结果的声压级。然后将获得的声压级频谱与IEA任务39参与者的其他气动声学求解器的结果进行比较,显示出在完全湍流情况下的最佳性能。结果表明,与叶片单元动量(BEM)方法相比,ALM和替代声学之间的耦合提供了更精确的结果。
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Surrogate Modeling of the Aeroacoustics of an NM80 Wind Turbine
Wind turbines play a major role in the European Green Deal for clean energy transition. Noise is a critical aspect among open technological issues, as it determines the possibility of onshore installations near inhabited places and the possible detrimental effects on wildlife when offshore. This paper assesses the accuracy of different approaches to predicting the sound pressure level (SPL) of a wind turbine. The 2.75 MW Neg Micon NM80 horizontal axis wind turbine (HWAT) was simulated in OpenFOAM, modeling the turbine with the actuator line method (ALM) implemented in the turbinesFoam library. Two different inflow conditions were considered: a stationary inflow with a typical atmospheric boundary layer profile and a time-dependent inflow derived from a precursor channel with fully turbulent conditions. The surrogate model for noise prediction used for this work is based on the synthetic/surrogate acoustics models (SAMs) of Amiet and Brooks-Pope-Marcolini (BPM). This approach allows for blade motion modeling and the prediction of the SPL of the URANS postprocessing results. The SPL spectrum obtained was then compared to the results from the other aeroacoustic solvers of IEA Task 39 participants, showing the best performance in the fully turbulent case. The results demonstrate that coupling between the ALM and surrogate acoustics provides more accurate results than the blade element momentum (BEM) approach.
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来源期刊
CiteScore
2.30
自引率
21.40%
发文量
29
审稿时长
11 weeks
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