Catch the wind: Optimizing wind turbine power generation by addressing wind veer effects.

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES PNAS nexus Pub Date : 2024-11-04 eCollection Date: 2024-11-01 DOI:10.1093/pnasnexus/pgae480
Linyue Gao, Christopher Milliren, Teja Dasari, Alexander A Knoll, Jiarong Hong
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Abstract

Wind direction variability with height, known as "wind veer," results in power losses for wind turbines (WTs) that rely on single-point wind measurements at the turbine nacelles. To address this challenge, we introduce a yaw control strategy designed to optimize turbine alignment by adjusting the yaw angle based on specific wind veer conditions, thereby boosting power generation efficiency. This strategy integrates modest yaw offset angles into the existing turbine control systems via a yaw-bias-look-up table, which correlates the adjustments with wind speed, and wind veer data. We evaluated the effectiveness of this control strategy through extensive month-long field campaigns for an individual utility-scale WT and at a commercial wind farm. This included controlling one turbine using our strategy against nine others in the vicinity using standard controls with LiDAR-derived wind veer data and a separate 2.5 MW instrumented research turbine continuously managed using our method with wind profiles provided by meteorological towers. Results from these campaigns demonstrated notable energy gains, with potential net gains exceeding 10% during extreme veering conditions. Our economic analysis, factoring in various elements, suggests an annual net gain of up to approximately $700 K for a 100-MW wind farm, requiring minimal additional investment, with potential for even larger gains in offshore settings with the power of individual turbines exceeding 10 MW nowadays. Overall, our findings underscore the considerable opportunities to improve individual turbine performance under realistic atmospheric conditions through advanced, cost-effective control strategies.

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抓住风:通过解决风向偏移效应优化风力涡轮机发电。
风向随高度而变化,即所谓的 "风偏",会导致依赖涡轮机机舱单点风力测量的风力涡轮机(WT)的功率损失。为了应对这一挑战,我们引入了一种偏航控制策略,旨在根据特定的风向偏差条件调整偏航角,从而优化涡轮机对准,从而提高发电效率。该策略通过偏航偏置查找表将适度的偏航偏置角整合到现有的涡轮机控制系统中,并将调整与风速和风偏数据相关联。我们对单个公用事业级风电机组和商业风电场进行了长达一个月的实地考察,评估了这一控制策略的有效性。其中包括使用我们的策略控制一台涡轮机,与附近其他九台使用标准控制和激光雷达风偏数据的涡轮机进行比较,以及使用我们的方法和气象塔提供的风廓线对一台单独的 2.5 兆瓦仪器研究涡轮机进行持续管理。这些活动的结果显示了显著的能源收益,在极端偏转条件下,潜在净收益超过 10%。考虑到各种因素,我们的经济分析表明,一个 100 兆瓦的风电场每年净收益可达约 70 万美元,所需的额外投资微乎其微,而在单个涡轮机功率超过 10 兆瓦的近海环境中,收益可能更大。总之,我们的研究结果表明,在现实大气条件下,通过先进、经济有效的控制策略来提高单个涡轮机性能的机会相当可观。
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