风力发电机叶片结冰风险的数据驱动估计

G. Murtas, Henrique Cabral, E. Tsiporkova
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引用次数: 0

摘要

风力发电机组叶片结冰会严重影响其发电,导致资产劣化,甚至造成安全隐患。预测叶片结冰可以通过激活叶片加热机制来减轻或防止其对涡轮机及其性能的影响。提出了一种新的数据驱动方法,该方法仅使用气象历史和预测数据来估计涡轮机特定的结冰风险在0到1之间。该方法基于创建结冰的气象剖面特征库,与所有其他剖面进行比较,以计算相似分数,然后转换为结冰风险。该方法对数据集中的结冰样本不平衡具有鲁棒性,因此即使在结冰发生率极低的位置也具有良好的性能。结冰风险为风电场运营商提供了一个有意义的指标,允许更大的灵活性,更好地了解结冰的开始,并衡量即将到来的结冰事件的严重程度。验证是在属于同一风电场的7台涡轮机的数据集上进行的。
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Data-driven estimation of blade icing risk in wind turbines
The formation of ice on the blades of wind turbines can severely affect their power production, lead to a degradation of the assets and even cause safety hazards. Predicting blade icing allows mitigating or preventing altogether its impact on the turbines and their performance by activating blade heating mechanisms. A novel data-driven approach is proposed which estimates a turbine-specific icing risk between 0 and 1 using only meteorological historical and forecasted data. The method is based on the creation of a repository of meteorological profiles characteristics of icing, to which all other profiles are compared in order to compute a similarity score, then converted into an icing risk. The approach is robust against icing sample imbalance in the dataset and thus performant even in locations where icing incidence is extremely low. The icing risk provides wind farm operators with a meaningful indicator, allowing for more flexibility, a better view of the onset of ice formation, and a measure of the severity of an upcoming icing event. The validation is performed on a dataset of 7 turbines belonging to the same wind farm.
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