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A Data-Driven Approach for Fault Detection of Offshore Wind Turbines Using Random Forests

机译:一种使用随机林的海上风力涡轮机的故障检测数据驱动方法

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Compared with onshore wind turbines, fault detection and isolation (FDI) process is more important for offshore ones due to both additional loadings and maintenance difficulties. FDI will be more demanding when it comes to deep-sea floating wind turbines. In this work, an ensemble learning method, random forests (RF), is proposed to perform fault detection of offshore wind turbines, as RF is robust to overfitting, producing not only accurate and quick classification, but also importance ranking for each individual feature. At the same time, supple-mentary dominant signals are determined for each fault through principal component analysis. The NREL FASTv8 code and OC3-Hywind 5MW floating wind turbine baseline model are used to verify this proposed data-driven FDI design.
机译:与陆上风力涡轮机相比,由于额外的装载和维护困难,故障检测和隔离(FDI)工艺对海上近岸更重要。在深海浮动风力涡轮机时,FDI将更加苛刻。在这项工作中,提出了一个集合学习方法,随机森林(RF),以执行海上风力涡轮机的故障检测,因为RF对过度装备强大,不仅产生准确和快速的分类,而且为每个单独的特征进行重要性。同时,通过主成分分析确定每个故障的抑制效力主导信号。 NREL FastV8码和OC3-HUWIND 5MW浮动风力涡轮机基准电线式模型用于验证这一提出的数据驱动的FDI设计。

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