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A new time-frequency analysis method based on single mode function decomposition for offshore wind turbines

机译:一种新型时频分析方法,基于单模函数分解的海上风力涡轮机

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The Hilbert-Huang transform (HHT) has been widely applied and recognised as a powerful time-frequency analysis method for nonlinear and non-stationary signals in numerous engineering fields. One of its major challenges is that the HHT is frequently subject to mode mixing in the processing of practical signals such as those of offshore wind turbines, as the frequencies of offshore wind turbines are typically close and contaminated by noise. To address this issue, this paper proposes a new time-frequency analysis method based on single mode function (SMF) decomposition to overcome the mode mixing problem in the structural health monitoring (SHM) of offshore wind turbines. In this approach, the structural vibration signal is first decomposed into a set of window components using complex exponential decomposition. A state-space model is introduced in the signal decomposition to improve the numerical stability of the decomposition, and then a novel window-alignment strategy, named energy gridding, is proposed and the signals are constructed in the corresponding gridding. Furthermore, energy recollection is implemented in each gridding, and the reassembling of these components yields an SMF that is comparable to the intrinsic mode function (IMF) of the HHT, but with a significant improvement in terms of mode mixing. Four case studies are conducted to evaluate the performance of the proposed method. The first case attempts to detect three different frequencies in a simulated time-invariant signal. The second case attempts to test a synthesised signal with segmental time-varying frequencies (each segment contains three different frequencies components). The analysis results in these two cases indicate that mode mixing can be reduced by the proposed method. Furthermore, a synthesised signal with slowly varying frequencies is used. These analysis results demonstrate the effective suppression of non-relevant frequency components using SMF decomposition. In the third case, the experimental data from vortex-induced vibration (VIV) experiments sponsored by the Norwegian Deepwater Programme (NDP) are used to evaluate the proposed SMF decomposition for vibration mode identification. In the final case, field data acquired from an offshore wind turbine foundation and offshore wind turbine are analysed. The mode identification results obtained using SMF decomposition are compared with those produced by the HHT. The comparison demonstrates superior performance of the proposed method in identifying the vibration modes of the VIV experimental and field data.
机译:Hilbert-Huang变换(HHT)已被广泛应用,并被认可为众多工程领域的非线性和非静止信号的强大时频分析方法。其中一个主要挑战是,HHT经常受到在诸如近海风力涡轮机的实际信号的处理中混合的模式,因为海上风力涡轮机的频率通常被噪声紧密和污染。为了解决这个问题,本文提出了一种基于单模函数(SMF)分解的新时频分析方法,以克服海上风力涡轮机结构健康监测(SHM)中的模式混合问题。在这种方法中,结构振动信号首先使用复杂的指数分解分解成一组窗口组件。在信号分解中引入了一种状态空间模型,以提高分解的数值稳定性,然后提出了一种名为能量网格的新颖窗口对准策略,并且信号被构造在相应的网格中。此外,在每个网格中实现能量回忆,并且这些组分的重新组装产生了与HHT的内在模式(IMF)相当的SMF,但是在模式混合方面具有显着改善。进行四种案例研究以评估所提出的方法的性能。第一种情况尝试在模拟的时间不变信号中检测三个不同的频率。第二种案例尝试使用分段时变频测试合成信号(每个段包含三个不同的频率分量)。分析结果在这两种情况下表明可以通过所提出的方法减少模式混合。此外,使用具有缓慢变化频率的合成信号。这些分析结果证明了使用SMF分解的非相关频率分量的有效抑制。在第三种情况下,由挪威深水计划(NDP)赞助的Vortex诱导的振动(VIV)实验的实验数据用于评估所提出的振动模式识别的SMF分解。在最后的情况下,分析了从海上风力涡轮机基础和海上风力涡轮机获取的现场数据。将使用SMF分解获得的模式识别结果与由HHT产生的那些进行比较。比较显示了识别VIV实验和现场数据的振动模式的提出方法的优异性能。

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