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Alternative fault detection and diagnostic using information theory quantifiers based on vibration time-waveforms from condition monitoring systems: Application to operational wind turbines

机译:根据条件监测系统的振动时间波形,使用信息理论量化器的替代故障检测和诊断:应用于运营风力涡轮机的应用

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摘要

Wind turbines operate almost uninterruptedly, and their operation is often subject to harsh environments, as well as complex and dynamic loads. Fourier analysis, a standard diagnostic technique, presents some limitations regarding the use of non-stationary, non-periodic, noisy data, which is precisely the case with wind turbine data. Due to these limitations, unseen faults could progress and cause severe, and even catastrophic, failure in wind turbines. Information theory quantifiers, such as entropy, divergence, and, statistical complexity measure, are proposed to evaluate the health status of wind turbine components. In this work, this is done via the decomposition of the signal in time, frequency, and timefrequency domain, namely via Bandt and Pompe, power spectrum, and wavelet packet decomposition. Two different real data sets from operational wind turbines were characterized by the proposed methods. Results demonstrate that the proposed method can distinguish (cluster) well between the states of fault, but also presented some limitations, mainly related to the complexity of the signal from operational wind turbines. Based on these results, new methods, complementary to Fourier analysis, are proposed to be employed in wind turbine data, aiming to increase the capability of detecting faults in such a complex environment. (C) 2020 Elsevier Ltd. All rights reserved.
机译:风力涡轮机几乎不间断地运行,其操作通常受到恶劣环境的影响,以及复杂和动态负载。傅立叶分析,标准诊断技术,对使用非静止,非周期性的嘈杂数据具有一些限制,这正是风力涡轮机数据的情况。由于这些限制,看不见的故障可能会导致严重,甚至灾难性,风力涡轮机的失败。提出了信息理论量化器,例如熵,发散和统计复杂性度量,以评估风力涡轮机组件的健康状况。在这项工作中,这是通过在时间,频率和时频域的分解,即通过Bandt和Pompe,功率谱和小波分组分解的分解来完成的。来自运营风力涡轮机的两个不同的真实数据集的特征在于提出的方法。结果表明,所提出的方法可以在故障状态之间区分(群集)良好,而且还呈现了一些限制,主要与来自运营风力涡轮机的信号的复杂性相关。基于这些结果,提出了新方法,互补分析,互补地用于风力涡轮机数据,旨在提高这种复杂环境中检测故障的能力。 (c)2020 elestvier有限公司保留所有权利。

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