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Data-driven technique for interpreting wind turbine condition monitoring signals

机译:数据驱动技术,用于解释风机状态监测信号

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摘要

Increasing deployment of large wind turbines (WT) offshore and in remote areas requires reliable condition monitoring (CM) techniques to guarantee the high availability of these WTs and economic return. To meet this need, much effort has been expended to improve the capability of analysing the WT CM signals. However, a fully satisfactory technique has not been achieved today. One of the major reasons is that the developed techniques still cannot provide accurate interpretation of the WT CM signals, which are usually non-linear and non-stationary in nature because of the constantly varying loads and non-linear operations of the turbines. To deal with this issue, a new data-driven signal processing technique is developed in this study based on the concepts of intrinsic time-scale decomposition (ITD) and energy operator separation algorithm (EOSA). The advantages of the proposed technique over the traditional data-driven techniques have been demonstrated and validated experimentally. It has been shown that in comparison with the Hilbert-Huang transform the combination of ITD and EOSA provided more accurate and explicit presentations of the instantaneous information of the signals tested. Thus, it provides a much improved offline tool for accurately interpreting WT CM signals.
机译:越来越多的海上和偏远地区部署大型风力涡轮机(WT)需要可靠的状态监测(CM)技术,以确保这些WT的高可用性和经济回报。为了满足该需求,已经花费很多努力来提高分析WT CM信号的能力。但是,今天尚未实现完全令人满意的技术。主要原因之一是,由于涡轮机不断变化的负载和非线性运行,所开发的技术仍然无法提供WT CM信号的准确解释,而WT CM信号通常通常是非线性且非平稳的。为了解决这个问题,本研究基于内在时标分解(ITD)和能量算符分离算法(EOSA)的概念,开发了一种新的数据驱动信号处理技术。与传统的数据驱动技术相比,所提出的技术的优势已经得到了实验证明和验证。已经证明,与希尔伯特-黄(Hilbert-Huang)变换相比,ITD和EOSA的组合提供了对所测试信号的瞬时信息的更准确和明确的表示。因此,它提供了一种改进后的离线工具,可以准确地解释WT CM信号。

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    《Renewable Power Generation, IET》 |2014年第2期|151-159|共9页
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