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Health State Monitoring of Bladed Machinery with Crack Growth Detection in BFG Power Plant Using an Active Frequency Shift Spectral Correction Method

机译:主动频移谱校正方法监测高炉电厂叶片机械健康状态并检测裂纹扩展

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摘要

Power generation using waste-gas is an effective and green way to reduce the emission of the harmful blast furnace gas (BFG) in pig-iron producing industry. Condition monitoring of mechanical structures in the BFG power plant is of vital importance to guarantee their safety and efficient operations. In this paper, we describe the detection of crack growth of bladed machinery in the BFG power plant via vibration measurement combined with an enhanced spectral correction technique. This technique enables high-precision identification of amplitude, frequency, and phase information (the harmonic information) belonging to deterministic harmonic components within the vibration signals. Rather than deriving all harmonic information using neighboring spectral bins in the fast Fourier transform spectrum, this proposed active frequency shift spectral correction method makes use of some interpolated Fourier spectral bins and has a better noise-resisting capacity. We demonstrate that the identified harmonic information via the proposed method is of suppressed numerical error when the same level of noises is presented in the vibration signal, even in comparison with a Hanning-window-based correction method. With the proposed method, we investigated vibration signals collected from a centrifugal compressor. Spectral information of harmonic tones, related to the fundamental working frequency of the centrifugal compressor, is corrected. The extracted spectral information indicates the ongoing development of an impeller blade crack that occurred in the centrifugal compressor. This method proves to be a promising alternative to identify blade cracks at early stages.
机译:使用废气发电是减少生铁生产行业中有害高炉煤气(BFG)排放的一种有效且绿色的方式。高炉电厂机械结构的状态监测对于确保其安全和高效运行至关重要。在本文中,我们描述了通过振动测量与增强的光谱校正技术相结合的方法来检测高炉煤气电厂叶片机械的裂纹扩展。该技术能够高精度地识别属于振动信号内确定谐波分量的振幅,频率和相位信息(谐波信息)。所提出的有源频移频谱校正方法不是使用快速傅立叶变换频谱中的相邻频谱仓来导出所有谐波信息,而是利用一些内插傅里叶频谱仓并具有更好的抗噪声能力。我们证明,即使与基于Hanning-window的校正方法相比,当在振动信号中呈现相同水平的噪声时,通过提出的方法识别的谐波信息也具有抑制的数值误差。通过提出的方法,我们研究了从离心压缩机收集的振动信号。校正与离心压缩机的基本工作频率有关的谐波声调的频谱信息。提取的光谱信息指示在离心压缩机中发生的叶轮叶片裂纹的持续发展。实践证明,该方法是在早期发现叶片裂纹的有前途的替代方法。

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