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Quantitative Index and Abnormal Alarm Strategy Using Sensor-Dependent Vibration Data for Blade Crack Identification in Centrifugal Booster Fans

机译:基于传感器的振动数据的定量指标和异常报警策略,用于离心增压风扇叶片裂纹的识别

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Centrifugal booster fans are important equipment used to recover blast furnace gas (BFG) for generating electricity, but blade crack faults (BCFs) in centrifugal booster fans can lead to unscheduled breakdowns and potentially serious accidents, so in this work quantitative fault identification and an abnormal alarm strategy based on acquired historical sensor-dependent vibration data is proposed for implementing condition-based maintenance for this type of equipment. Firstly, three group dependent sensors are installed to acquire running condition data. Then a discrete spectrum interpolation method and short time Fourier transform (STFT) are applied to preliminarily identify the running data in the sensor-dependent vibration data. As a result a quantitative identification and abnormal alarm strategy based on compound indexes including the largest Lyapunov exponent and relative energy ratio at the second harmonic frequency component is proposed. Then for validation the proposed blade crack quantitative identification and abnormality alarm strategy is applied to analyze acquired experimental data for centrifugal booster fans and it has successfully identified incipient blade crack faults. In addition, the related mathematical modelling work is also introduced to investigate the effects of mistuning and cracks on the vibration features of centrifugal impellers and to explore effective techniques for crack detection.
机译:离心增压风机是用于回收高炉煤气(BFG)发电的重要设备,但是离心增压风机中的叶片裂纹故障(BCF)可能导致计划外故障和潜在的严重事故,因此在此工作中定量故障识别和异常提出了一种基于获取的与传感器相关的历史振动数据的警报策略,以针对这种类型的设备实施基于状态的维护。首先,安装三个基于组的传感器以获取运行状况数据。然后,采用离散频谱插值方法和短时傅立叶变换(STFT),在与传感器相关的振动数据中初步识别运行数据。因此,提出了基于复合指数的定量识别和异常报警策略,该复合指数包括最大的李雅普诺夫指数和二次谐波频率分量处的相对能量比。然后,为验证所提出的叶片裂纹定量识别和异常警报策略,对采集的离心增压风机实验数据进行分析,并成功地识别了早期叶片裂纹故障。此外,还介绍了相关的数学建模工作,以研究雾化和裂纹对离心叶轮振动特性的影响,并探索有效的裂纹检测技术。

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