首页> 外文会议>International Conference on Sensing, Diagnostics, Prognostics, and Control >Maximum Correlated Kurtosis Deconvolution and Overlapping Group Shrinkage Denoising for Incipient Fault Diagnosis of Helicopter Planetary Gear Train
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Maximum Correlated Kurtosis Deconvolution and Overlapping Group Shrinkage Denoising for Incipient Fault Diagnosis of Helicopter Planetary Gear Train

机译:最大相关的峰衰减和重叠群射伤去噪对直升机行星齿轮系的初期故障诊断

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Planetary gear train fault diagnosis is critical to Prognostics and Health Management of the helicopter. Generally, the localized gear fault will cause periodic impulses in the vibration signal. However, the fault characteristic generated by incipient fault is often weak and submerged in strong background noise, resulting in difficulty in fault feature extraction. To address this issue, a method combining Maximum Correlated Kurtosis Deconvolution(MCKD) and Overlapping Group Shrinkage(OGS) algorithms is proposed. Firstly, Fruit fly Optimization Algorithm(FOA) was employed to search for the optimal influencing parameters of MCKD, and the impulses of the raw fault signal could be enhanced after processed by MCKD adaptively. Then, the deconvolution signal was further processed by OGS to eliminate the residual noise. Finally, the fault characteristic frequency components could be identified by analyzing the envelope spectrum of the filtered signal, and achieved the incipient fault diagnosis of helicopter planetary gear. The proposed method is validated using the vibration signal of the planetary gear train in a helicopter transmission test rig, and a slight cracked planetary gear fault is successfully identified.
机译:行星齿轮系故障诊断对于直升机的预测和健康管理至关重要。通常,局部齿轮故障将导致振动信号中的周期性脉冲。然而,初期故障产生的故障特性通常弱,淹没在强大的背景噪声中,导致故障特征提取难以。为了解决这个问题,提出了一种方法,提出了一种组合最大相关峰抑制(MckD)和重叠组收缩(OGS)算法的方法。首先,采用果蝇优化算法(FOA)来搜索McKD的最佳影响参数,并且在自适应地由Mckd处理后原始故障信号的脉冲可以增强。然后,通过OGS进一步处理DeconVolution信号以消除残余噪声。最后,故障特征频率成分可能通过分析经滤波的信号的包络的频谱被识别,并取得了直升机行星齿轮的故障诊断的。使用直升机传动试验台中的行星齿轮系的振动信号进行验证所提出的方法,并成功识别了轻微的裂纹行星齿轮故障。

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