首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Title Fault Diagnosis Method of Gearbox Multifeature Fusion Based on Quadratic Filter and QPSO-KELM
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Title Fault Diagnosis Method of Gearbox Multifeature Fusion Based on Quadratic Filter and QPSO-KELM

机译:基于二次滤波器和QPSO-kelm的齿轮箱多聚解融合的标题故障诊断方法

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摘要

Effective filtering and noise reduction, feature extraction and fault diagnosis, and prognostics technology are important to Prognostics and Health Management (PHM) of equipment. Therefore, a multifeature fusion fault diagnosis method based on the combination of quadratic filtering and QPSO-KELM algorithm is proposed. In the quadratic filtering, stable filtering can reduce the impact of noise and fast-kurtogram can filtrate fault frequency bands with rich fault information. Then, the time-domain, frequency-domain, and time-frequency parameters of the secondary filter signal are extracted. MSSST was used to analyze the filtered signal, and the time-frequency image was obtained. The time-frequency parameter was extracted from the time-frequency image by 2DPCA, and all the extracted parameters are taken as the fusion fault feature of the gearbox. Finally, the fault feature parameters are taken as the training sample and testing sample of QPSO-KELM for training and testing to achieve the purpose of fault diagnosis. The experimental results show that the proposed method can effectively filter the noise, complete the fault mode identification of gearbox, and improve the fault diagnosis accuracy better than other methods.
机译:有效的滤波和降噪,特征提取和故障诊断,预测技术对设备的预后和健康管理(PHM)很重要。因此,提出了一种基于二次滤波和QPSO-KELM算法组合的多因素融合故障诊断方法。在二次滤波中,稳定的过滤可以降低噪声和快速kurtogram可以滤除具有丰富故障信息的故障频段的影响。然后,提取次级滤波器信号的时域,频域和时频参数。 MSSST用于分析滤波信号,并获得时频图像。通过2dpca从时频图像中提取时频参数,并将所有提取的参数作为齿轮箱的融合故障特征。最后,故障特征参数被视为QPSO-KELM的训练样本和测试样本,用于训练和测试,以达到故障诊断的目的。实验结果表明,该方法可以有效地过滤噪声,完成齿轮箱的故障模式识别,并提高故障诊断精度比其他方法更好。

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