A Transient Feature Learning-Based Intelligent Fault Diagnosis Method for Planetary Gearboxes

IF 1.2 4区 工程技术 Q3 ENGINEERING, MECHANICAL Strojniski Vestnik-Journal of Mechanical Engineering Pub Date : 2020-06-15 DOI:10.5545/sv-jme.2020.6546
Qin Bo, Zixian Li, Yan Qin
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引用次数: 2

Abstract

Sensitive and accurate fault features from the vibration signals of planetary gearboxes are essential for fault diagnosis, in which extreme learning machine (ELM) techniques have been widely adopted. To increase the sensitivity of extracted features fed in ELM, a novel feature extraction method is put forward, which takes advantage of the transient dynamics and the reconstructed high-dimensional data from the original vibration signal. First, based on fast kurtosis analysis, the range of transient dynamics of a vibration signal is located. Next, with the extracted kurtosis information, with variational mode decomposition, a series of intrinsic mode functions are decomposed; the ones that fall into the obtained ranges are selected as transient features, corresponding to maximum kurtosis value. Fed by the transient features, a hierarchical ELM model is well-trained for fault classification. Furthermore, a denoising auto-encoder is used to optimize input weight and threshold of implicit learning node of ELM, satisfying orthogonal condition to realize the layering of its hidden layers. Finally, a numerical case and an experiment are conducted to verify the performance of the proposed method. In comparison with its counterparts, the proposed method has a better classification accuracy in the aiding of transient features.
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基于瞬态特征学习的行星齿轮箱智能故障诊断方法
从行星齿轮箱振动信号中获取灵敏、准确的故障特征是故障诊断的关键,极限学习机技术已被广泛应用。为了提高ELM中特征提取的灵敏度,提出了一种利用瞬态动力学和原始振动信号重构的高维数据进行特征提取的新方法。首先,基于快速峰度分析,确定了振动信号的瞬态动态范围;然后,利用提取的峰度信息,进行变分模态分解,分解一系列内禀模态函数;选取在得到的范围内的特征作为暂态特征,对应最大峰度值。基于暂态特征的分层ELM模型得到了较好的故障分类训练。利用去噪自编码器优化ELM的隐式学习节点的输入权值和阈值,使其满足正交条件,实现其隐层的分层。最后,通过数值算例和实验验证了该方法的有效性。与同类方法相比,该方法在瞬态特征辅助下具有更好的分类精度。
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来源期刊
CiteScore
3.00
自引率
17.60%
发文量
56
审稿时长
4.1 months
期刊介绍: The international journal publishes original and (mini)review articles covering the concepts of materials science, mechanics, kinematics, thermodynamics, energy and environment, mechatronics and robotics, fluid mechanics, tribology, cybernetics, industrial engineering and structural analysis. The journal follows new trends and progress proven practice in the mechanical engineering and also in the closely related sciences as are electrical, civil and process engineering, medicine, microbiology, ecology, agriculture, transport systems, aviation, and others, thus creating a unique forum for interdisciplinary or multidisciplinary dialogue.
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